Modulation Classification based on Modified Kolmogorov-Smirnov Test

Size: px
Start display at page:

Download "Modulation Classification based on Modified Kolmogorov-Smirnov Test"

Transcription

1 Modulation Classification based on Modified Kolmogorov-Smirnov Test Ali Waqar Azim, Syed Safwan Khalid, Shafayat Abrar ENSIMAG, Institut Polytechnique de Grenoble, 38406, Grenoble, France Electrical Engineering Department, COMSATS Institute of Information Technology Islamabad, 44000, Pakistan {aliwaqarazim, safwan khalid, Abstract A modulation classification method based on modified Kolmogorov-Smirnov (K-S) test is proposed. Unlike modulation classification based on K-S test, the proposed method evaluates the sum of the difference between the empirical distribution obtained from the features extracted from received signals and the hypothesized distribution for each modulation candidate in pool. The results have been evaluated using Quadrature Amplitude Modulation (QAM) for AWGN channel using Monte Carlo simulations. Extensive simulation results demonstrate that the proposed modulation classification method based on modified K-S test offers superior performance as compared to the method based on K-S test. I. INTRODUCTION Modulation Classification is a signal processing technique used to detect the modulation type of a received signal that has been corrupted by noise and other possible interferences. Once the modulation type is correctly identified, other operations, such as signal demodulation and information extraction, can be subsequently performed. The identification of the modulation type becomes a challenging task in the absence of a priori knowledge of the transmitted signal. Moreover the presence of a time-varying, frequency selective multi-path environment can further complicate the problem of identification []. Modulation classification plays a key role in many applications which include civilian applications such as network traffic administration, intelligent modems, software defined radio, frequency spectrum monitoring and management, interference identification etc., and military applications such as electronic surveillance, electronic warfare and threat analysis [, 2]. Modulation classification techniques can be divided into two broad categories; likelihood-based methods and the feature-based methods [, 3]. Likelihood-based methods are based on computing the likelihood ratio of the received signals for each modulation class and then comparing the ratio against a certain threshold for decision making. Generally the likelihood-based methods are based on Generalized Likelihood Ratio Test (GLRT), Average Likelihood Ratio Test (ALRT) [4] and Maximum Likelihood (ML) criterion etc. Solutions obtained by likelihood-based methods provide an optimal solution i.e. they provide minimum probability of false classification and maximum probability of correct classification []. However, these methods suffer from computational complexity and their performance degrades drastically in the presence of various channel impairments [4]. On the other hand, in the feature-based methods, the classifiers make decisions based on several features extracted from the received signals. The methods based on featurebased approach are computationally less intense and easy to implement, however on the negative side, the classification performance methods based on feature based approach are suboptimal [, 4]. The features used by feature-based methods can be instantaneous time domain features such as constellation shape, zero-crossing, instantaneous amplitude, phase or frequency, transform based features such as Fourier transform, wavelet transform and statistical features such as higher-order statistics and cyclostationarity. In this paper, we propose a modulation classification method based on modified version of Kolmogorov-Smirnov (K-S) Goodness of Fit (GoF) test. The GoF tests or statistical methods based on empirical distribution measure the compatibility of a random sample with a hypothesized distribution. In order to perform modulation classification using modified K-S test the empirical cumulative distribution of a certain feature (i.e. phase, magnitude etc.) of the received signal is computed using N samples. It is then compared with the hypothesized distribution of each candidate modulation scheme. The decision is made in favor of the candidate scheme which provides the minimum of sum of distances between the hypothesized distribution and the empirical distribution, whereas, the classifier proposed by Wang et al. in [4] and the one presented in [5] takes decision in favor of modulation candidate which gives minimum of maximum distance between the hypothesized distribution and empirical distribution. Through extensive simulations we proved that the proposed modulation classification method based on modified K-S test outperforms modulation classification method based on K-S test proposed in [4] and [5]. The remainder of the paper is organized as follows. General system model and a brief overview of GoF testing is provided in Section II. Section III provides an overview on classification of QAM signals, the section further explains the types of classifiers that can be opted for classification of QAM signals. An overview of modulation classification method based on K-S test is presented in Section IV. Section V explains the proposed modulation classification method along with formulations. Simulation results and comparison is provided in Section VI. Finally, based on the results obtained in Section VI, conclusions are drawn in Section VII.

2 II. SYSTEM MODEL AND GOODNESS OF FIT TESTING A. System Model Following [4], in our system model we consider a discrete time additive white Gaussian noise (AWGN) channel. The observed symbols at the receiver are represented as: y n = x n +w n n =,, N () where n represents the total number of observations made at the receiver, x n represents the complex-valued transmitted symbol at time n, y n represents complex-valued received signal corrupted by complex noise w n at time n. It is further assumed that the noise samples are independent and identically distributed (i.i.d) and follow complex Gaussian distribution CN(0,σ 2 ); i.e. the real and imaginary components of w n are independent and have same Gaussian distribution N(0, σ2 2 ). It is considered that the complex-valued i.i.d transmitted symbols {x n } N n= are drawn from an unknown constellation set M {M,M 2,,M k }. The problem of modulation classification is to determine the constellation M k of the transmitted signal among all possible candidate constellations based on received symbols {y n } N n=. B. Goodness of Fit Testing The GoF testing is a statistical testing process to determine the distribution of data. GoF tests are used to determine how well a selected distribution fits to a given data. The test statistic for GoF tests can be applied to certain sequence of features {z n } N n= extracted from received signal samples {y n} N n=, which can be magnitude, phase etc. In order to compute the empirical distribution, consider {z n } N n= containing N samples of a feature of the received signal organized in order. Let F(z) denote the empirical distribution obtained from the sequence of features extracted from received symbols. F(z) can be represented as: F(z) = {n : z n z, n N} N where for any set U, U denotes the cardinality of U. The above equation can also be written as: F(z) N I (zn z) (2) n= where I (.) is the indicator function, which equals to one if the input is true and equals to zero otherwise. Lets consider that hypothesized distribution is represented as S k (z). Now we define modulation classification problem as a hypothesis testing problem with a null hypothesis H 0, and the general alternative hypothesis H i.e. H 0 : H : F(z) = S k (z) F(z) S k (z) The intuitive understanding of the hypothesis H 0 is that {z n } N n= is an i.i.d sequence generated by the hypothesized distribution function F(z) against alternative H which states that {z n } N n= is not an i.i.d sequence generated by the hypothesized distribution function F(z). Under the null hypothesis, F(z) will be close to S k (z) when N is large enough. Different goodness of fit tests and their modifications have been proposed in mathematical statistics based on the definition of distances between the two distributions F(z) and S k (z). The distance between the two distributions indicates the fit between the empirical distribution and the hypothesized distribution. Extensively used goodness of fit tests include Kolmogorov-Smirnov (K-S) test, Cramér Von Mises (CVM) test and Anderson-Darling (AD) test. For the scope of this paper we will focus our attention on just K-S test. III. CLASSIFICATION OF QAM SIGNALS We considered that the problem of modulation classification is to distinguish between quadrature amplitude modulation (QAM) signals with 4-QAM, 6-QAM and 64-QAM signals in a pool as possible modulation candidates. Without loss of generality, we considered constellations with unit variance obtained by normalizing the signal constellations. The constellation points for modulation candidates are given by M 4 QAM = { 2 (a + bj) a,b =,}, M 6 QAM = { 0 (a + bj) a,b = 3,,,3} and M 64 QAM = { 42 (a+bj) a,b = 7, 5, 3,,,3,5,7}, where j =. There can be number of possible ways to extract a sequence of signal features {z n } N n= which can be used directly for modulation classification. The ones presented in [4] are discussed below: A. Magnitude based Classifier In magnitude based classifier, the sequence of signal features {z n } N n= is obtained by taking the magnitude of the received signals {y n } N n=. z n = y n = (R{y n }) 2 +(I{y n }) 2 n =,, N (3) The empirical distribution of z = x + w, where w CN(0,σ 2 ) is given by ( 2 x F(z) = Q σ, 2z ) z R + (4) σ where Q(a, b) is the Marcum Q-function. Now considering all the signal points in constellation as equiprobable, the hypothesized distribution of z n = y n under modulation candidate M k is given by [4]: S k (z) = M k x M k Q z R +, k =,,K ( 2 x σ, 2z ) σ where K is the total number of modulation candidates in pool. B. Phase based Classifier Another possible classifier for QAM signals is phase based classifier. The phase of QAM signals also contains information about the type of modulation of the received signals, thus we can use the phase of the received signals as a feature to compute the decision statistic. Mathematically phase of the received signals is evaluated as: z n = (y n ) = tan ( I{yn } R{y n } ) (5) n =,, N (6)

3 C. Quadrature based classifier In square QAM, the real and imaginary parts are of a distortion free constellation are independent and identically distributed. Similarly, the real and imaginary parts of complexvalued noise w n are also independent of each other. So it is feasible to use both the in-phase and quadrature components of the received signal simultaneously, as features to calculate the decision statistic. As discussed in [4], we can form a sequence of 2N samples for decision statistic form N received signal samples. Mathematically, this can be represented as: z 2n = R{y n }, z 2n = I{y n }, n =,,N (7) As the real and imaginary components of are independent and have same Gaussian distribution, we can say that z n N(0, σ2 2 ). Thus the hypothesized distribution for each modulation candidate M k can be evaluated as: ( ) 2(z x) S k (z) = Q g (8) Mk σ x R{M k } z R +, k =,,K where K is the total number of modulation candidates, Q g (a) is Gaussian Q function and R{M k } represents the set of real components of signal points in modulation candidate M k. In this work we have employed the magnitude based classifier during our simulations. IV. K-S TEST BASED MODULATION CLASSIFICATION Wang et al. in [4] proposed a modulation classification method based on K-S test, the same results were also reproduced in [5]. In modulation classification method based on K-S test, the distance between the hypothesized distribution S k (z) for each modulation candidate M k and the empirical distribution F(z) of i.i.d data samples {z n } N n= is computed and the modulation type of the candidate which gives the minimum distance obtained by the maximum difference between the hypothesized distribution and the empirical distribution is selected form the pool of candidates as the modulation of the received signals. In order to perform modulation classification using K-S test, firstly a sequence of features {z n } N n= is obtained from the received signals {y n } N n= using any of the classifier described in previous section, however in our case we used the magnitude based classifier. Secondly, the empirical distribution is evaluated from the received data samples using the following equation: F(z) N I (zn z) (9) n= where I (.) is the indicator function. Thirdly, for each modulation candidate M k we obtain the hypothesized distribution Ŝ k (z). The test statistic for K-S test which computes the maximum difference between the two distribution is given as: D sup F(z) S k (z) (0) z R where sup is the supremum of the set of distances, and D is the distance obtained. When the hypothesized distribution S k is not available, the hypothesized distribution Ŝk is obtained by an i.i.d sequence {ξ n } N0 n= drawn from S k. Mathematically this can be represented as: Ŝ k (ξ) N 0 I (ξn ξ) () N 0 n= So, practically the following test statistic for K-S test is computed: D = max F(z) Ŝk(z) (2) n N The decision is made in favor of that modulation candidate that provides the minimum distance D among all the candidates is the pool. Thus the decision rule of modulation detection based on K-S test is following: K = arg min D k (3) n N where D k denotes the distance evaluated for each modulation candidate M k. In [4, 5], the authors also associate a significance level α k = P(D > D k M k) with each K-S statistic D k. The significance level can be evaluated using the following equation: ([ ] ) N α = P(D > D 0. ) = Q D N with Q(x) 2 ( ) m e 2m2 x 2 m= (4) K-S test is used to test the null hypothesis i.e. H 0 : F(z) = S k (z), it is important to note that the null hypothesis is rejected if at a significance level α if α = P(D > D ) < α. V. PROPOSED MODULATION CLASSIFICATION BASED ON MODIFIED K-S TEST The test statistic for proposed modulation classification method is presented in [6]. Proposed method is similar to K-S based method in a sense that it also computes the distance between the hypothesized distribution S k (z) for each modulation candidate M k and the empirical distribution F(z) obtained through a sequence of i.i.d data samples {z n } N n=. However, unlike the modulation classification method based on K-S test which take decision in favor of the modulation candidate M k which gives the minimum distance obtained by the maximum difference of hypothesized distribution S k (z) and the empirical distribution F(z), the proposed modulation classification method takes decision in favor of the modulation candidate M k which gives the minimum distance obtained through sum of the difference obtained through the hypothesized distribution S k (z) and empirical distribution F(z). To perform modulation classification using proposed method, we first compute a sequence of features{z n } N n= from the received signals {y n } N n= using magnitude based classifier. Afterwards,we evaluate the empirical distribution F(z) using eq. (9) and Ŝk(z) for each modulation candidate M k. The proposed test statistic is given as: D M F(z) S k (z) (5)

4 Similar to the case with K-S test, the hypothesized distribution Ŝk for the proposed modified K-S test is obtained by eq. (). So, practically the following test statistic is computed: D M = F(z) Ŝk(z) (6) Finally, the decision is made in favor of that modulation candidate M k in the modulation pool M = {M 4 QAM,M 6 QAM,M 64 QAM } according to the following decision rule: K M = arg min D M k (7) n N where D M k denotes the distance evaluated for each modulation candidate M k using the proposed modulation classification scheme. VI. SIMULATION RESULTS AND DISCUSSION In this section, two sets of simulation results obtained through Monte Carlo simulations have been provided to compare the performance of proposed modulation classification method and K-S based modulation classification in AWGN channel, with noise as w n CN(0,σ 2 ). We assume that the classification task is to distinguish between M-QAM, where M = {M 4 QAM,M 6 QAM,M 64 QAM }. Here we define Signal to Noise Ratio (SNR) in decibels as SNR = 0log 0 ( Es /σ 2), where, E s is the signal power and σ 2 is the noise power. In first set of experiments we assumed a fixed sample size of N = 00 for our simulations, classification performance of the proposed classification method is compared with classification performance of K-S based method for an SNR range of 5 db to 20 db. In the second set of experiments, we evaluate the performance of both proposed classification method and K-S based classification method for different sample sizes N. The upper and lower bound for sample sizes in this case is assumed to be N = 00 and N = 000 respectively. A. Classification performance vs SNR In Fig., we have shown the classification performance of detecting M 4 QAM among the pool of available modulation candidates M = {M 4 QAM,M 6 QAM,M 64 QAM }. It is observed that the performance of the proposed modulation classification method is throughout superior to K-S test based modulation classification for the whole SNR range. The probability of correct classification for K-S test based modulation classification method in case of 4-QAM at 0 db is approximately while the probability of correct classification for the proposed classification method is approximately 4. Moreover, the classification performance of both K-S based method and the proposed method in case of M 4 QAM monotonically increase with increase in SNR. Similarly, while detecting M 6 QAM from the pool of modulation candidates, the classification performance of the proposed method outperforms the performance of K-S based method for complete SNR range as shown in Fig. 2. A similar trend i.e. the classification performance monotonically increases with increase in SNR is observed as well. In case of 6-QAM, the maximum achieved value of correct classification for K-S based method is approximately 857 while that of the proposed method maximum value of correct classification achieved is unity, whereas for 4- QAM, the maximum value of correct classification i.e. for the proposed method is achieved at 9 db. Fig. 3 provides us with a comparison of classification performance of both methods for classification of 64-QAM among the pool of modulation candidates. The classification of proposed method is better than that of K-S test based classification method for whole SNR range and a increasing trend in classification performance with increase in SNR exists for both classification methods. B. Classification performance vs Sample Size The results of classification performance of proposed classification method as compared with K-S test based classification method as a function of sample size and is presented in Fig. 4. It is evident from the results that the performance of proposed classification method is superior to K-S test based classification method for all sample sizes i.e. 00 N 000. It is also important to note that the classification performance of both methods monotonically increases with increase in sample size N. For sample size N = 00, the probability of correct classification for K-S test based modulation classification is 25 while that of the proposed modulation classification method, probability of correct classification is 9. Also, the probability of correct classification of proposed classification method for N = 000 is approximately 5 as compared of the probability of correct classification for K-S based modulation classification is about. It is also evident that classification performance of proposed method is better than the classification performance of K-S test based modulation classification method for all sample size analyzed. The modulation scheme adopted for second set of experiments is 4-QAM. C. Analysis of proposed classification method It is important to note that the classification performance of proposed method is superior as compared to K-S test based method because the proposed method does not compute the distance based on the maximum difference between the empirical cumulative distribution function F(z) and the hypothesized distribution S k (z) for each modulation candidate M k, rather it evaluates the sum of the differences between the two distribution functions. By doing so, each data sample contributes towards computing the distance between the hypothesized distribution and empirical distribution, which virtually increases the data samples for computing the decision statistic using (7). VII. CONCLUSION In this paper, we have presented a modulation classification method based on modified Kolmogorov-Smirnov (K-S) test for QAM modulations with 4-QAM, 6-QAM and 64-QAM as candidate modulation schemes. The proposed method exploits the distance properties between the empirical distribution function obtained from the features extracted from received signals and the hypothesized distribution function for each modulation candidate in the pool. We propose to use the sum of difference between the two distributions rather than using the maximum of difference between the distributions as in case of modulation classification based on K-S test. Compared with modulation classification method based on K-S test, the proposed method

5 Proposed 0.3 Proposed Fig.. Performance comparison of detecting M 4 QAM among modulation candidates M k = {M 4 QAM,M 6 QAM,M 64 QAM } with N = 00. Fig. 3. Performance comparison of detecting M 64 QAM among modulation candidates M k = {M 4 QAM,M 6 QAM,M 64 QAM } with N = Proposed Proposed Sample Size Fig. 2. Performance comparison of detecting of M 6 QAM among modulation candidates M k = {M 4 QAM,M 6 QAM,M 64 QAM } with N = 00. has a superior performance for classification of all candidate modulation schemes. It is also evident from the results that the classification performance increases with increase in number of samples. Fig. 4. Effect of varying sample size on the probability of classification with SNR = 2dB. [5] F. Wang, R. Xu, and Z. Zhong, Low complexity Kolmogorov-Smirnov modulation classification, IEEE Wireless Communications and Networking Conference (WCNC), 20, pp , Mar. 20. [6] J. R. Green and Y. A. S. Hegazy, Powerful Modified-EDF Goodnessof-Fit Tests, Journal of the American Statistical Association, vol. 7, no. 353,, pp , Mar REFERENCES [] O. A. Dobre, A. Abdi, Y. Bar-Ness, and W. Su, Survey of automatic modulation classification techniques: classical approaches and new trends, IET Commun., vol., no. 2, pp. 3756, Apr [2] M. Zaerin and B. Seyfe, Multiuser modulation classification based on cumulants in additive white Gaussian noise channel, IET Signal Processing, vol. 6, no. 9, pp , Dec [3] H.C. Wu, M. Saquib, and Z. Yun, Novel automatic modulation classification using cumulant features for communications via multipath channels, IEEE. Trans. Wireless Commun., vol. 7, no. 8, pp , [4] F. Wang and X. Wang, Fast and robust modulation classification via Kolmogorov-Smirnov test, IEEE Trans. Wireless Commun., vol. 58, no. 8, pp , Aug. 200.

Low Complexity Kolmogorov-Smirnov Modulation Classification

Low Complexity Kolmogorov-Smirnov Modulation Classification Low Complexity Kolmogorov-Smirnov Modulation Classification Fanggang Wang, Rongtao Xu, Zhangdui Zhong Institute of Network Coding, CUHK State Key Laboratory of Rail Traffic Control and Safety, BJTU Email:

More information

Higher Order Cummulants based Digital Modulation Recognition Scheme

Higher Order Cummulants based Digital Modulation Recognition Scheme Research Journal of Applied Sciences, Engineering and Technology 6(20): 3910-3915, 2013 ISSN: 2040-7459; e-issn: 2040-7467 Maxwell Scientific Organization, 2013 Submitted: April 04, 2013 Accepted: April

More information

Online Large Margin Semi-supervised Algorithm for Automatic Classification of Digital Modulations

Online Large Margin Semi-supervised Algorithm for Automatic Classification of Digital Modulations Online Large Margin Semi-supervised Algorithm for Automatic Classification of Digital Modulations Hamidreza Hosseinzadeh*, Farbod Razzazi**, and Afrooz Haghbin*** Department of Electrical and Computer

More information

The fundamentals of detection theory

The fundamentals of detection theory Advanced Signal Processing: The fundamentals of detection theory Side 1 of 18 Index of contents: Advanced Signal Processing: The fundamentals of detection theory... 3 1 Problem Statements... 3 2 Detection

More information

DESIGN AND IMPLEMENTATION OF AN ALGORITHM FOR MODULATION IDENTIFICATION OF ANALOG AND DIGITAL SIGNALS

DESIGN AND IMPLEMENTATION OF AN ALGORITHM FOR MODULATION IDENTIFICATION OF ANALOG AND DIGITAL SIGNALS DESIGN AND IMPLEMENTATION OF AN ALGORITHM FOR MODULATION IDENTIFICATION OF ANALOG AND DIGITAL SIGNALS John Yong Jia Chen (Department of Electrical Engineering, San José State University, San José, California,

More information

Angle Differential Modulation Scheme for Odd-bit QAM

Angle Differential Modulation Scheme for Odd-bit QAM Angle Differential Modulation Scheme for Odd-bit QAM Syed Safwan Khalid and Shafayat Abrar {safwan khalid,sabrar}@comsats.edu.pk Department of Electrical Engineering, COMSATS Institute of Information Technology,

More information

Digital Modulation Recognition Based on Feature, Spectrum and Phase Analysis and its Testing with Disturbed Signals

Digital Modulation Recognition Based on Feature, Spectrum and Phase Analysis and its Testing with Disturbed Signals Digital Modulation Recognition Based on Feature, Spectrum and Phase Analysis and its Testing with Disturbed Signals A. KUBANKOVA AND D. KUBANEK Department of Telecommunications Brno University of Technology

More information

Identification of GSM and LTE Signals Using Their Second-order Cyclostationarity

Identification of GSM and LTE Signals Using Their Second-order Cyclostationarity Identification of GSM and LTE Signals Using Their Second-order Cyclostationarity Ebrahim Karami, Octavia A. Dobre, and Nikhil Adnani Electrical and Computer Engineering, Memorial University, Canada email:

More information

Probability of Error Calculation of OFDM Systems With Frequency Offset

Probability of Error Calculation of OFDM Systems With Frequency Offset 1884 IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 49, NO. 11, NOVEMBER 2001 Probability of Error Calculation of OFDM Systems With Frequency Offset K. Sathananthan and C. Tellambura Abstract Orthogonal frequency-division

More information

Carrier Frequency Offset Estimation Algorithm in the Presence of I/Q Imbalance in OFDM Systems

Carrier Frequency Offset Estimation Algorithm in the Presence of I/Q Imbalance in OFDM Systems Carrier Frequency Offset Estimation Algorithm in the Presence of I/Q Imbalance in OFDM Systems K. Jagan Mohan, K. Suresh & J. Durga Rao Dept. of E.C.E, Chaitanya Engineering College, Vishakapatnam, India

More information

CHAPTER 3 ADAPTIVE MODULATION TECHNIQUE WITH CFO CORRECTION FOR OFDM SYSTEMS

CHAPTER 3 ADAPTIVE MODULATION TECHNIQUE WITH CFO CORRECTION FOR OFDM SYSTEMS 44 CHAPTER 3 ADAPTIVE MODULATION TECHNIQUE WITH CFO CORRECTION FOR OFDM SYSTEMS 3.1 INTRODUCTION A unique feature of the OFDM communication scheme is that, due to the IFFT at the transmitter and the FFT

More information

Combined Transmitter Diversity and Multi-Level Modulation Techniques

Combined Transmitter Diversity and Multi-Level Modulation Techniques SETIT 2005 3rd International Conference: Sciences of Electronic, Technologies of Information and Telecommunications March 27 3, 2005 TUNISIA Combined Transmitter Diversity and Multi-Level Modulation Techniques

More information

A JOINT MODULATION IDENTIFICATION AND FREQUENCY OFFSET CORRECTION ALGORITHM FOR QAM SYSTEMS

A JOINT MODULATION IDENTIFICATION AND FREQUENCY OFFSET CORRECTION ALGORITHM FOR QAM SYSTEMS A JOINT MODULATION IDENTIFICATION AND FREQUENCY OFFSET CORRECTION ALGORITHM FOR QAM SYSTEMS Evren Terzi, Hasan B. Celebi, and Huseyin Arslan Department of Electrical Engineering, University of South Florida

More information

MOTIVATED by the rapid progress of solid state lighting

MOTIVATED by the rapid progress of solid state lighting Brightness Control in Dynamic Range Constrained Visible Light OFDM Systems Zhenhua Yu, Student Member, IEEE, Robert J Baxley, Member, IEEE, and G Tong Zhou, Fellow, IEEE arxiv:3493v [csit] 6 Jan 4 Abstract

More information

Novel Automatic Modulation Classification using Correntropy Coefficient

Novel Automatic Modulation Classification using Correntropy Coefficient Novel Automatic Modulation Classification using Correntropy Coefficient Aluisio I. R. Fontes, Lucas C. P. Cavalcante and Luiz F. Q. Silveira Abstract This paper deals with automatic modulation classification

More information

Design and Analysis of New Digital Modulation classification method

Design and Analysis of New Digital Modulation classification method Design and Analysis of New Digital Modulation classification method ANNA KUBANKOVA Department of Telecommunications Brno University of Technology Purkynova 118, 612 00 Brno CZECH REPUBLIC shklya@feec.vutbr.cz

More information

A Soft-Limiting Receiver Structure for Time-Hopping UWB in Multiple Access Interference

A Soft-Limiting Receiver Structure for Time-Hopping UWB in Multiple Access Interference 2006 IEEE Ninth International Symposium on Spread Spectrum Techniques and Applications A Soft-Limiting Receiver Structure for Time-Hopping UWB in Multiple Access Interference Norman C. Beaulieu, Fellow,

More information

A hybrid phase-based single frequency estimator

A hybrid phase-based single frequency estimator Loughborough University Institutional Repository A hybrid phase-based single frequency estimator This item was submitted to Loughborough University's Institutional Repository by the/an author. Citation:

More information

A NOVEL FREQUENCY-MODULATED DIFFERENTIAL CHAOS SHIFT KEYING MODULATION SCHEME BASED ON PHASE SEPARATION

A NOVEL FREQUENCY-MODULATED DIFFERENTIAL CHAOS SHIFT KEYING MODULATION SCHEME BASED ON PHASE SEPARATION Journal of Applied Analysis and Computation Volume 5, Number 2, May 2015, 189 196 Website:http://jaac-online.com/ doi:10.11948/2015017 A NOVEL FREQUENCY-MODULATED DIFFERENTIAL CHAOS SHIFT KEYING MODULATION

More information

A Novel Technique for Automatic Modulation Classification and Time-Frequency Analysis of Digitally Modulated Signals

A Novel Technique for Automatic Modulation Classification and Time-Frequency Analysis of Digitally Modulated Signals Vol. 6, No., April, 013 A Novel Technique for Automatic Modulation Classification and Time-Frequency Analysis of Digitally Modulated Signals M. V. Subbarao, N. S. Khasim, T. Jagadeesh, M. H. H. Sastry

More information

Performance Analysis of Impulsive Noise Blanking for Multi-Carrier PLC Systems

Performance Analysis of Impulsive Noise Blanking for Multi-Carrier PLC Systems This article has been accepted and published on J-STAGE in advance of copyediting. Content is final as presented. Performance Analysis of mpulsive Noise Blanking for Multi-Carrier PLC Systems Tomoya Kageyama

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

Local Oscillators Phase Noise Cancellation Methods

Local Oscillators Phase Noise Cancellation Methods IOSR Journal of Electronics and Communication Engineering (IOSR-JECE) e-issn: 2278-2834, p- ISSN: 2278-8735. Volume 5, Issue 1 (Jan. - Feb. 2013), PP 19-24 Local Oscillators Phase Noise Cancellation Methods

More information

Ricean Parameter Estimation Using Phase Information in Low SNR Environments

Ricean Parameter Estimation Using Phase Information in Low SNR Environments Ricean Parameter Estimation Using Phase Information in Low SNR Environments Andrew N. Morabito, Student Member, IEEE, Donald B. Percival, John D. Sahr, Senior Member, IEEE, Zac M.P. Berkowitz, and Laura

More information

OFDM Transmission Corrupted by Impulsive Noise

OFDM Transmission Corrupted by Impulsive Noise OFDM Transmission Corrupted by Impulsive Noise Jiirgen Haring, Han Vinck University of Essen Institute for Experimental Mathematics Ellernstr. 29 45326 Essen, Germany,. e-mail: haering@exp-math.uni-essen.de

More information

Department of Electronic Engineering FINAL YEAR PROJECT REPORT

Department of Electronic Engineering FINAL YEAR PROJECT REPORT Department of Electronic Engineering FINAL YEAR PROJECT REPORT BEngECE-2009/10-- Student Name: CHEUNG Yik Juen Student ID: Supervisor: Prof.

More information

Fourier Transform Time Interleaving in OFDM Modulation

Fourier Transform Time Interleaving in OFDM Modulation 2006 IEEE Ninth International Symposium on Spread Spectrum Techniques and Applications Fourier Transform Time Interleaving in OFDM Modulation Guido Stolfi and Luiz A. Baccalá Escola Politécnica - University

More information

Optimal Detector for Discrete Transmit Signals in Gaussian Interference Channels

Optimal Detector for Discrete Transmit Signals in Gaussian Interference Channels Optimal Detector for Discrete Transmit Signals in Gaussian Interference Channels Jungwon Lee Wireless Systems Research Marvell Semiconductor, Inc. 5488 Marvell Ln Santa Clara, CA 95054 Email: jungwon@stanfordalumni.org

More information

CORRELATION BASED SNR ESTIMATION IN OFDM SYSTEM

CORRELATION BASED SNR ESTIMATION IN OFDM SYSTEM CORRELATION BASED SNR ESTIMATION IN OFDM SYSTEM Suneetha Kokkirigadda 1 & Asst.Prof.K.Vasu Babu 2 1.ECE, Vasireddy Venkatadri Institute of Technology,Namburu,A.P,India 2.ECE, Vasireddy Venkatadri Institute

More information

Dynamic Subcarrier, Bit and Power Allocation in OFDMA-Based Relay Networks

Dynamic Subcarrier, Bit and Power Allocation in OFDMA-Based Relay Networks Dynamic Subcarrier, Bit and Power Allocation in OFDMA-Based Relay Networs Christian Müller*, Anja Klein*, Fran Wegner**, Martin Kuipers**, Bernhard Raaf** *Communications Engineering Lab, Technische Universität

More information

Lab 3.0. Pulse Shaping and Rayleigh Channel. Faculty of Information Engineering & Technology. The Communications Department

Lab 3.0. Pulse Shaping and Rayleigh Channel. Faculty of Information Engineering & Technology. The Communications Department Faculty of Information Engineering & Technology The Communications Department Course: Advanced Communication Lab [COMM 1005] Lab 3.0 Pulse Shaping and Rayleigh Channel 1 TABLE OF CONTENTS 2 Summary...

More information

Nonlinear Companding Transform Algorithm for Suppression of PAPR in OFDM Systems

Nonlinear Companding Transform Algorithm for Suppression of PAPR in OFDM Systems Nonlinear Companding Transform Algorithm for Suppression of PAPR in OFDM Systems P. Guru Vamsikrishna Reddy 1, Dr. C. Subhas 2 1 Student, Department of ECE, Sree Vidyanikethan Engineering College, Andhra

More information

Automatic Modulation Recognition in Cognitive Radio Receivers using Multi-Order Cumulants and Decision Trees

Automatic Modulation Recognition in Cognitive Radio Receivers using Multi-Order Cumulants and Decision Trees Automatic odulation Recognition in Cognitive Radio Receivers using ulti-order Cumulants and Decision Trees.Venkata Subbarao, P.Samundiswary Abstract: Design of intelligent receiver is a major footstep

More information

SPLIT MLSE ADAPTIVE EQUALIZATION IN SEVERELY FADED RAYLEIGH MIMO CHANNELS

SPLIT MLSE ADAPTIVE EQUALIZATION IN SEVERELY FADED RAYLEIGH MIMO CHANNELS SPLIT MLSE ADAPTIVE EQUALIZATION IN SEVERELY FADED RAYLEIGH MIMO CHANNELS RASHMI SABNUAM GUPTA 1 & KANDARPA KUMAR SARMA 2 1 Department of Electronics and Communication Engineering, Tezpur University-784028,

More information

NAVAL POSTGRADUATE SCHOOL THESIS

NAVAL POSTGRADUATE SCHOOL THESIS NAVAL POSTGRADUATE SCHOOL MONTEREY, CALIFORNIA THESIS SIGNAL DETECTION AND FRAME SYNCHRONIZATION OF MULTIPLE WIRELESS NETWORKING WAVEFORMS by Keith C. Howland September 2007 Thesis Advisor: Co-Advisor:

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

Performance of Combined Error Correction and Error Detection for very Short Block Length Codes

Performance of Combined Error Correction and Error Detection for very Short Block Length Codes Performance of Combined Error Correction and Error Detection for very Short Block Length Codes Matthias Breuninger and Joachim Speidel Institute of Telecommunications, University of Stuttgart Pfaffenwaldring

More information

Effect of Time Bandwidth Product on Cooperative Communication

Effect of Time Bandwidth Product on Cooperative Communication Surendra Kumar Singh & Rekha Gupta Department of Electronics and communication Engineering, MITS Gwalior E-mail : surendra886@gmail.com, rekha652003@yahoo.com Abstract Cognitive radios are proposed to

More information

Spectrum Sensing Using Bayesian Method for Maximum Spectrum Utilization in Cognitive Radio

Spectrum Sensing Using Bayesian Method for Maximum Spectrum Utilization in Cognitive Radio 5 Spectrum Sensing Using Bayesian Method for Maximum Spectrum Utilization in Cognitive Radio Anurama Karumanchi, Mohan Kumar Badampudi 2 Research Scholar, 2 Assoc. Professor, Dept. of ECE, Malla Reddy

More information

ON FEATURE BASED AUTOMATIC CLASSIFICATION OF SINGLE AND MULTITONE SIGNALS

ON FEATURE BASED AUTOMATIC CLASSIFICATION OF SINGLE AND MULTITONE SIGNALS ON FEATURE BASED AUTOMATIC CLASSIFICATION OF SINGLE AND MULTITONE SIGNALS Arindam K. Das, Payman Arabshahi, Tim Wen Applied Physics Laboratory University of Washington, Box 355640, Seattle, WA 9895, USA.

More information

A Novel Technique or Blind Bandwidth Estimation of the Radio Communication Signal

A Novel Technique or Blind Bandwidth Estimation of the Radio Communication Signal International Journal of ISSN 0974-2107 Systems and Technologies IJST Vol.3, No.1, pp 11-16 KLEF 2010 A Novel Technique or Blind Bandwidth Estimation of the Radio Communication Signal Gaurav Lohiya 1,

More information

Performance Analysis of Cognitive Radio based on Cooperative Spectrum Sensing

Performance Analysis of Cognitive Radio based on Cooperative Spectrum Sensing Performance Analysis of Cognitive Radio based on Cooperative Spectrum Sensing Sai kiran pudi 1, T. Syama Sundara 2, Dr. Nimmagadda Padmaja 3 Department of Electronics and Communication Engineering, Sree

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

MIMO Receiver Design in Impulsive Noise

MIMO Receiver Design in Impulsive Noise COPYRIGHT c 007. ALL RIGHTS RESERVED. 1 MIMO Receiver Design in Impulsive Noise Aditya Chopra and Kapil Gulati Final Project Report Advanced Space Time Communications Prof. Robert Heath December 7 th,

More information

ADAPTIVE channel equalization without a training

ADAPTIVE channel equalization without a training IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 53, NO. 9, SEPTEMBER 2005 1427 Analysis of the Multimodulus Blind Equalization Algorithm in QAM Communication Systems Jenq-Tay Yuan, Senior Member, IEEE, Kun-Da

More information

Study of Turbo Coded OFDM over Fading Channel

Study of Turbo Coded OFDM over Fading Channel International Journal of Engineering Research and Development e-issn: 2278-067X, p-issn: 2278-800X, www.ijerd.com Volume 3, Issue 2 (August 2012), PP. 54-58 Study of Turbo Coded OFDM over Fading Channel

More information

Chapter 2 Channel Equalization

Chapter 2 Channel Equalization Chapter 2 Channel Equalization 2.1 Introduction In wireless communication systems signal experiences distortion due to fading [17]. As signal propagates, it follows multiple paths between transmitter and

More information

Performance Analysis of Equalizer Techniques for Modulated Signals

Performance Analysis of Equalizer Techniques for Modulated Signals Vol. 3, Issue 4, Jul-Aug 213, pp.1191-1195 Performance Analysis of Equalizer Techniques for Modulated Signals Gunjan Verma, Prof. Jaspal Bagga (M.E in VLSI, SSGI University, Bhilai (C.G). Associate Professor

More information

Maximum Likelihood Detection of Low Rate Repeat Codes in Frequency Hopped Systems

Maximum Likelihood Detection of Low Rate Repeat Codes in Frequency Hopped Systems MP130218 MITRE Product Sponsor: AF MOIE Dept. No.: E53A Contract No.:FA8721-13-C-0001 Project No.: 03137700-BA The views, opinions and/or findings contained in this report are those of The MITRE Corporation

More information

PERFORMANCE ANALYSIS OF DIFFERENT M-ARY MODULATION TECHNIQUES IN FADING CHANNELS USING DIFFERENT DIVERSITY

PERFORMANCE ANALYSIS OF DIFFERENT M-ARY MODULATION TECHNIQUES IN FADING CHANNELS USING DIFFERENT DIVERSITY PERFORMANCE ANALYSIS OF DIFFERENT M-ARY MODULATION TECHNIQUES IN FADING CHANNELS USING DIFFERENT DIVERSITY 1 MOHAMMAD RIAZ AHMED, 1 MD.RUMEN AHMED, 1 MD.RUHUL AMIN ROBIN, 1 MD.ASADUZZAMAN, 2 MD.MAHBUB

More information

Optimized threshold calculation for blanking nonlinearity at OFDM receivers based on impulsive noise estimation

Optimized threshold calculation for blanking nonlinearity at OFDM receivers based on impulsive noise estimation Ali et al. EURASIP Journal on Wireless Communications and Networking (2015) 2015:191 DOI 10.1186/s13638-015-0416-0 RESEARCH Optimized threshold calculation for blanking nonlinearity at OFDM receivers based

More information

Reducing Intercarrier Interference in OFDM Systems by Partial Transmit Sequence and Selected Mapping

Reducing Intercarrier Interference in OFDM Systems by Partial Transmit Sequence and Selected Mapping Reducing Intercarrier Interference in OFDM Systems by Partial Transmit Sequence and Selected Mapping K.Sathananthan and C. Tellambura SCSSE, Faculty of Information Technology Monash University, Clayton

More information

Students: Avihay Barazany Royi Levy Supervisor: Kuti Avargel In Association with: Zoran, Haifa

Students: Avihay Barazany Royi Levy Supervisor: Kuti Avargel In Association with: Zoran, Haifa Students: Avihay Barazany Royi Levy Supervisor: Kuti Avargel In Association with: Zoran, Haifa Spring 2008 Introduction Problem Formulation Possible Solutions Proposed Algorithm Experimental Results Conclusions

More information

BANDWIDTH-PERFORMANCE TRADEOFFS FOR A TRANSMISSION WITH CONCURRENT SIGNALS

BANDWIDTH-PERFORMANCE TRADEOFFS FOR A TRANSMISSION WITH CONCURRENT SIGNALS BANDWIDTH-PERFORMANCE TRADEOFFS FOR A TRANSMISSION WITH CONCURRENT SIGNALS Aminata A. Garba Dept. of Electrical and Computer Engineering, Carnegie Mellon University aminata@ece.cmu.edu ABSTRACT We consider

More information

Transmit Power Allocation for BER Performance Improvement in Multicarrier Systems

Transmit Power Allocation for BER Performance Improvement in Multicarrier Systems Transmit Power Allocation for Performance Improvement in Systems Chang Soon Par O and wang Bo (Ed) Lee School of Electrical Engineering and Computer Science, Seoul National University parcs@mobile.snu.ac.r,

More information

Interleaved PC-OFDM to reduce the peak-to-average power ratio

Interleaved PC-OFDM to reduce the peak-to-average power ratio 1 Interleaved PC-OFDM to reduce the peak-to-average power ratio A D S Jayalath and C Tellambura School of Computer Science and Software Engineering Monash University, Clayton, VIC, 3800 e-mail:jayalath@cssemonasheduau

More information

Single Carrier Ofdm Immune to Intercarrier Interference

Single Carrier Ofdm Immune to Intercarrier Interference International Journal of Engineering Research and Development e-issn: 2278-067X, p-issn: 2278-800X, www.ijerd.com Volume 10, Issue 3 (March 2014), PP.42-47 Single Carrier Ofdm Immune to Intercarrier Interference

More information

A Sliding Window PDA for Asynchronous CDMA, and a Proposal for Deliberate Asynchronicity

A Sliding Window PDA for Asynchronous CDMA, and a Proposal for Deliberate Asynchronicity 1970 IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 51, NO. 12, DECEMBER 2003 A Sliding Window PDA for Asynchronous CDMA, and a Proposal for Deliberate Asynchronicity Jie Luo, Member, IEEE, Krishna R. Pattipati,

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

Application of QAP in Modulation Diversity (MoDiv) Design

Application of QAP in Modulation Diversity (MoDiv) Design Application of QAP in Modulation Diversity (MoDiv) Design Hans D Mittelmann School of Mathematical and Statistical Sciences Arizona State University INFORMS Annual Meeting Philadelphia, PA 4 November 2015

More information

International Journal of Advance Research in Engineering, Science & Technology. An Automatic Modulation Classifier for signals based on Fuzzy System

International Journal of Advance Research in Engineering, Science & Technology. An Automatic Modulation Classifier for signals based on Fuzzy System Impact Factor (SJIF): 3.632 International Journal of Advance Research in Engineering, Science & Technology e-issn: 2393-9877, p-issn: 2394-2444 Volume 3, Issue 5, May-2016 An Automatic Modulation Classifier

More information

IN WIRELESS and wireline digital communications systems,

IN WIRELESS and wireline digital communications systems, IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 54, NO. 10, OCTOBER 2006 1725 Blind NLLS Carrier Frequency-Offset Estimation for QAM, PSK, PAM Modulations: Performance at Low SNR Philippe Ciblat Mounir Ghogho

More information

Evaluation of channel estimation combined with ICI self-cancellation scheme in doubly selective fading channel

Evaluation of channel estimation combined with ICI self-cancellation scheme in doubly selective fading channel ISSN (Online): 2409-4285 www.ijcsse.org Page: 1-7 Evaluation of channel estimation combined with ICI self-cancellation scheme in doubly selective fading channel Lien Pham Hong 1, Quang Nguyen Duc 2, Dung

More information

System Analysis of Relaying with Modulation Diversity

System Analysis of Relaying with Modulation Diversity System Analysis of elaying with Modulation Diversity Amir H. Forghani, Georges Kaddoum Department of lectrical ngineering, LaCIM Laboratory University of Quebec, TS Montreal, Canada mail: pouyaforghani@yahoo.com,

More information

Multi Modulus Blind Equalizations for Quadrature Amplitude Modulation

Multi Modulus Blind Equalizations for Quadrature Amplitude Modulation Multi Modulus Blind Equalizations for Quadrature Amplitude Modulation Arivukkarasu S, Malar R UG Student, Dept. of ECE, IFET College of Engineering, Villupuram, TN, India Associate Professor, Dept. of

More information

Citation Wireless Networks, 2006, v. 12 n. 2, p The original publication is available at

Citation Wireless Networks, 2006, v. 12 n. 2, p The original publication is available at Title Combining pilot-symbol-aided techniques for fading estimation and diversity reception in multipath fading channels Author(s) Ng, MH; Cheung, SW Citation Wireless Networks, 6, v. 1 n., p. 33-4 Issued

More information

An Improved SLM Technique Using Discrete Cosine Transform in OFDM. S. Lih., An Improved SLM Technique Using Discrete Cosine Transform in OFDM System.

An Improved SLM Technique Using Discrete Cosine Transform in OFDM. S. Lih., An Improved SLM Technique Using Discrete Cosine Transform in OFDM System. AUSTRALIAN JOURNAL OF BASIC AND APPLIED SCIENCES ISSN:1991-8178 EISSN: 2309-8414 Journal home page: www.ajbasweb.com An Improved SLM Technique Using Discrete Cosine Transform in OFDM System A. A. A. Wahab

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

Joint Adaptive Modulation and Diversity Combining with Feedback Error Compensation

Joint Adaptive Modulation and Diversity Combining with Feedback Error Compensation Joint Adaptive Modulation and Diversity Combining with Feedback Error Compensation Seyeong Choi, Mohamed-Slim Alouini, Khalid A. Qaraqe Dept. of Electrical Eng. Texas A&M University at Qatar Education

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

Comparison of ML and SC for ICI reduction in OFDM system

Comparison of ML and SC for ICI reduction in OFDM system Comparison of and for ICI reduction in OFDM system Mohammed hussein khaleel 1, neelesh agrawal 2 1 M.tech Student ECE department, Sam Higginbottom Institute of Agriculture, Technology and Science, Al-Mamon

More information

Analysis of maximal-ratio transmit and combining spatial diversity

Analysis of maximal-ratio transmit and combining spatial diversity This article has been accepted and published on J-STAGE in advance of copyediting. Content is final as presented. Analysis of maximal-ratio transmit and combining spatial diversity Fumiyuki Adachi a),

More information

ESTIMATION OF FREQUENCY SELECTIVITY FOR OFDM BASED NEW GENERATION WIRELESS COMMUNICATION SYSTEMS

ESTIMATION OF FREQUENCY SELECTIVITY FOR OFDM BASED NEW GENERATION WIRELESS COMMUNICATION SYSTEMS ESTIMATION OF FREQUENCY SELECTIVITY FOR OFDM BASED NEW GENERATION WIRELESS COMMUNICATION SYSTEMS Hüseyin Arslan and Tevfik Yücek Electrical Engineering Department, University of South Florida 422 E. Fowler

More information

ORTHOGONAL frequency division multiplexing

ORTHOGONAL frequency division multiplexing IEEE COMMUNICATION LETTERS, VOL. XX, NO. XX, XX XX 1 Low-Complexity Null Subcarrier-Assisted OFDM AR Reduction with Improved BER Md Sakir Hossain, Graduate Student Member, IEEE, and Tetsuya Shimamura,

More information

Performance Evaluation Of Digital Modulation Techniques In Awgn Communication Channel

Performance Evaluation Of Digital Modulation Techniques In Awgn Communication Channel Performance Evaluation Of Digital Modulation Techniques In Awgn Communication Channel Oyetunji S. A 1 and Akinninranye A. A 2 1 Federal University of Technology Akure, Nigeria 2 MTN Nigeria Abstract The

More information

Performance Evaluation of STBC-OFDM System for Wireless Communication

Performance Evaluation of STBC-OFDM System for Wireless Communication Performance Evaluation of STBC-OFDM System for Wireless Communication Apeksha Deshmukh, Prof. Dr. M. D. Kokate Department of E&TC, K.K.W.I.E.R. College, Nasik, apeksha19may@gmail.com Abstract In this paper

More information

Performance of Wideband Mobile Channel with Perfect Synchronism BPSK vs QPSK DS-CDMA

Performance of Wideband Mobile Channel with Perfect Synchronism BPSK vs QPSK DS-CDMA Performance of Wideband Mobile Channel with Perfect Synchronism BPSK vs QPSK DS-CDMA By Hamed D. AlSharari College of Engineering, Aljouf University, Sakaka, Aljouf 2014, Kingdom of Saudi Arabia, hamed_100@hotmail.com

More information

Blind Equalization Using Constant Modulus Algorithm and Multi-Modulus Algorithm in Wireless Communication Systems

Blind Equalization Using Constant Modulus Algorithm and Multi-Modulus Algorithm in Wireless Communication Systems Blind Equalization Using Constant Modulus Algorithm and Multi-Modulus Algorithm in Wireless Communication Systems Ram Babu. T Electronics and Communication Department Rao and Naidu Engineering College

More information

A Novel Technique for Automatic Modulation Classification and Time- Frequency Analysis of Digitally Modulated Signals

A Novel Technique for Automatic Modulation Classification and Time- Frequency Analysis of Digitally Modulated Signals A Novel Technique for Automatic Modulation Classification and Time- Frequency Analysis of Digitally Modulated Signals M. Venkata Subbarao, Sayedu Khasim Noorbasha, Jagadeesh Thati 3,,3 Asst. Professor,

More information

A Weighted Least Squares Algorithm for Passive Localization in Multipath Scenarios

A Weighted Least Squares Algorithm for Passive Localization in Multipath Scenarios A Weighted Least Squares Algorithm for Passive Localization in Multipath Scenarios Noha El Gemayel, Holger Jäkel, Friedrich K. Jondral Karlsruhe Institute of Technology, Germany, {noha.gemayel,holger.jaekel,friedrich.jondral}@kit.edu

More information

RESEARCH ON METHODS FOR ANALYZING AND PROCESSING SIGNALS USED BY INTERCEPTION SYSTEMS WITH SPECIAL APPLICATIONS

RESEARCH ON METHODS FOR ANALYZING AND PROCESSING SIGNALS USED BY INTERCEPTION SYSTEMS WITH SPECIAL APPLICATIONS Abstract of Doctorate Thesis RESEARCH ON METHODS FOR ANALYZING AND PROCESSING SIGNALS USED BY INTERCEPTION SYSTEMS WITH SPECIAL APPLICATIONS PhD Coordinator: Prof. Dr. Eng. Radu MUNTEANU Author: Radu MITRAN

More information

Yao Ge ALL RIGHTS RESERVED

Yao Ge ALL RIGHTS RESERVED 2016 Yao Ge ALL RIGHTS RESERVED WAVELET-BASED SOFTWARE-DEFINED RADIO RECEIVER DESIGN by YAO GE A Dissertation submitted to the Graduate School-New Brunswick Rutgers, The State University of New Jersey

More information

Jaswant 1, Sanjeev Dhull 2 1 Research Scholar, Electronics and Communication, GJUS & T, Hisar, Haryana, India; is the corr-esponding author.

Jaswant 1, Sanjeev Dhull 2 1 Research Scholar, Electronics and Communication, GJUS & T, Hisar, Haryana, India; is the corr-esponding author. Performance Analysis of Constant Modulus Algorithm and Multi Modulus Algorithm for Quadrature Amplitude Modulation Jaswant 1, Sanjeev Dhull 2 1 Research Scholar, Electronics and Communication, GJUS & T,

More information

Performance Analysis of OFDM for Different Digital Modulation Schemes using Matlab Simulation

Performance Analysis of OFDM for Different Digital Modulation Schemes using Matlab Simulation J. Bangladesh Electron. 10 (7-2); 7-11, 2010 Performance Analysis of OFDM for Different Digital Modulation Schemes using Matlab Simulation Md. Shariful Islam *1, Md. Asek Raihan Mahmud 1, Md. Alamgir Hossain

More information

Peak-to-Average Power Ratio (PAPR)

Peak-to-Average Power Ratio (PAPR) Peak-to-Average Power Ratio (PAPR) Wireless Information Transmission System Lab Institute of Communications Engineering National Sun Yat-sen University 2011/07/30 王森弘 Multi-carrier systems The complex

More information

Cooperative Spectrum Sensing and Decision Making Rules for Cognitive Radio

Cooperative Spectrum Sensing and Decision Making Rules for Cognitive Radio ISSN (Online) : 2319-8753 ISSN (Print) : 2347-6710 International Journal of Innovative Research in Science, Engineering and Technology Volume 3, Special Issue 3, March 2014 2014 International Conference

More information

FREQUENCY OFFSET ESTIMATION IN COHERENT OFDM SYSTEMS USING DIFFERENT FADING CHANNELS

FREQUENCY OFFSET ESTIMATION IN COHERENT OFDM SYSTEMS USING DIFFERENT FADING CHANNELS FREQUENCY OFFSET ESTIMATION IN COHERENT OFDM SYSTEMS USING DIFFERENT FADING CHANNELS Haritha T. 1, S. SriGowri 2 and D. Elizabeth Rani 3 1 Department of ECE, JNT University Kakinada, Kanuru, Vijayawada,

More information

REDUCING PAPR OF OFDM BASED WIRELESS SYSTEMS USING COMPANDING WITH CONVOLUTIONAL CODES

REDUCING PAPR OF OFDM BASED WIRELESS SYSTEMS USING COMPANDING WITH CONVOLUTIONAL CODES REDUCING PAPR OF OFDM BASED WIRELESS SYSTEMS USING COMPANDING WITH CONVOLUTIONAL CODES Pawan Sharma 1 and Seema Verma 2 1 Department of Electronics and Communication Engineering, Bhagwan Parshuram Institute

More information

VOL. 3, NO.11 Nov, 2012 ISSN Journal of Emerging Trends in Computing and Information Sciences CIS Journal. All rights reserved.

VOL. 3, NO.11 Nov, 2012 ISSN Journal of Emerging Trends in Computing and Information Sciences CIS Journal. All rights reserved. Effect of Fading Correlation on the Performance of Spatial Multiplexed MIMO systems with circular antennas M. A. Mangoud Department of Electrical and Electronics Engineering, University of Bahrain P. O.

More information

Adaptive Kalman Filter based Channel Equalizer

Adaptive Kalman Filter based Channel Equalizer Adaptive Kalman Filter based Bharti Kaushal, Agya Mishra Department of Electronics & Communication Jabalpur Engineering College, Jabalpur (M.P.), India Abstract- Equalization is a necessity of the communication

More information

Performance Evaluation of OFDM System with Rayleigh, Rician and AWGN Channels

Performance Evaluation of OFDM System with Rayleigh, Rician and AWGN Channels Performance Evaluation of OFDM System with Rayleigh, Rician and AWGN Channels Abstract A Orthogonal Frequency Division Multiplexing (OFDM) scheme offers high spectral efficiency and better resistance to

More information

Adaptive Scheduling of Collaborative Sensing in Cognitive Radio Networks

Adaptive Scheduling of Collaborative Sensing in Cognitive Radio Networks APSIPA ASC Xi an Adaptive Scheduling of Collaborative Sensing in Cognitive Radio Networks Zhiqiang Wang, Tao Jiang and Daiming Qu Huazhong University of Science and Technology, Wuhan E-mail: Tao.Jiang@ieee.org,

More information

Iterative Clipping and Filtering Technique for PAPR Reduction in OFDM System without Encoding

Iterative Clipping and Filtering Technique for PAPR Reduction in OFDM System without Encoding International Journal of Latest Trends in Engineering and Technology Vol.(7)Issue(3), pp. 141-147 DOI: http://dx.doi.org/10.21172/1.73.519 e-issn:2278-621x Iterative Clipping and Filtering Technique for

More information

Improved Modulation Classification using a Factor-Graph-based Iterative Receiver

Improved Modulation Classification using a Factor-Graph-based Iterative Receiver Improved Modulation Classification using a Factor-Graph-based Iterative Receiver Daniel Jakubisin and R. Michael Buehrer Mobile and Portable Radio Research Group MPRG), Wireless@VT, Virginia Tech, Blacksburg,

More information

Multiuser Detection for Synchronous DS-CDMA in AWGN Channel

Multiuser Detection for Synchronous DS-CDMA in AWGN Channel Multiuser Detection for Synchronous DS-CDMA in AWGN Channel MD IMRAAN Department of Electronics and Communication Engineering Gulbarga, 585104. Karnataka, India. Abstract - In conventional correlation

More information

Reduction of PAPR of OFDM Using Exponential Companding Technique with Network Coding

Reduction of PAPR of OFDM Using Exponential Companding Technique with Network Coding Reduction of PAPR of OFDM Using Exponential Companding Technique with Network Coding Miss. Sujata P. Jogdand 1, Proff. S.L.Kotgire 2 1 (Dept. of Electronics & Telecommunication, M.G.M s college of Engg./S.R.T.M.

More information

UNDERWATER ACOUSTIC CHANNEL ESTIMATION AND ANALYSIS

UNDERWATER ACOUSTIC CHANNEL ESTIMATION AND ANALYSIS Proceedings of the 5th Annual ISC Research Symposium ISCRS 2011 April 7, 2011, Rolla, Missouri UNDERWATER ACOUSTIC CHANNEL ESTIMATION AND ANALYSIS Jesse Cross Missouri University of Science and Technology

More information

CycloStationary Detection for Cognitive Radio with Multiple Receivers

CycloStationary Detection for Cognitive Radio with Multiple Receivers CycloStationary Detection for Cognitive Radio with Multiple Receivers Rajarshi Mahapatra, Krusheel M. Satyam Computer Services Ltd. Bangalore, India rajarshim@gmail.com munnangi_krusheel@satyam.com Abstract

More information

ANALYSIS OF BIT ERROR RATE IN FREE SPACE OPTICAL COMMUNICATION SYSTEM

ANALYSIS OF BIT ERROR RATE IN FREE SPACE OPTICAL COMMUNICATION SYSTEM ANALYSIS OF BIT ERROR RATE IN FREE SPACE OPTICAL COMMUNICATION SYSTEM Pawan Kumar 1, Sudhanshu Kumar 2, V. K. Srivastava 3 NIET, Greater Noida, UP, (India) ABSTRACT During the past five years, the commercial

More information

EFFECTS OF PHASE AND AMPLITUDE ERRORS ON QAM SYSTEMS WITH ERROR- CONTROL CODING AND SOFT DECISION DECODING

EFFECTS OF PHASE AND AMPLITUDE ERRORS ON QAM SYSTEMS WITH ERROR- CONTROL CODING AND SOFT DECISION DECODING Clemson University TigerPrints All Theses Theses 8-2009 EFFECTS OF PHASE AND AMPLITUDE ERRORS ON QAM SYSTEMS WITH ERROR- CONTROL CODING AND SOFT DECISION DECODING Jason Ellis Clemson University, jellis@clemson.edu

More information