A Limited Feedback Joint Precoding for Amplify-and-Forward Relaying

Size: px
Start display at page:

Download "A Limited Feedback Joint Precoding for Amplify-and-Forward Relaying"

Transcription

1 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH A Limited Feedback Joint Precoding for Amplify--Forward Relaying Yongming Huang, Luxi Yang, Member, IEEE, Mats Bengtsson, Senior Member, IEEE, Björn Ottersten, Fellow, IEEE Abstract This paper deals with the practical precoding design for a dual hop downlink with multiple-input multiple-output (MIMO) amplify--forward relaying. First, assuming that full channel state information (CSI) of the two hop channels is available, a suboptimal dual hop joint precoding scheme, i.e., precoding at both the base station relay station, is investigated. Based on its structure, a scheme of limited feedback joint precoding using joint codebooks is then proposed, which uses a distributed codeword selection to concurrently choose two joint precoders such that the feedback delay is considerably decreased. Finally, the joint codebook design for the limited feedback joint precoding system is analyzed, results reveal that independent codebook designs at the base station relay station using the conventional Grassmannian subspace packing method is able to guarantee that the overall performance of the dual hop joint precoding scheme improves with the size of each of the two codebooks. Simulation results show that the proposed dual hop joint precoding system using distributed codeword selection scheme exhibits a rate or BER performance close to the one using the optimal centralized codeword selection scheme, while having lower computational complexity shorter feedback delay. Index Terms Amplify--forward relaying, dual hop, Grassmannian codebook, joint precoding, limited feedback, multipleinput multiple-output. I. INTRODUCTION T HE introduction of relaying technology in cellular networks shows large promise to increase coverage system capacity at a low cost is therefore considered in Manuscript received November 23, 2008; accepted September 09, First published November 06, 2009; current version published February 10, This work was supported in part by the National Basic Research Program of China by Grant 2007CB310603, the National Natural Science Foundation of China by Grants , the National High Technology Project of China by Grant 2007AA01Z262, Ph.D. Programs Foundation of the Ministry of Education of China under Grant , the European Research Council under the European Community s Seventh Framework Programme (FP7/ )/ERC Grant agreement no , by the Huawei Technologies Corporation. The associate editor coordinating the review of this manuscript approving it for publication was Dr. Shahram Shahbazpanahi. Y. Huang is with the School of Information Science Engineering, Southeast University, Nanjing , China. He is also with the ACCESS Linnaeus Center, KTH Signal Processing Lab, Royal Institute of Technology, SE Stockholm, Sweden ( huangym@seu.edu.cn). L. Yang is with the School of Information Science Engineering, Southeast University, Nanjing , China ( lxyang@seu.edu.cn). M. Bengtsson is with ACCESS Linnaeus Center, KTH Signal Processing Lab, Royal Institute of Technology, SE Stockholm, Sweden ( mats. bengtsson@ee.kth.se). B. Ottersten is with ACCESS Linnaeus Center, KTH Signal Processing Lab, Royal Institute of Technology, SE Stockholm, Sweden. He is also with the securitytrust.lu, University of Luxembourg ( bjorn.ottersten@ee. kth.se). Color versions of one or more of the figures in this paper are available online at Digital Object Identifier /TSP IMT-Advanced stardization work such as 3GPP LTE-Advanced IEEE m. The same holds for Multiple-Input Multiple-Output (MIMO) technology [1] [7] its application in multiuser environments [8] [14]. As for the combination of MIMO relaying technology, most previous studies focus on the information theoretic limits for multi-antenna relay channels with different protocols. Capacity bounds of relaying channels in a single MIMO relay network have been developed in [15], where a regenerative MIMO relay is considered. For the multiple MIMO relay network, an asymptotical quantitative capacity result is presented in [16], where distributive diversity is achieved through cooperation among all the nonregenerative relays available in the network. This paper focuses on practical signalling design for a dual hop transmission with MIMO relay. Although the use of regenerative relays employing decode--forward (DF) shows advantages over nonregenerative relays using amplify--forward (AF) in many scenarios, it requires much higher delay tolerance may cause security problems, thus here we concentrate on the AF MIMO relaying strategy. For dual hop transmission with a single MIMO AF relay station, the optimal linear transceiver design at the relay-destination link has been developed [17], [18], assuming that the channel state information (CSI) of both the source-relay relay-destination links is available at the relay station. It is revealed that such a dual hop transmission can be transformed into several simultaneous data streams transmitted over orthogonal subchannels. In the case of multiple AF relay stations, a relay selection scheme is presented in [19] to exploit the additional diversity offered by the multiple relay stations available in the network, where the preferred relay station is chosen as a function of CSI to implement a dual hop transmission. Moreover, assuming that the CSI of all the links is available, a quasi-optimal joint design of linear transceivers at both the source-relay the relay-destination links is developed in [20] [21], which achieves very good performance while requiring high computational complexity. Note that the above dual hop transmit schemes all require full CSI of both two hop channels are unfortunately infeasible in practical frequency division duplex (FDD) systems, though they provide considerable performance gains. To overcome this problem, a limited feedback beamforming scheme for MIMO AF relaying was proposed in [22], which employs Grassmannian codebook to reduce the feedback overhead. It can even be extended to the case where the second order statistics of channel vectors are used instead of the limited instantaneous channel knowledge. However, this scheme is only limited in the beamforming case its extension to the precoding case (multiple simultaneous data streams) is nontrivial, which usually results in a rate performance loss especially when all the nodes X/$ IEEE 转载

2 1348 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH 2010 are equipped with multiple antennas, due to the fact that the multiplexing gain offered by MIMO channels can not be fully exploited. In this paper we aim to design a practical dual hop transmit scheme which can fully exploit the multiplexing gains offered by multiple antennas. More specifically, we propose a limited feedback joint precoding scheme using the criterion of optimizing the system rate or the BER performance, where the reduction of both feedback overhead feedback delay will be fully considered. The main contributions are listed as follows: 1) We first present a CSI based suboptimal joint precoding scheme for a dual hop downlink with AF, where the overall dual hop MIMO channels can be effectively transformed into several orthogonal subchannels by using the optimal pairing between the eigenmodes of the dual MIMO channels. Based on this, we then propose a codebook based limited feedback joint precoding scheme, where a distributed codeword selection (CS) scheme is further proposed based on the newly derived bounds for the capacity the mean square error (MSE) sum of a dual hop MIMO transmission with a linear minimum mean square error (MMSE) receiver, such that the feedback burden feedback delay are both greatly reduced. 2) Furthermore, we investigate the codebook design for the proposed limited feedback joint precoding scheme, disclose that if the conventional method of Grassmannian subspace packing is separately employed to construct the codebooks at the base station relay station, the overall performance of the dual hop transmit scheme can be guaranteed to improve with the size of each of the two codebooks. The rest of this paper is organized as follows. In the next section we introduce the system model for the dual hop joint precoding. In Section III we investigate the expression of the optimal joint precoders based on full CSI, provide a suboptimal joint precoding scheme which can reduce to a limited feedback scheme. In Section IV we first present a codebook based joint precoding system using a centralized codeword selection scheme, then propose a distributed codeword selection scheme to reduce computational complexity feedback delay. In Section V we analyze the design criterion of the joint codebooks used in the dual hop precoding system. Simulation results are presented in Section VI conclusions are drawn in Section VII. II. SYSTEM MODEL We consider a dual hop downlink model which consists of a base station a relay station transmitting through two time slots. We assume that the base station is equipped with antennas, the relay station is equipped with antennas the user terminal is equipped with antennas. As depicted in Fig. 1, during the first slot, the base station employs linear precoding to transmit simultaneous data streams, i.e., a data vector, to the relay station. Without loss of generality, we assume, with denoting the expectation operator. The received baseb signal at the relay station is written as (1) Fig. 1. The signal model for the dual hop joint precoding system. where denotes the precoding matrix at the base station, without loss of generality, we assume with being the trace operator, denotes the first hop channel matrix between the base station the relay station, denotes the total transmit power at the base station denotes a white Gaussian noise vector with zero mean variance. Keeping in mind that a multiuser downlink can be transformed into several single-user downlinks by employing multiple access techniques such as TDMA OFDMA, here we concentrate on the single-user dual hop downlink. Moreover, we focus on relay deployments intended for coverage expansion, where the direct link between the base station the user terminal can be neglected due to path loss or severe shadowing. To succeed a downlink communication between the base station the user terminal, during the second slot the relay station will forward its received signal using a linear precoding matrix that has to be designed. With the transmit power constraint at the relay station, should satisfy that The received baseb signal at the user terminal during this time slot is written as where denotes the second hop channel matrix between the relay station the user terminal, denotes a white Gaussian noise vector with zero mean variance. Note that in the above system model we can normalize the variances of both, have the effects of large scale fading incorporated into the noise variances of. The key point of the above dual hop joint precoding system lies in the design of two precoders, which commonly requires channel information feedback in FDD systems. Also, the number of simultaneous data streams should be carefully determined. It is well known that a MIMO channel with transmit antennas receive antennas can be transformed into a maximum of orthogonal subchannels via singular value decomposition (SVD). The simultaneous transmission of data streams over orthogonal subchannels can fully utilize the multiplexing gain is thereby capacity-approaching, while the scheme of always transmitting a single data stream in general cannot achieve the (2) (3)

3 HUANG et al.: A LIMITED FEEDBACK JOINT PRECODING 1349 potential rate offered by MIMO channels, due to the fact that the multiplexing gain cannot be fully exploited in this case. This result can be easily extended to the dual hop MIMO transmission. Considering that the overall performance of the dual hop downlink is dominated by the worse one of the two hops, it is reasonable to choose the number of simultaneous data streams in our system equal to if possible, instead of always using a single data stream regardless of antenna configuration, such that the overall rate performance can be optimized. where,,, are unitary matrices, are diagonal matrices with their elements being the singular values of, respectively. Obviously, the ordering of the singular values in ( the corresponding ordering of the singular vectors in,, 2) influences the specific decomposition expressions. Here we first assume an arbitrary ordering leave its optimization to be solved later. By substituting (6) in (4) the MSE matrix can be rewritten as III. JOINT PRECODING WITH FULL CSI This section concentrates on the design of two joint precoders assuming that full channel state information of the two hops is available. In difference to the previous related work which aims at the optimal performance by using an iterative approach, we are more interested in the suboptimal scheme which has a simple structure can provide some insight on the design of a limited feedback joint precoding scheme. We consider an MMSE receiver at the user terminal, as shown in [17], [18], the MSE matrix for the dual hop joint precoding can be written as (4), shown at the top of the next page. The diagonalization of can be obtained by (7) (8) (9) where denotes the submatrix formed by the first columns of, are two diagonal matrices with nonnegative elements denoted as, respectively. We partition the matrices,, as (10) where,, all belong to,,,. By substituting (8) (10) in (7), the MSE matrix can be simplified as The sum rate achieved by an MMSE receiver is upper bounded by the instantaneous capacity, which can be expressed as [17], [23] where denotes the th diagonal element of, denotes of the determinant of, the factor 0.5 is due to the two channel uses which are needed by a dual hop downlink, will be omitted henceforth for convenience. Obviously, the equality in (5) holds when is diagonal, which means that the capacity is achieved by an MMSE receiver in this case. Therefore, the design of should first satisfy the condition that the MSE matrix is diagonalized [19]. Let the SVD of be (4) (5) (6) (11) Then, if we further express as, respectively, the achieved sum rate can be easily derived as (12) It is shown that with the above joint precoding, the overall dual hop channel can be transformed into orthogonal subchannels, with their channel gains each represented by the product of a pair of eigenmodes, while the diagonal matrices can be viewed as the power allocation for the joint precoding. Since does not influence the sum rate, it should be set to zero to avoid wasting power. The resulting precoding matrix at the relay station is (13) where denote the submatrices formed by the first columns of, respectively. Aiming to maximize the sum rate of the dual hop transmission, we need to optimize the

4 1350 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH 2010 power allocation matrices by solving the following optimization problem: (14) where the two constraints are obtained from the power constraints at the base station the relay station. Specifically, the first constrain is obtained by substituting (8) in, while the second constraint is obtained by substituting (8) (9) in (2). We would like to note here that this optimization should be done over the optimal ordering of the singular values at the SVD of, since different ordering will give different values of. Defining new notations,,,, by replacing the notations in (14) with the newly defined notations, the above optimization problem can be simplified as (15) It is clear from the above steps that the ordering of singular values at the SVD of influences both the sum rate the specific expression of the optimal joint precoders. Thus, the joint optimal ordering of singular values at the SVD of needs to be addressed. It is seen from (12) that only singular values of each hop, i.e., eigenmodes of each hop, affect the sum rate. Therefore, the problem reduces to the optimal selection of active eigenmodes from each hop followed by the optimal pairing of active eigenmodes between the two hops. Since the sum rate expressed in (12) monotonically increases with both the eigenmode the eigenmode, the scheme of selecting the largest eigenmodes from each hop will give a maximum sum rate. Moreover, it is found from (15) that the eigenmode pairing problem is equivalent to the subchannel pairing problem of the dual hop MIMO-OFDM systems in [20]. The results in [20] showed that it is optimal to pair the active eigenmodes of the first hop ordered in with the active eigenmodes of the second hop ordered in, which means that the optimal joint precoders should be given by the SVD of both having its singular values arranged in a nonincreasing order. For notation simplicity, henceforth the SVD expressions of refer to a nonincreasing ordering of singular values. It should be noted that although (8) (13) provide a simple expression for the optimal joint precoders, the closed-form solution for the included power allocation matrices are difficult to obtain. Hammerström et al. [20] showed that the optimization problem in (15) cannot be exactly solved but its quasi-optimal solution can be obtained using an iterative method, the optimal power allocation schemes at both the base station relay station are similar to the waterfilling scheme in point-to-point MIMO systems. Since it is well known that an uniform power allocation (UPA) in general only suffers from slight performance loss compared to the optimal waterfilling scheme, while having lower cost reduced feedback burden in FDD systems, we will use UPA to form a suboptimal joint precoding scheme. Next we will show that such a UPA based dual hop joint precoding scheme can reduce to a practical limited feedback joint precoding scheme. IV. LIMITED FEEDBACK PRECODING By employing UPA, it is seen from (8), (13) that the joint precoders with full channel knowledge of can be simplified as (16) (17) where is a common scaling to fulfill the transmit power constraint at the relay station. Since it is reasonable to assume that is available at the relay station available at the user terminal, the above joint precoding solution requires the feedback of to the base station to the relay station. In order to reduce the feedback burden, we use two codebooks to quantize, such that, similar to the precoding for point-to-point MIMO systems, only the indices of the preferred codewords are required to be fed back to the base station relay station, respectively. However, the extension of point-to-point precoding to a dual hop transmission is nontrivial the following problems need to be addressed. 1) Though the optimal depend on, respectively, the codebook based choice of the precoder at the base station or the relay station is in general a function of both. In practical FDD systems, however, only the user terminal may know the channel of both two hops without feedback. If both two precoders are selected by the user, it will suffer from a severe feedback delay due to the fact that the communication between the base station the user terminal has to be forwarded by the relay station. Therefore, the precoder selection feedback scheme should be carefully designed to reduce the feedback delay. 2) The criterion for precoding codebook design has been widely studied in point-to-point MIMO communication systems. However, it is an open problem whether these developed codebook design criteria can be directly employed in the dual hop joint precoding systems. In order to address the first problem, we first present a centralized codeword selection scheme which provides the optimal performance but a high feedback delay. Then, we propose a suboptimal distributed codeword selection scheme where feedback delay complexity are both greatly reduced. A. Centralized Codeword Selection We employ precoding according to (16) (17) assume that two codebooks for have been designed denoted as, respectively. In order to maximize the ca-

5 HUANG et al.: A LIMITED FEEDBACK JOINT PRECODING 1351 pacity expressed in (5), the codeword selection for can be written as terminal needs), the distributed codeword selection for should be merely based on, respectively, such that the feedback overhead feedback delay can be considerably reduced. To this end, a new objective function, either from the capacity or the error rate perspective, should be designed. In this section we will derive bounds for the capacity the MSE-trace, then use them as the objective functions. By replacing with its SVD expression, the MSE matrix in (4) can be simplified as (18) Alternatively, considering that the minimization of the trace of MSE matrix means to some degree the optimization of the error rate performance of an MMSE receiver, an MSE-trace selection scheme aiming to minimize the error rate may be employed is expressed as (20) Based on this, the capacity of the dual hop transmission can be lower bounded by (19) Obviously, the codeword selection either from the sum rate or the error rate perspective is a function of both, which requires the selection operator to know full CSI of both two hops, thereby is called a centralized codeword selection scheme. Due to the fact that each calculation of the objective function includes one or two matrix inversions, this centralized selection scheme requires a high computational complexity. Moreover, since full knowledge of the two hop channels may only be available at the user terminal without feedback in practical FDD systems, the codeword selection for should be both conducted by the user. Unfortunately, the feedback of selection result for from the user terminal to the base station has to be forwarded by the relay station, which results in a high delay. B. Distributed Codeword Selection In order to reduce the feedback latency, we propose a distributed codeword selection scheme where the codeword selections for can be concurrently conducted by the relay station the user terminal, respectively. Since in practical systems only can be available at the relay station without feedback, while only can be easily available at the user terminal ( should be fed forward by the relay station if the user (21) where,,,, are the eigenvalues of the Hermitian matrix arranged in a nonincreasing order. For a proof, refer to Appendix A. Note that this capacity lower bound increases with both, namely, the lower bound increases if is increased, for any value of, or increases if is increased, for any value of. Since merely depend on respectively, the following distributed codeword selection scheme for, will maximize the lower bound of the capacity (22) In order that the proposed distributed codeword selection scheme can minimize the error rate of the dual hop transmission, we derive two upper bounds for the MSE trace. Both decrease with two decoupled functions of, can

6 1352 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH 2010 be utilized as the codeword selection criteria. Based on (20), upper bounds of the MSE trace can be expressed as (23) (24) See Appendix B for proofs. Obviously, minimization of the upper bound in (23) is equivalent to the maximization of the lower bound in (21). Thus, the distributed codeword selection scheme of (22) also works from the perspective of minimizing the error rate. In addition, since the upper bound in (24) is formed by a sum of two functions of, an alternative distributed codeword selection scheme, to optimize the error rate performance, is given as (25) V. CODEBOOK DESIGN CRITERIA We have derived codeword selection schemes for the dual hop joint precoding system, it is important that the codebook pair of are designed specifically for the chosen selection schemes. Love et al. [5] have shown that the criterion of maximizing the minimum Grassmannian subspace distance between any pair of codewords is quasi-optimal for point-to-point precoding systems. In dual hop precoding systems using the proposed distributed codeword selection scheme, our following analysis shows that a separate design for using the conventional Grassmannian subspace packing method is able to guarantee that the overall performance increases with the size of each of the two codebooks. To define a notion of an optimal codebook, we need a distortion measure with which to measure the average distortion. It is seen from (21), (23), (24) that when the term is maximized, the lower bound of capacity will be maximized, the upper bound of MSE trace will be minimized as well. Thus, we utilize this term as a performance metric define the following error difference: C. Distributed Beamforming Selection In general, the proposed distributed codeword selection schemes for the joint precoding system are able to reduce both the overall feedback delay the computational complexity, while they may suffer from a performance loss compared to the centralized selection scheme, due to the fact that the employed selection objective functions are not the exact capacity or the MSE trace, but their bounds. However, our following brief analysis shows that the proposed distributed selection scheme in the special case of beamforming (it happens when ) will suffer from no performance loss as compared with the centralized one, which is consistent with the result found in [22], though different analyzing methods are used. For the beamforming case, the MSE matrix in (20) reduces into a scalar can be written as (26) As now both reduce to scalars, their eigenvalues are equal to themselves. Also, it follows from (2), (16), (17) that Substituting (27) in (26), yields (27) (28) (29) which is nonnegative for any choices of, since the first term is the performance metric obtained by the optimal precoders of. Furthermore, we will design our codebook pair to minimize the average distortion (30) where denotes the expectation with respect to. If we define the minimum distances of the codebook pair, as (31) namely, the so-called projection two-norm distance between two subspaces is employed, the average distortion can be upper bounded as where. It can be easily derived that the MSE is minimized when both are maximized, which means that the proposed distributed codeword selection schemes are optimal from the perspective of both the capacity the error rate. (32)

7 HUANG et al.: A LIMITED FEEDBACK JOINT PRECODING 1353 where denote the sizes of the codebooks, respectively. For a proof, refer to Appendix C. Similar to the conclusion in [5], assuming that, we always have that the average distortion is decreased with both. Thus, we can design the codebook pair separately, with each codebook constructed to maximize the minimum projection two-norm distance between any pair of codewords. VI. SIMULATION RESULTS Monte Carlo simulations are performed to illustrate the performance of the proposed dual hop joint precoding system with distributed centralized codeword selection schemes. A block fading flat MIMO channel model is used throughout the simulations. The two hop channel matrices are both assumed to have entries independently identically distributed with, with the large scale factors of channels incorporated into the effective noise variances. The antenna configurations are focused on,. The Grassmannian codebook provided in [24] is employed in our simulations, we use the same codebook at the base station relay station, with its size shown in figures in terms of the number of feedback bits. The average SNR at the relay station the user terminal are defined as, respectively. For comparison, some optimal or suboptimal dual hop precoding systems based on full channel state information are also simulated, where the hereinafter mentioned joint optimal scheme denotes the precoding system in (8) (13), the suboptimal scheme denotes the precoding system in (16) (17) with uniform power allocation, the relay side optimal scheme denotes the system in [17], [18], where only the precoding matrix at the relay station is optimized based on full CSI, its rate performance is calculated as the information theoretic instantaneous capacity of an equivalent open-loop MIMO system. Note that in the case of, the joint optimal precoding can not be analytically solved since the objective function in (15) is not concave with respect to. Here we use the alternating optimization method presented in [20] to find the global or local optimum repeat it with 50 romly generated starting vectors, using the maximum one in comparison. A. Dual Hop Joint Beamforming This section focuses on the configurations. Since the receiver is only equipped with single antenna, a joint beamforming, i.e.,, should be employed. As disclosed in Section IV-C, in this case the proposed distributed codeword selection scheme will not result in any performance loss as compared with the centralized codeword selection scheme, it reduces to the same scheme as the one presented in [22]. Fig. 2 shows that the proposed dual hop joint beamforming scheme using distributed CS exhibits slight rate loss as compared with the full CSI based joint optimal beamforming scheme, especially for the case of. Fig. 3 illustrates the cumulative distribution function of the rate achieved by the dual hop joint beamforming, the results also show a slight gap between the proposed limited feedback joint beamforming scheme the Fig. 2. The rate of the dual hop joint beamforming system with, 15 db SNR at the relay station. Fig. 3. The cumulative distribution functions of the rate achieved by the proposed dual hop joint beamforming system, with, 15 db SNR at both the receiver relay station. joint optimal scheme. Fig. 4 illustrates the BER performance of the proposed dual hop joint beamforming using QPSK modulation. Similar results are also observed. B. Dual Hop Joint Precoding This section focuses on the configurations. Fig. 5 shows the sum rate of the dual hop joint precoding system using two different codeword selection schemes. It is seen that the performances of the dual hop joint precoding schemes using distributed centralized CS both increase with the codebook size. Compared with the centralized CS, the distributed CS suffers from a slight rate loss. This is because the distributed CS is based on a bound but not an exact rate metric. However, the distributed CS has a shorter feedback delay requires much lower computational complexity. Also, it is reasonable to see that even the scheme using centralized CS has a gap from the full CSI based suboptimal scheme, due to the quantization of the optimal joint precoders.

8 1354 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH 2010 Fig. 4. station. The BER of the proposed dual hop joint beamforming system with, 15 db SNR at the relay Fig. 6. The cumulative distribution functions of the rate achieved by the proposed dual hop joint precoding system, with, 15dB SNR at both the receiver relay station. Fig. 5. The rate of the dual hop joint precoding system with 15 db SNR at the relay station. Fig. 7. The BER of the proposed dual hop joint precoding system with 15 db SNR at the relay station. Moreover, the results reveal that the proposed joint precoding scheme with distributed CS shows obvious advantage over the beamforming scheme presented in [22] in terms of the rate performance, especially in medium-to-high SNR regions. This is due to the fact that our proposed precoding scheme employs multiple simultaneous data streams thus can fully exploit the multiplexing gain offered by the dual hop MIMO channels. Fig. 6 shows the cumulative distribution function of the rate achieved by the dual hop joint precoding system. Similar results are seen as in Fig. 5. Interestingly, it is also found from Fig. 5 Fig. 6 that the full CSI based suboptimal scheme with UPA shows slight performance loss as compared with the joint optimal scheme, only in the range of medium-to-high SNRs. And, the relay side optimal scheme shows the worst performance among three full CSI based schemes, especially in high SNR region. This is due to the fact that the precoder at the base station is not optimized. It should also be noted that, though it seems from the curves that the relay side optimal scheme outperforms the proposed scheme in most of the SNR region, this is a result of unfair comparison, where the performance of the relay side optimal scheme is calculated as the instantaneous capacity, but not the sum rate achieved by an MMSE receiver. Fig. 7 shows the BER performance of the dual hop joint precoding scheme using QPSK MMSE receiver. Both the proposed two distributed CS schemes, i.e., (22) (25), are simulated. It is seen that the BER performance of these two schemes (denoted as distributed CS #1 #2) are very close, they both increase with the codebook size. Compared with the centralized CS scheme, a loss of less than 2 db is observed in the proposed two distributed CS schemes. VII. CONCLUSION In this paper we have presented a limited feedback joint precoding for the dual hop downlink with amplify--forward relaying. The proposed scheme employs a distributed codeword selection thus has lower computational complexity feedback delay. Also, we have analyzed the joint codebook

9 HUANG et al.: A LIMITED FEEDBACK JOINT PRECODING 1355 design for the joint precoding system, revealed that a separate codebook design for the base station the relay station using Grassmannian subspace packing method can guarantee that the overall performance of the proposed scheme improves with the size of each of the two codebooks. Finally, computer simulations have confirmed the advantage of the proposed scheme in terms of the tradeoff between performance complexity, as compared with the limited feedback joint precoding with a centralized codeword selection. APPENDIX A PROOF OF (21) We first present the following matrix inequalities [25]: Given two positive semidefinite Hermitian matrices with eigenvalues arranged in nonincreasing order, respectively, we have (33) Since the matrix determinant equals the product of the eigenvalues, the capacity of the dual hop transmission with precoders can be rewritten as Assuming that the relay station transmit signal with full power, it is derived from (2) that Thus, we further have (36) (37) This concludes the proof. APPENDIX B PROOF OF (23) AND (24) We first prove the first upper bound of the MSE trace in (23) (38) (34) where By applying the inequality in (33), this yields the inequality in (a) comes from the lower bound of, which has been derived in Appendix A. Similar to the above derivation, the second upper bound of the MSE trace in (24) can be obtained as follows: (39) (35) This concludes the proof.

10 1356 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH 2010 (41) APPENDIX C PROOF OF (32) Before the proof of (32), we first give the following inequality. Given arbitrary nonnegative variables,,, we have [22, Lemma 1] (40) With that, the average distortion can now be upper bounded as shown in (41) at the top of the page, where the inequality is a result of direct use of (40). Based on the results in [5, eq. 29, 30], the two terms in the right-h side (RHS) can be further upper bounded as (42) (43) Thus, the upper bound of the average distortion can modified as This concludes the proof. (44) ACKNOWLEDGMENT The authors would like to thank all the anonymous reviewers the editor for their valuable comments that have helped to improve the quality of this paper. REFERENCES [1] G. J. Foschini M. J. Gans, On limits of wireless communications in a fading environment when using multiple antennas, Wireless Pers. Commun., vol. 6, no. 3, pp , [2] G. J. Foschini, Layered space-time architecture for wireless communication in fading environment when using multielement antennas, Bell Labs Tech. J., vol. 1, no. 2, pp , Aug [3] A. Scaglione, P. Stoica, S. Barbarossa, G. B. Giannakis, H. Sampath, Optimal designs for space-time linear precoders decoders, IEEE Trans. Signal Process., vol. 50, no. 5, pp , May [4] H. Sampath, P. Stoica, A. Paulraj, Generalized linear precoder decoder design for MIMO channels using the weighted MMSE criterion, IEEE Trans. Commun., vol. 49, no. 12, pp , Dec [5] D. J. Love R. W. Heath, Jr., Limited feedback unitary precoding for spatial multiplexing systems, IEEE Trans. Inf. Theory, vol. 51, no. 8, pp , Aug [6] Y. Huang, D. Xu, L. Yang, W. P. Zhu, A limited feedback precoding system with hierarchical codebook linear receiver, IEEE Trans. Wireless Commun., vol. 7, no. 12, pp , Dec [7] S. M. Alamouti, A simple transmit diversity technique for wireless communications, IEEE J. Sel. Areas Commun., vol. 16, no. 8, pp , Oct [8] H. Weingarten, Y. Stenberg, S. Shamai, The capacity region of the Gaussian multiple-input multiple-output broadcast channel, IEEE Trans. Inf. Theory, vol. 52, no. 9, pp , Sep [9] Q. H. Spencer, A. L. Swindelhurst, M. Haardt, Zero forcing methods for downlink spatial multiplexing in multiuser MIMO channels, IEEE Trans. Signal Process., vol. 52, pp , Feb [10] K. K. Wong, R. Murch, K. B. Letaief, A joint-channel diagonalization for multiuser MIMO antenna systems, IEEE Trans. Wireless Commun., vol. 2, pp , July [11] N. Jindal, MIMO broadcast channels with finite-rate feedback, IEEE Trans. Inf. Theory, vol. 52, pp , Nov [12] M. Sharif B. Hassibi, On the capacity of MIMO broadcast channels with partial side information, IEEE Trans. Inf. Theory, vol. 51, pp , Feb [13] D. Xu, Y. Huang, L. Yang, B. Li, Linear transceiver design for multiuser MIMO downlink, in Proc. IEEE Int. Conf. Commun., May 2008, pp [14] Y. Huang, L. Yang, J. Liu, A limited feedback SDMA for downlink of multiuser MIMO communication system, EURASIP J. Adv. Signal Process., vol. 2008, Oct [15] B. Wang, J. Zhang, A. Høst-Madsen, On the capacity of MIMO relay channels, IEEE Trans. Inf. Theory, vol. 51, no. 1, pp , Jan

11 HUANG et al.: A LIMITED FEEDBACK JOINT PRECODING 1357 [16] H. Bolcskei, R. U. Nabar, O. Oyman, A. J. Paulraj, Capacity scaling laws in MIMO relay networks, IEEE Trans. Wireless Commun., vol. 5, no. 6, Jun [17] O. Munoz-Medina, J. Vidal, A. Agustin, Linear transceiver design in nonregenerative relays with channel state information, IEEE Trans. Signal Process., vol. 55, no. 6, pp , Jun [18] X. Tang Y. Hua, Optimal design of non-regenerative MIMO wireless relays, IEEE Trans. Wireless Commun., vol. 6, no. 4, pp , Apr [19] Y. Fan J. Thompson, MIMO configurations for relay channels: Theory Practice, IEEE Trans. Wireless Commun., vol. 5, no. 5, pp , May [20] I. Hammerström A. Wittneben, Power allocation schemes for amplify--forward MIMO-OFDM relay links, IEEE Trans. Wireless Commun., vol. 6, no. 8, pp , Aug [21] Z. Fang, Y. Hua, J. C. Koshy, Joint source relay optimization for a non-regenerative MIMO relay, in Proc. IEEE Workshop Sens. Array Multichannel Signal Process., Jul. 2006, pp [22] B. Khoshnevis, W. Yu, R. Adve, Grassmannian beamforming for MIMO amplify--forward relaying, IEEE J. Sel. Areas. Commun., vol. 26, no. 8, pp , Oct [23] R. W. Heath, Jr., S. Shu, A. Paulraj, Antenna selection for spatial multiplexing systems with linear receivers, IEEE Commun. Lett., vol. 5, no. 4, pp , Apr [24] D. J. Love, Personal Webpage on Grassmannian Subspace Packing [Online]. Available: [25] H. Sha, Estimation of the eigenvalues of for,, Linear Algebra Its Appl., vol. 73, pp , Yongming Huang received the B.S. M.S. degrees from Nanjing University, China, in , the Ph.D. degree from the School of Information Science Engineering, Southeast University, China, 2007, respectively. Since 2007, he has been an Assistant Professor with the School of Information Science Engineering, Southeast University. In December 2008, he joined in the Signal Processing Lab, Electrical Engineering, Royal Institute of Technology (KTH), Stockholm, Sweden, as a Postdoctoral Researcher. His current research interest includes MIMO communication systems, multiuser MIMO communications, cooperative communications. Luxi Yang (M 96) received the M.S. Ph.D. degree in electrical engineering, from the Southeast University, Nanjing, China, in , respectively. Since 1993, he has been with the Department of Radio Engineering, Southeast University, where he is currently a professor of Information Systems Communications, the Director of Digital Signal Processing Division. His current research interests include signal processing for wireless communications, MIMO communications, cooperative relaying systems, statistical signal processing. He is the author or coauthor of two published books more than 100 journal papers, holds 10 patents. Prof. Yang received the first- second-class prizes of Science Technology Progress Awards of the State Education Ministry of China in He is currently a member of Signal Processing Committee of Chinese Institute of Electronics. Mats Bengtsson (M 00 SM 06) received the M.S. degree in computer science from Linköping University, Linköping, Sweden, in 1991 the Tech. Lic. Ph.D. degrees in electrical engineering from the Royal Institute of Technology (KTH), Stockholm, Sweden, in , respectively. From 1991 to 1995, he was with Ericsson Telecom AB Karlstad. He currently holds a position as Associate Professor with the Signal Processing Laboratory, School of Electrical Engineering, KTH. His research interests include statistical signal processing its applications to antenna-array processing communications, radio resource management, propagation channel modeling. Dr. Bengtsson served as Associate Editor for the IEEE TRANSACTIONS ON SIGNAL PROCESSING during is a member of the IEEE SPCOM Technical Committee. Björn Ottersten (S 87-M 89-SM 99-F 04) was born in Stockholm, Sweden, in He received the M.S. degree in electrical engineering applied physics from Linköping University, Linköping, Sweden, in In 1989, he received the Ph.D. degree in electrical engineering from Stanford University, Stanford, CA. He has held research positions with the Department of Electrical Engineering, Linköping University, the Information Systems Laboratory, Stanford University, the Katholieke Universiteit Leuven, Leuven, the University of Luxembourg. During , he was Director of Research at ArrayComm, Inc., a start-up company in San Jose, CA, based on Ottersten s patented technology. In 1991, he was appointed Professor of Signal Processing at the Royal Institute of Technology (KTH), Stockholm. From 1992 to 2004, he was head of the Department for Signals, Sensors, Systems at KTH from 2004 to 2008 he was dean of the School of Electrical Engineering at KTH. Currently, he is Director for the Interdisciplinary Centre for Security, Reliability Trust at the University of Luxembourg. His research interests include security trust, reliable wireless communications, statistical signal processing. Dr. Ottersten has served as Associate Editor for the IEEE TRANSACTIONS ON SIGNAL PROCESSING on the editorial board of the IEEE Signal Processing Magazine. He is currently Editor-in-Chief of the EURASIP Signal Processing Journal a member of the editorial board of the EURASIP Journal of Applied Signal Processing. He has coauthored papers that received the IEEE Signal Processing Society Best Paper Award in 1993, 2001, He is a Fellow of the EURASIP. He is a first recipient of the European Research Council advanced research grant.

Source Transmit Antenna Selection for MIMO Decode-and-Forward Relay Networks

Source Transmit Antenna Selection for MIMO Decode-and-Forward Relay Networks IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 61, NO. 7, APRIL 1, 2013 1657 Source Transmit Antenna Selection for MIMO Decode--Forward Relay Networks Xianglan Jin, Jong-Seon No, Dong-Joon Shin Abstract

More information

KURSOR Menuju Solusi Teknologi Informasi Vol. 9, No. 1, Juli 2017

KURSOR Menuju Solusi Teknologi Informasi Vol. 9, No. 1, Juli 2017 Jurnal Ilmiah KURSOR Menuju Solusi Teknologi Informasi Vol. 9, No. 1, Juli 2017 ISSN 0216 0544 e-issn 2301 6914 OPTIMAL RELAY DESIGN OF ZERO FORCING EQUALIZATION FOR MIMO MULTI WIRELESS RELAYING NETWORKS

More information

IN AN MIMO communication system, multiple transmission

IN AN MIMO communication system, multiple transmission 3390 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL 55, NO 7, JULY 2007 Precoded FIR and Redundant V-BLAST Systems for Frequency-Selective MIMO Channels Chun-yang Chen, Student Member, IEEE, and P P Vaidyanathan,

More information

Random Beamforming with Multi-beam Selection for MIMO Broadcast Channels

Random Beamforming with Multi-beam Selection for MIMO Broadcast Channels Random Beamforming with Multi-beam Selection for MIMO Broadcast Channels Kai Zhang and Zhisheng Niu Dept. of Electronic Engineering, Tsinghua University Beijing 84, China zhangkai98@mails.tsinghua.e.cn,

More information

IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 57, NO. 12, DECEMBER

IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 57, NO. 12, DECEMBER IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 57, NO. 12, DECEMBER 2009 4837 A Unified Framework for Optimizing Linear Nonregenerative Multicarrier MIMO Relay Communication Systems Yue Rong, Member, IEEE,

More information

THE emergence of multiuser transmission techniques for

THE emergence of multiuser transmission techniques for IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 54, NO. 10, OCTOBER 2006 1747 Degrees of Freedom in Wireless Multiuser Spatial Multiplex Systems With Multiple Antennas Wei Yu, Member, IEEE, and Wonjong Rhee,

More information

IN RECENT years, wireless multiple-input multiple-output

IN RECENT years, wireless multiple-input multiple-output 1936 IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, VOL. 3, NO. 6, NOVEMBER 2004 On Strategies of Multiuser MIMO Transmit Signal Processing Ruly Lai-U Choi, Michel T. Ivrlač, Ross D. Murch, and Wolfgang

More information

MULTIPATH fading could severely degrade the performance

MULTIPATH fading could severely degrade the performance 1986 IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 53, NO. 12, DECEMBER 2005 Rate-One Space Time Block Codes With Full Diversity Liang Xian and Huaping Liu, Member, IEEE Abstract Orthogonal space time block

More information

Performance Analysis of Maximum Likelihood Detection in a MIMO Antenna System

Performance Analysis of Maximum Likelihood Detection in a MIMO Antenna System IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 50, NO. 2, FEBRUARY 2002 187 Performance Analysis of Maximum Likelihood Detection in a MIMO Antenna System Xu Zhu Ross D. Murch, Senior Member, IEEE Abstract In

More information

Analysis and Improvements of Linear Multi-user user MIMO Precoding Techniques

Analysis and Improvements of Linear Multi-user user MIMO Precoding Techniques 1 Analysis and Improvements of Linear Multi-user user MIMO Precoding Techniques Bin Song and Martin Haardt Outline 2 Multi-user user MIMO System (main topic in phase I and phase II) critical problem Downlink

More information

ENERGY EFFICIENT WATER-FILLING ALGORITHM FOR MIMO- OFDMA CELLULAR SYSTEM

ENERGY EFFICIENT WATER-FILLING ALGORITHM FOR MIMO- OFDMA CELLULAR SYSTEM ENERGY EFFICIENT WATER-FILLING ALGORITHM FOR MIMO- OFDMA CELLULAR SYSTEM Hailu Belay Kassa, Dereje H.Mariam Addis Ababa University, Ethiopia Farzad Moazzami, Yacob Astatke Morgan State University Baltimore,

More information

IMPROVED QR AIDED DETECTION UNDER CHANNEL ESTIMATION ERROR CONDITION

IMPROVED QR AIDED DETECTION UNDER CHANNEL ESTIMATION ERROR CONDITION IMPROVED QR AIDED DETECTION UNDER CHANNEL ESTIMATION ERROR CONDITION Jigyasha Shrivastava, Sanjay Khadagade, and Sumit Gupta Department of Electronics and Communications Engineering, Oriental College of

More information

VARIOUS relay communication techniques have been

VARIOUS relay communication techniques have been IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 3, MARCH 2010 1833 Multiuser Two-Way Amplify-and-Forward Relay Processing and Power Control Methods for Beamforming Systems Jingon Joung, Member, IEEE,

More information

PROGRESSIVE CHANNEL ESTIMATION FOR ULTRA LOW LATENCY MILLIMETER WAVE COMMUNICATIONS

PROGRESSIVE CHANNEL ESTIMATION FOR ULTRA LOW LATENCY MILLIMETER WAVE COMMUNICATIONS PROGRESSIVECHANNELESTIMATIONFOR ULTRA LOWLATENCYMILLIMETER WAVECOMMUNICATIONS Hung YiCheng,Ching ChunLiao,andAn Yeu(Andy)Wu,Fellow,IEEE Graduate Institute of Electronics Engineering, National Taiwan University

More information

TRANSMIT diversity has emerged in the last decade as an

TRANSMIT diversity has emerged in the last decade as an IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, VOL. 3, NO. 5, SEPTEMBER 2004 1369 Performance of Alamouti Transmit Diversity Over Time-Varying Rayleigh-Fading Channels Antony Vielmon, Ye (Geoffrey) Li,

More information

Optimal subcarrier allocation for 2-user downlink multiantenna OFDMA channels with beamforming interpolation

Optimal subcarrier allocation for 2-user downlink multiantenna OFDMA channels with beamforming interpolation 013 13th International Symposium on Communications and Information Technologies (ISCIT) Optimal subcarrier allocation for -user downlink multiantenna OFDMA channels with beamforming interpolation Kritsada

More information

REMOTE CONTROL OF TRANSMIT BEAMFORMING IN TDD/MIMO SYSTEMS

REMOTE CONTROL OF TRANSMIT BEAMFORMING IN TDD/MIMO SYSTEMS The 7th Annual IEEE International Symposium on Personal, Indoor and Mobile Radio Communications (PIMRC 6) REMOTE CONTROL OF TRANSMIT BEAMFORMING IN TDD/MIMO SYSTEMS Yoshitaa Hara Kazuyoshi Oshima Mitsubishi

More information

On the Value of Coherent and Coordinated Multi-point Transmission

On the Value of Coherent and Coordinated Multi-point Transmission On the Value of Coherent and Coordinated Multi-point Transmission Antti Tölli, Harri Pennanen and Petri Komulainen atolli@ee.oulu.fi Centre for Wireless Communications University of Oulu December 4, 2008

More information

Sum Rate Maximizing Zero Interference Linear Multiuser MIMO Transmission

Sum Rate Maximizing Zero Interference Linear Multiuser MIMO Transmission Sum Rate Maximizing Zero Interference Linear Multiuser MIMO Transmission Helka-Liina Määttänen Renesas Mobile Europe Ltd. Systems Research and Standardization Helsinki, Finland Email: helka.maattanen@renesasmobile.com

More information

Multiple Antennas. Mats Bengtsson, Björn Ottersten. Basic Transmission Schemes 1 September 8, Presentation Outline

Multiple Antennas. Mats Bengtsson, Björn Ottersten. Basic Transmission Schemes 1 September 8, Presentation Outline Multiple Antennas Capacity and Basic Transmission Schemes Mats Bengtsson, Björn Ottersten Basic Transmission Schemes 1 September 8, 2005 Presentation Outline Channel capacity Some fine details and misconceptions

More information

Generalized Signal Alignment For MIMO Two-Way X Relay Channels

Generalized Signal Alignment For MIMO Two-Way X Relay Channels Generalized Signal Alignment For IO Two-Way X Relay Channels Kangqi Liu, eixia Tao, Zhengzheng Xiang and Xin Long Dept. of Electronic Engineering, Shanghai Jiao Tong University, Shanghai, China Emails:

More information

Optimization of Coded MIMO-Transmission with Antenna Selection

Optimization of Coded MIMO-Transmission with Antenna Selection Optimization of Coded MIMO-Transmission with Antenna Selection Biljana Badic, Paul Fuxjäger, Hans Weinrichter Institute of Communications and Radio Frequency Engineering Vienna University of Technology

More information

SPACE TIME coding for multiple transmit antennas has attracted

SPACE TIME coding for multiple transmit antennas has attracted 486 IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 50, NO. 3, MARCH 2004 An Orthogonal Space Time Coded CPM System With Fast Decoding for Two Transmit Antennas Genyuan Wang Xiang-Gen Xia, Senior Member,

More information

/11/$ IEEE

/11/$ IEEE This full text paper was peer reviewed at the direction of IEEE Communications Society subject matter experts for publication in the IEEE Globecom 0 proceedings. Two-way Amplify-and-Forward MIMO Relay

More information

On the Achievable Diversity-vs-Multiplexing Tradeoff in Cooperative Channels

On the Achievable Diversity-vs-Multiplexing Tradeoff in Cooperative Channels On the Achievable Diversity-vs-Multiplexing Tradeoff in Cooperative Channels Kambiz Azarian, Hesham El Gamal, and Philip Schniter Dept of Electrical Engineering, The Ohio State University Columbus, OH

More information

MU-MIMO in LTE/LTE-A Performance Analysis. Rizwan GHAFFAR, Biljana BADIC

MU-MIMO in LTE/LTE-A Performance Analysis. Rizwan GHAFFAR, Biljana BADIC MU-MIMO in LTE/LTE-A Performance Analysis Rizwan GHAFFAR, Biljana BADIC Outline 1 Introduction to Multi-user MIMO Multi-user MIMO in LTE and LTE-A 3 Transceiver Structures for Multi-user MIMO Rizwan GHAFFAR

More information

Beamforming with Imperfect CSI

Beamforming with Imperfect CSI This full text paper was peer reviewed at the direction of IEEE Communications Society subject matter experts for publication in the WCNC 007 proceedings Beamforming with Imperfect CSI Ye (Geoffrey) Li

More information

WIRELESS relays are known to be useful to increase the

WIRELESS relays are known to be useful to increase the IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 58, NO. 5, MAY 2010 2823 Power Allocation for a MIMO Relay System With Multiple-Antenna Users Yuan Yu and Yingbo Hua, Fellow, IEEE Abstract A power allocation

More information

Low Complexity Multiuser Scheduling in MIMO Broadcast Channel with Limited Feedback

Low Complexity Multiuser Scheduling in MIMO Broadcast Channel with Limited Feedback Low Complexity Multiuser Scheduling in MIMO Broadcast Channel with Limited Feedback Feng She, Hanwen Luo, and Wen Chen Department of Electronic Engineering Shanghai Jiaotong University Shanghai 200030,

More information

Fig.1channel model of multiuser ss OSTBC system

Fig.1channel model of multiuser ss OSTBC system IOSR Journal of Electronics and Communication Engineering (IOSR-JECE) e-issn: 2278-2834,p- ISSN: 2278-8735.Volume 9, Issue 1, Ver. V (Feb. 2014), PP 48-52 Cooperative Spectrum Sensing In Cognitive Radio

More information

Novel Symbol-Wise ML Decodable STBC for IEEE e/m Standard

Novel Symbol-Wise ML Decodable STBC for IEEE e/m Standard Novel Symbol-Wise ML Decodable STBC for IEEE 802.16e/m Standard Tian Peng Ren 1 Chau Yuen 2 Yong Liang Guan 3 and Rong Jun Shen 4 1 National University of Defense Technology Changsha 410073 China 2 Institute

More information

An Efficient Linear Precoding Scheme Based on Block Diagonalization for Multiuser MIMO Downlink System

An Efficient Linear Precoding Scheme Based on Block Diagonalization for Multiuser MIMO Downlink System An Efficient Linear Precoding Scheme Based on Block Diagonalization for Multiuser MIMO Downlink System Abhishek Gupta #, Garima Saini * Dr.SBL Sachan $ # ME Student, Department of ECE, NITTTR, Chandigarh

More information

On Differential Modulation in Downlink Multiuser MIMO Systems

On Differential Modulation in Downlink Multiuser MIMO Systems On Differential Modulation in Downlin Multiuser MIMO Systems Fahad Alsifiany, Aissa Ihlef, and Jonathon Chambers ComS IP Group, School of Electrical and Electronic Engineering, Newcastle University, NE

More information

Block Processing Linear Equalizer for MIMO CDMA Downlinks in STTD Mode

Block Processing Linear Equalizer for MIMO CDMA Downlinks in STTD Mode Block Processing Linear Equalizer for MIMO CDMA Downlinks in STTD Mode Yan Li Yingxue Li Abstract In this study, an enhanced chip-level linear equalizer is proposed for multiple-input multiple-out (MIMO)

More information

A Differential Detection Scheme for Transmit Diversity

A Differential Detection Scheme for Transmit Diversity IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, VOL. 18, NO. 7, JULY 2000 1169 A Differential Detection Scheme for Transmit Diversity Vahid Tarokh, Member, IEEE, Hamid Jafarkhani, Member, IEEE Abstract

More information

Lecture LTE (4G) -Technologies used in 4G and 5G. Spread Spectrum Communications

Lecture LTE (4G) -Technologies used in 4G and 5G. Spread Spectrum Communications COMM 907: Spread Spectrum Communications Lecture 10 - LTE (4G) -Technologies used in 4G and 5G The Need for LTE Long Term Evolution (LTE) With the growth of mobile data and mobile users, it becomes essential

More information

THE EFFECT of multipath fading in wireless systems can

THE EFFECT of multipath fading in wireless systems can IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, VOL. 47, NO. 1, FEBRUARY 1998 119 The Diversity Gain of Transmit Diversity in Wireless Systems with Rayleigh Fading Jack H. Winters, Fellow, IEEE Abstract In

More information

MIMO Interference Management Using Precoding Design

MIMO Interference Management Using Precoding Design MIMO Interference Management Using Precoding Design Martin Crew 1, Osama Gamal Hassan 2 and Mohammed Juned Ahmed 3 1 University of Cape Town, South Africa martincrew@topmail.co.za 2 Cairo University, Egypt

More information

Detection of SINR Interference in MIMO Transmission using Power Allocation

Detection of SINR Interference in MIMO Transmission using Power Allocation International Journal of Electronics and Communication Engineering. ISSN 0974-2166 Volume 5, Number 1 (2012), pp. 49-58 International Research Publication House http://www.irphouse.com Detection of SINR

More information

UPLINK SPATIAL SCHEDULING WITH ADAPTIVE TRANSMIT BEAMFORMING IN MULTIUSER MIMO SYSTEMS

UPLINK SPATIAL SCHEDULING WITH ADAPTIVE TRANSMIT BEAMFORMING IN MULTIUSER MIMO SYSTEMS UPLINK SPATIAL SCHEDULING WITH ADAPTIVE TRANSMIT BEAMFORMING IN MULTIUSER MIMO SYSTEMS Yoshitaka Hara Loïc Brunel Kazuyoshi Oshima Mitsubishi Electric Information Technology Centre Europe B.V. (ITE), France

More information

3432 IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 53, NO. 10, OCTOBER 2007

3432 IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 53, NO. 10, OCTOBER 2007 3432 IEEE TRANSACTIONS ON INFORMATION THEORY, VOL 53, NO 10, OCTOBER 2007 Resource Allocation for Wireless Fading Relay Channels: Max-Min Solution Yingbin Liang, Member, IEEE, Venugopal V Veeravalli, Fellow,

More information

University of Bristol - Explore Bristol Research. Peer reviewed version. Link to published version (if available): /PIMRC.2009.

University of Bristol - Explore Bristol Research. Peer reviewed version. Link to published version (if available): /PIMRC.2009. Beh, K. C., Doufexi, A., & Armour, S. M. D. (2009). On the performance of SU-MIMO and MU-MIMO in 3GPP LTE downlink. In IEEE 20th International Symposium on Personal, Indoor and Mobile Radio Communications,

More information

Transmit Antenna Selection in Linear Receivers: a Geometrical Approach

Transmit Antenna Selection in Linear Receivers: a Geometrical Approach Transmit Antenna Selection in Linear Receivers: a Geometrical Approach I. Berenguer, X. Wang and I.J. Wassell Abstract: We consider transmit antenna subset selection in spatial multiplexing systems. In

More information

Performance of MMSE Based MIMO Radar Waveform Design in White and Colored Noise

Performance of MMSE Based MIMO Radar Waveform Design in White and Colored Noise Performance of MMSE Based MIMO Radar Waveform Design in White Colored Noise Mr.T.M.Senthil Ganesan, Department of CSE, Velammal College of Engineering & Technology, Madurai - 625009 e-mail:tmsgapvcet@gmail.com

More information

UNEQUAL POWER ALLOCATION FOR JPEG TRANSMISSION OVER MIMO SYSTEMS. Muhammad F. Sabir, Robert W. Heath Jr. and Alan C. Bovik

UNEQUAL POWER ALLOCATION FOR JPEG TRANSMISSION OVER MIMO SYSTEMS. Muhammad F. Sabir, Robert W. Heath Jr. and Alan C. Bovik UNEQUAL POWER ALLOCATION FOR JPEG TRANSMISSION OVER MIMO SYSTEMS Muhammad F. Sabir, Robert W. Heath Jr. and Alan C. Bovik Department of Electrical and Computer Engineering, The University of Texas at Austin,

More information

REVIEW OF COOPERATIVE SCHEMES BASED ON DISTRIBUTED CODING STRATEGY

REVIEW OF COOPERATIVE SCHEMES BASED ON DISTRIBUTED CODING STRATEGY INTERNATIONAL JOURNAL OF RESEARCH IN COMPUTER APPLICATIONS AND ROBOTICS ISSN 2320-7345 REVIEW OF COOPERATIVE SCHEMES BASED ON DISTRIBUTED CODING STRATEGY P. Suresh Kumar 1, A. Deepika 2 1 Assistant Professor,

More information

International Journal of Digital Application & Contemporary research Website: (Volume 2, Issue 7, February 2014)

International Journal of Digital Application & Contemporary research Website:   (Volume 2, Issue 7, February 2014) Performance Evaluation of Precoded-STBC over Rayleigh Fading Channel using BPSK & QPSK Modulation Schemes Radhika Porwal M Tech Scholar, Department of Electronics and Communication Engineering Mahakal

More information

Rake-based multiuser detection for quasi-synchronous SDMA systems

Rake-based multiuser detection for quasi-synchronous SDMA systems Title Rake-bed multiuser detection for qui-synchronous SDMA systems Author(s) Ma, S; Zeng, Y; Ng, TS Citation Ieee Transactions On Communications, 2007, v. 55 n. 3, p. 394-397 Issued Date 2007 URL http://hdl.handle.net/10722/57442

More information

Spatial Correlation Effects on Channel Estimation of UCA-MIMO Receivers

Spatial Correlation Effects on Channel Estimation of UCA-MIMO Receivers 11 International Conference on Communication Engineering and Networks IPCSIT vol.19 (11) (11) IACSIT Press, Singapore Spatial Correlation Effects on Channel Estimation of UCA-MIMO Receivers M. A. Mangoud

More information

IN a large wireless mesh network of many multiple-input

IN a large wireless mesh network of many multiple-input 686 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL 56, NO 2, FEBRUARY 2008 Space Time Power Schedule for Distributed MIMO Links Without Instantaneous Channel State Information at the Transmitting Nodes Yue

More information

Optimum Power Allocation in Cooperative Networks

Optimum Power Allocation in Cooperative Networks Optimum Power Allocation in Cooperative Networks Jaime Adeane, Miguel R.D. Rodrigues, and Ian J. Wassell Laboratory for Communication Engineering Department of Engineering University of Cambridge 5 JJ

More information

Degrees of Freedom of the MIMO X Channel

Degrees of Freedom of the MIMO X Channel Degrees of Freedom of the MIMO X Channel Syed A. Jafar Electrical Engineering and Computer Science University of California Irvine Irvine California 9697 USA Email: syed@uci.edu Shlomo Shamai (Shitz) Department

More information

Transmit Power Adaptation for Multiuser OFDM Systems

Transmit Power Adaptation for Multiuser OFDM Systems IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, VOL. 21, NO. 2, FEBRUARY 2003 171 Transmit Power Adaptation Multiuser OFDM Systems Jiho Jang, Student Member, IEEE, Kwang Bok Lee, Member, IEEE Abstract

More information

MIMO Nullforming with RVQ Limited Feedback and Channel Estimation Errors

MIMO Nullforming with RVQ Limited Feedback and Channel Estimation Errors MIMO Nullforming with RVQ Limited Feedback and Channel Estimation Errors D. Richard Brown III Dept. of Electrical and Computer Eng. Worcester Polytechnic Institute 100 Institute Rd, Worcester, MA 01609

More information

An efficient user scheduling scheme for downlink Multiuser MIMO-OFDM systems with Block Diagonalization

An efficient user scheduling scheme for downlink Multiuser MIMO-OFDM systems with Block Diagonalization An efficient user scheduling scheme for downlink Multiuser MIMO-OFDM systems with Block Diagonalization Mounir Esslaoui and Mohamed Essaaidi Information and Telecommunication Systems Laboratory Abdelmalek

More information

Dynamic Resource Allocation for Multi Source-Destination Relay Networks

Dynamic Resource Allocation for Multi Source-Destination Relay Networks Dynamic Resource Allocation for Multi Source-Destination Relay Networks Onur Sahin, Elza Erkip Electrical and Computer Engineering, Polytechnic University, Brooklyn, New York, USA Email: osahin0@utopia.poly.edu,

More information

MATLAB Simulation for Fixed Gain Amplify and Forward MIMO Relaying System using OSTBC under Flat Fading Rayleigh Channel

MATLAB Simulation for Fixed Gain Amplify and Forward MIMO Relaying System using OSTBC under Flat Fading Rayleigh Channel MATLAB Simulation for Fixed Gain Amplify and Forward MIMO Relaying System using OSTBC under Flat Fading Rayleigh Channel Anas A. Abu Tabaneh 1, Abdulmonem H.Shaheen, Luai Z.Qasrawe 3, Mohammad H.Zghair

More information

SPECTRUM SHARING IN CRN USING ARP PROTOCOL- ANALYSIS OF HIGH DATA RATE

SPECTRUM SHARING IN CRN USING ARP PROTOCOL- ANALYSIS OF HIGH DATA RATE Int. J. Chem. Sci.: 14(S3), 2016, 794-800 ISSN 0972-768X www.sadgurupublications.com SPECTRUM SHARING IN CRN USING ARP PROTOCOL- ANALYSIS OF HIGH DATA RATE ADITYA SAI *, ARSHEYA AFRAN and PRIYANKA Information

More information

SPACE-TIME coding techniques are widely discussed to

SPACE-TIME coding techniques are widely discussed to 1214 IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, VOL. 4, NO. 3, MAY 2005 Some Super-Orthogonal Space-Time Trellis Codes Based on Non-PSK MTCM Aijun Song, Student Member, IEEE, Genyuan Wang, and Xiang-Gen

More information

INTERSYMBOL interference (ISI) is a significant obstacle

INTERSYMBOL interference (ISI) is a significant obstacle IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 53, NO. 1, JANUARY 2005 5 Tomlinson Harashima Precoding With Partial Channel Knowledge Athanasios P. Liavas, Member, IEEE Abstract We consider minimum mean-square

More information

On the Capacity Region of the Vector Fading Broadcast Channel with no CSIT

On the Capacity Region of the Vector Fading Broadcast Channel with no CSIT On the Capacity Region of the Vector Fading Broadcast Channel with no CSIT Syed Ali Jafar University of California Irvine Irvine, CA 92697-2625 Email: syed@uciedu Andrea Goldsmith Stanford University Stanford,

More information

Uplink and Downlink Beamforming for Fading Channels. Mats Bengtsson and Björn Ottersten

Uplink and Downlink Beamforming for Fading Channels. Mats Bengtsson and Björn Ottersten Uplink and Downlink Beamforming for Fading Channels Mats Bengtsson and Björn Ottersten 999-02-7 In Proceedings of 2nd IEEE Signal Processing Workshop on Signal Processing Advances in Wireless Communications,

More information

International Journal of Advance Engineering and Research Development. Channel Estimation for MIMO based-polar Codes

International Journal of Advance Engineering and Research Development. Channel Estimation for MIMO based-polar Codes Scientific Journal of Impact Factor (SJIF): 4.72 International Journal of Advance Engineering and Research Development Volume 5, Issue 01, January -2018 Channel Estimation for MIMO based-polar Codes 1

More information

CODE division multiple access (CDMA) systems suffer. A Blind Adaptive Decorrelating Detector for CDMA Systems

CODE division multiple access (CDMA) systems suffer. A Blind Adaptive Decorrelating Detector for CDMA Systems 1530 IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, VOL. 16, NO. 8, OCTOBER 1998 A Blind Adaptive Decorrelating Detector for CDMA Systems Sennur Ulukus, Student Member, IEEE, and Roy D. Yates, Member,

More information

ARQ strategies for MIMO eigenmode transmission with adaptive modulation and coding

ARQ strategies for MIMO eigenmode transmission with adaptive modulation and coding ARQ strategies for MIMO eigenmode transmission with adaptive modulation and coding Elisabeth de Carvalho and Petar Popovski Aalborg University, Niels Jernes Vej 2 9220 Aalborg, Denmark email: {edc,petarp}@es.aau.dk

More information

QoS Optimization For MIMO-OFDM Mobile Multimedia Communication Systems

QoS Optimization For MIMO-OFDM Mobile Multimedia Communication Systems QoS Optimization For MIMO-OFDM Mobile Multimedia Communication Systems M.SHASHIDHAR Associate Professor (ECE) Vaagdevi College of Engineering V.MOUNIKA M-Tech (WMC) Vaagdevi College of Engineering Abstract:

More information

Energy Efficient Multiple Access Scheme for Multi-User System with Improved Gain

Energy Efficient Multiple Access Scheme for Multi-User System with Improved Gain Volume 2, Issue 11, November-2015, pp. 739-743 ISSN (O): 2349-7084 International Journal of Computer Engineering In Research Trends Available online at: www.ijcert.org Energy Efficient Multiple Access

More information

Auxiliary Beam Pair Enabled AoD Estimation for Large-scale mmwave MIMO Systems

Auxiliary Beam Pair Enabled AoD Estimation for Large-scale mmwave MIMO Systems Auxiliary Beam Pair Enabled AoD Estimation for Large-scale mmwave MIMO Systems Dalin Zhu, Junil Choi and Robert W. Heath Jr. Wireless Networking and Communications Group Department of Electrical and Computer

More information

Adaptive selection of antenna grouping and beamforming for MIMO systems

Adaptive selection of antenna grouping and beamforming for MIMO systems RESEARCH Open Access Adaptive selection of antenna grouping and beamforming for MIMO systems Kyungchul Kim, Kyungjun Ko and Jungwoo Lee * Abstract Antenna grouping algorithms are hybrids of transmit beamforming

More information

Beamforming with Finite Rate Feedback for LOS MIMO Downlink Channels

Beamforming with Finite Rate Feedback for LOS MIMO Downlink Channels Beamforming with Finite Rate Feedback for LOS IO Downlink Channels Niranjay Ravindran University of innesota inneapolis, N, 55455 USA Nihar Jindal University of innesota inneapolis, N, 55455 USA Howard

More information

Channel Capacity Estimation in MIMO Systems Based on Water-Filling Algorithm

Channel Capacity Estimation in MIMO Systems Based on Water-Filling Algorithm Channel Capacity Estimation in MIMO Systems Based on Water-Filling Algorithm 1 Ch.Srikanth, 2 B.Rajanna 1 PG SCHOLAR, 2 Assistant Professor Vaagdevi college of engineering. (warangal) ABSTRACT power than

More information

Low Complexity Power Allocation in Multiple-antenna Relay Networks

Low Complexity Power Allocation in Multiple-antenna Relay Networks Low Complexity Power Allocation in Multiple-antenna Relay Networks Yi Zheng and Steven D. Blostein Dept. of Electrical and Computer Engineering Queen s University, Kingston, Ontario, K7L3N6, Canada Email:

More information

Multi-Input Multi-Output Fading Channel Equalization with Constellation Selection and Space-Time Precoders

Multi-Input Multi-Output Fading Channel Equalization with Constellation Selection and Space-Time Precoders Multi-Input Multi-Output Fading Channel Equalization with Constellation Selection and Space-Time Precoders Ms. Ankita Shukla 1, Prof. Abhishek Choubey 2 M.Tech Scholar, RKDF Bhopal, India 1 HOD, Asst.

More information

MULTICARRIER communication systems are promising

MULTICARRIER communication systems are promising 1658 IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 52, NO. 10, OCTOBER 2004 Transmit Power Allocation for BER Performance Improvement in Multicarrier Systems Chang Soon Park, Student Member, IEEE, and Kwang

More information

IN recent years, there has been great interest in the analysis

IN recent years, there has been great interest in the analysis 2890 IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 52, NO. 7, JULY 2006 On the Power Efficiency of Sensory and Ad Hoc Wireless Networks Amir F. Dana, Student Member, IEEE, and Babak Hassibi Abstract We

More information

Relay Selection in Adaptive Buffer-Aided Space-Time Coding with TAS for Cooperative Wireless Networks

Relay Selection in Adaptive Buffer-Aided Space-Time Coding with TAS for Cooperative Wireless Networks Asian Journal of Engineering and Applied Technology ISSN: 2249-068X Vol. 6 No. 1, 2017, pp.29-33 The Research Publication, www.trp.org.in Relay Selection in Adaptive Buffer-Aided Space-Time Coding with

More information

IN MOST situations, the wireless channel suffers attenuation

IN MOST situations, the wireless channel suffers attenuation IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, VOL. 17, NO. 3, MARCH 1999 451 Space Time Block Coding for Wireless Communications: Performance Results Vahid Tarokh, Member, IEEE, Hamid Jafarkhani, Member,

More information

Amplify-and-Forward Space-Time Coded Cooperation via Incremental Relaying Behrouz Maham and Are Hjørungnes

Amplify-and-Forward Space-Time Coded Cooperation via Incremental Relaying Behrouz Maham and Are Hjørungnes Amplify-and-Forward Space-Time Coded Cooperation via Incremental elaying Behrouz Maham and Are Hjørungnes UniK University Graduate Center, University of Oslo Instituttveien-5, N-7, Kjeller, Norway behrouz@unik.no,

More information

Enhancement of Transmission Reliability in Multi Input Multi Output(MIMO) Antenna System for Improved Performance

Enhancement of Transmission Reliability in Multi Input Multi Output(MIMO) Antenna System for Improved Performance Advances in Wireless and Mobile Communications. ISSN 0973-6972 Volume 10, Number 4 (2017), pp. 593-601 Research India Publications http://www.ripublication.com Enhancement of Transmission Reliability in

More information

Fair scheduling and orthogonal linear precoding/decoding. in broadcast MIMO systems

Fair scheduling and orthogonal linear precoding/decoding. in broadcast MIMO systems Fair scheduling and orthogonal linear precoding/decoding in broadcast MIMO systems R Bosisio, G Primolevo, O Simeone and U Spagnolini Dip di Elettronica e Informazione, Politecnico di Milano Pzza L da

More information

IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 52, NO. 2, FEBRUARY

IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 52, NO. 2, FEBRUARY IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL 52, NO 2, FEBRUARY 2004 461 Zero-Forcing Methods for Downlink Spatial Multiplexing in Multiuser MIMO Channels Quentin H Spencer, Student Member, IEEE, A Lee

More information

Hybrid ARQ Scheme with Antenna Permutation for MIMO Systems in Slow Fading Channels

Hybrid ARQ Scheme with Antenna Permutation for MIMO Systems in Slow Fading Channels Hybrid ARQ Scheme with Antenna Permutation for MIMO Systems in Slow Fading Channels Jianfeng Wang, Meizhen Tu, Kan Zheng, and Wenbo Wang School of Telecommunication Engineering, Beijing University of Posts

More information

IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 51, NO. 1, JANUARY

IEEE TRANSACTIONS ON INFORMATION THEORY, VOL. 51, NO. 1, JANUARY IEEE TRANSACTIONS ON INFORMATION THEORY, VOL 51, NO 1, JANUARY 2005 229 Full-Rate Full-Diversity Space Frequency Codes With Optimum Coding Advantage Weifeng Su, Member, IEEE, Zoltan Safar, Member, IEEE,

More information

What Is the Value of Limited Feedback for MIMO Channels?

What Is the Value of Limited Feedback for MIMO Channels? ADAPTIVE ANTENNAS AND MIMO SYSTEMS FOR WIRELESS COMMUNICATIONS What Is the Value of Limited Feedback for MIMO Channels? David J. Love, Purdue University Robert W. Heath Jr., University of Texas at Austin

More information

Lecture 8 Multi- User MIMO

Lecture 8 Multi- User MIMO Lecture 8 Multi- User MIMO I-Hsiang Wang ihwang@ntu.edu.tw 5/7, 014 Multi- User MIMO System So far we discussed how multiple antennas increase the capacity and reliability in point-to-point channels Question:

More information

A Robust Maximin Approach for MIMO Communications With Imperfect Channel State Information Based on Convex Optimization

A Robust Maximin Approach for MIMO Communications With Imperfect Channel State Information Based on Convex Optimization 346 IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 54, NO. 1, JANUARY 2006 A Robust Maximin Approach for MIMO Communications With Imperfect Channel State Information Based on Convex Optimization Antonio

More information

Efficient Relay Beamforming Design With SIC Detection for Dual-Hop MIMO Relay Networks

Efficient Relay Beamforming Design With SIC Detection for Dual-Hop MIMO Relay Networks 4192 IEEE TRANSACTIONS ON VEICULAR TECNOLOGY, VOL. 59, NO. 8, OCTOBER 2010 Efficient Relay Beamforming Design With SIC Detection for Dual-op MIMO Relay Networks Yu Zhang, anwen Luo, and Wen Chen, Member,

More information

Optimum Rate Allocation for Two-Class Services in CDMA Smart Antenna Systems

Optimum Rate Allocation for Two-Class Services in CDMA Smart Antenna Systems 810 IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 51, NO. 5, MAY 2003 Optimum Rate Allocation for Two-Class Services in CDMA Smart Antenna Systems Il-Min Kim, Member, IEEE, Hyung-Myung Kim, Senior Member,

More information

BER PERFORMANCE IMPROVEMENT USING MIMO TECHNIQUE OVER RAYLEIGH WIRELESS CHANNEL with DIFFERENT EQUALIZERS

BER PERFORMANCE IMPROVEMENT USING MIMO TECHNIQUE OVER RAYLEIGH WIRELESS CHANNEL with DIFFERENT EQUALIZERS BER PERFORMANCE IMPROVEMENT USING MIMO TECHNIQUE OVER RAYLEIGH WIRELESS CHANNEL with DIFFERENT EQUALIZERS Amit Kumar Sahu *, Sudhansu Sekhar Singh # * Kalam Institute of Technology, Berhampur, Odisha,

More information

Resource Allocation for OFDM and Multi-user. Li Wei, Chathuranga Weeraddana Centre for Wireless Communications

Resource Allocation for OFDM and Multi-user. Li Wei, Chathuranga Weeraddana Centre for Wireless Communications Resource Allocation for OFDM and Multi-user MIMO Broadcast Li Wei, Chathuranga Weeraddana Centre for Wireless Communications University of Oulu Outline Joint Channel and Power Allocation in OFDMA System

More information

Embedded Alamouti Space-Time Codes for High Rate and Low Decoding Complexity

Embedded Alamouti Space-Time Codes for High Rate and Low Decoding Complexity Embedded Alamouti Space-Time Codes for High Rate and Low Decoding Complexity Mohanned O. Sinnokrot, John R. Barry and Vijay K. Madisetti Georgia Institute of Technology, Atlanta, GA 30332 USA, {mohanned.sinnokrot@,

More information

Cooperative Orthogonal Space-Time-Frequency Block Codes over a MIMO-OFDM Frequency Selective Channel

Cooperative Orthogonal Space-Time-Frequency Block Codes over a MIMO-OFDM Frequency Selective Channel Cooperative Orthogonal Space-Time-Frequency Block Codes over a MIMO-OFDM Frequency Selective Channel M. Rezaei* and A. Falahati* (C.A.) Abstract: In this paper, a cooperative algorithm to improve the orthogonal

More information

BER Performance of CRC Coded LTE System for Various Modulation Schemes and Channel Conditions

BER Performance of CRC Coded LTE System for Various Modulation Schemes and Channel Conditions Scientific Research Journal (SCIRJ), Volume II, Issue V, May 2014 6 BER Performance of CRC Coded LTE System for Various Schemes and Conditions Md. Ashraful Islam ras5615@gmail.com Dipankar Das dipankar_ru@yahoo.com

More information

Design a Transmission Policies for Decode and Forward Relaying in a OFDM System

Design a Transmission Policies for Decode and Forward Relaying in a OFDM System Design a Transmission Policies for Decode and Forward Relaying in a OFDM System R.Krishnamoorthy 1, N.S. Pradeep 2, D.Kalaiselvan 3 1 Professor, Department of CSE, University College of Engineering, Tiruchirapalli,

More information

ELEC E7210: Communication Theory. Lecture 11: MIMO Systems and Space-time Communications

ELEC E7210: Communication Theory. Lecture 11: MIMO Systems and Space-time Communications ELEC E7210: Communication Theory Lecture 11: MIMO Systems and Space-time Communications Overview of the last lecture MIMO systems -parallel decomposition; - beamforming; - MIMO channel capacity MIMO Key

More information

On the Trade-Off Between Transmit and Leakage Power for Rate Optimal MIMO Precoding

On the Trade-Off Between Transmit and Leakage Power for Rate Optimal MIMO Precoding On the Trade-Off Between Transmit and Leakage Power for Rate Optimal MIMO Precoding Tim Rüegg, Aditya U.T. Amah, Armin Wittneben Swiss Federal Institute of Technology (ETH) Zurich, Communication Technology

More information

Interference Mitigation via Scheduling for the MIMO Broadcast Channel with Limited Feedback

Interference Mitigation via Scheduling for the MIMO Broadcast Channel with Limited Feedback Interference Mitigation via Scheduling for the MIMO Broadcast Channel with Limited Feedback Tae Hyun Kim The Department of Electrical and Computer Engineering The University of Illinois at Urbana-Champaign,

More information

Degrees of Freedom in Multiuser MIMO

Degrees of Freedom in Multiuser MIMO Degrees of Freedom in Multiuser MIMO Syed A Jafar Electrical Engineering and Computer Science University of California Irvine, California, 92697-2625 Email: syed@eceuciedu Maralle J Fakhereddin Department

More information

Lecture 5: Antenna Diversity and MIMO Capacity Theoretical Foundations of Wireless Communications 1

Lecture 5: Antenna Diversity and MIMO Capacity Theoretical Foundations of Wireless Communications 1 Antenna, Antenna : Antenna and Theoretical Foundations of Wireless Communications 1 Friday, April 27, 2018 9:30-12:00, Kansliet plan 3 1 Textbook: D. Tse and P. Viswanath, Fundamentals of Wireless Communication

More information

A New Method of Channel Feedback Quantization for High Data Rate MIMO Systems

A New Method of Channel Feedback Quantization for High Data Rate MIMO Systems A New Method of Channel eedback Quantization for High Data Rate MIMO Systems Mehdi Ansari Sadrabadi, Amir K. Khandani and arshad Lahouti Coding & Signal Transmission Laboratorywww.cst.uwaterloo.ca) Dept.

More information