Channel Capacity of MIMO System in Rayleigh Fading Channel with Receiver Diversity Technique

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Kalpa Publications in Engineering Volume 1, 2017, Pages 563 568 ICRISET2017. International Conference on Research and Innovations in Science, Engineering &Technology. Selected Papers in Engineering Channel Capacity of IO System in Rayleigh Fading Channel with Receiver Diversity Technique Palak K. Patel 1, Darshankumar C. Dalwadi 2, Hiren J. Patel 3, Anita N. Bhatt 4 1 BV Engineering College, GTU, Vallabh Vidyanagar, Gujarat, India 2 Gujarat Technological University, Ahmedabad, Gujarat, India 3 R. K. University, Rajkot, Gujarat, India 4 BV Engineering College, GTU, Vallabh Vidyanagar, Gujarat, India palak.patel@bvmengineering.ac.in darshan.dalwadi@bvmengineering.ac.in hiren.patel@bvmengineering.ac.in anitanbhatt@gmail.com Abstract In this paper, we have evaluated the channel capacity of SISO and IO system with respect to Rayleigh fading channel. We have compared the results with respect to different receiver diversity techniques like RC, EGC, SC. We have presented the results of SER v/s SNR with respect to 16-QA modulation technique. We have also presented the results of SNR v/s capacity of SISO and IO system. For simulation, we have used ATLAB R2014 software. 1 Introduction In wireless communication era, one of the communication systems which is very famous for its antenna technology called as IO system in that multi antennas are used at transmitter and receiver side to increase the data rates and minimize the error in transmitted data without requiring additional bandwidth or transmit power. IO system are established due to the concept of diversity in which information signal transmitted over independent fading path using multiple antenna at transmitted side and same information signal received by multiple antenna at receiver side. By increasing the number of antenna we can improve the channel capacity for A. Shukla, J.. Patel, P.D. Solanki, K.B. Judal, R.K. Shukla, R.A. Thakkar, N.P. Gajjar, N.J. Kothari, S. Saha, S.K. Joshi, S.R. Joshi, P. Darji, S. Dambhare, B.R. Parekh, P.. George, A.. Trivedi, T.D. Pawar,.B. Shah, V.J. Patel,.S. Holia, R.P. ehta, J.. Rathod, B.C. Goradiya and D.K. Patel (eds.), ICRISET2017 (Kalpa Publications in Engineering, vol. 1), pp. 563 568

Channel Capacity of IO System... effective wireless communication system. So here we are comparing the channel capacity of different communication system by applying the different receiver diversity technique. We are correlating here channel capacity in terms of spectral efficiency with different receiver diversity technique like Equal Gain Combining, Selection combining, and aximum ratio combining. Channel Capacity: Channel is a medium to forward information from source to destination. During this process, the information at destination may be distributed by noise as well as channel distortion. Here the two parameters are different in nature because channel distortions are fixed function while the noise is statistical and unpredictable in nature. Here, we are considering discrete time additive white Gaussian noise (AWGN) channel [4]. Here, g(t) is input and w(t) is output signal. The relation between input and output signal after transmitting through the channel is given by, w(t) = g(t) + N(t) (1) Figure 1: Discrete time AWGN Channel From the Bulk of information, Let we transmit amount of signal states in a limited time duration T over a communication Channel. If T tends to infinity, The rate of transmission R approaches the channel capacity C in terms of the number of bits per transmission. 2 Different Communication system with channel capacity 2.1 Single input single output (SISO) and Single input multiple output (SIO) system Figure 2: SISO System Figure 3: SIO System Channel capacity of SISO system can be represented by C = Log 2 (1+ α y 2 ) (2) 564

Channel Capacity of IO System... Where, y is the normalized complex gain of fixed wireless channel and α is the SNR at the received antenna. Channel capacity of SIO system can be represented by, 2.2 ultiple input single output (ISO) and ultiple input multiple output (IO) system The channel capacity of ISO system can be represented by (4) In equation, y i,, i = 1,2..n t. represents the constant gain of the channel. which is established between the i th transmitter antenna and the single receiver antenna over a symbol period. The unit of channel capacity is b/s/hz.[4] The channel capacity of IO system is given by C = log 2 ( det [I m + (α/n) y * y y ] ) (5) In this equation, det means determinant, I m means n*m identity matrix transport conjugate, where the number of antenna n and m are important. the expected value function of capacity for a Rayleigh channel grows proportionally to m. E(c) = m * log 2 (1+SNR) (6) (3) 3 Receiver Diversity technique Figure 4: ISO System Figure 5: IO System 3.1 Selection Combining (SC) Technique There are multiple copies of information signal transmitted with different channel. Here, SNR achieved at each channel is γ i (i=1,2,..). The signal received is independent and Rayleigh distributed with mean power of 2σ 2. To combat small scale fading, we can use this type of microscopic diversity. The PDF of Rayleigh distribution is given by, æ-g ö P( g ) = (1-exp ç ) è g 0 ø (7) 565

Channel Capacity of IO System... Figure 6: Selection Combining Diversity Figure 7: aximum Ratio Combining Average signal to Noise ratio due to selection diversity combining technique is E [ maxigi] g0 1 = å K K = 1 { g } ù= g g g Eéëmax i û ò p( ) d 3.2 aximum Ratio Combining (RC) Technique 0 (8) At the receiver side, Summing and phase matching are done with the appropriate circuit. a = å a g i i i= 1 Then the PDF of γ is given by -1 p( g) 1/ ( 1)!* g / g0 *exp( g / g0) = - - with γ 0; γ0 is the mean SNR in each branch and is given by 2σ 2 Eb/N The CDF of γ is -1 g 1 x æ x ö P( g ) = ò exp dx 0 ç - ( 1)! 0 - g0 è g ø i-1 æ g ö 1 æ g ö = 1-expç - å ç g ( i -1)! g è 0 ø i= 1 è 0 ø (9) 3.3 Equal Gain Combining (EGC) Technique In this method g i of RC scheme are all made equal to 1, For all i =1,2,.. So, problem of cophasing is resolved in this technique. [3] a = å a i= 1 i 566

Channel Capacity of IO System... and the resulting SNR is [3] g = a E /( * N ) = E /( * N )*( Sai) 2 2 b 0 b 0 Where γ is the parameter associated with Rayleigh random variable. (10) Figure 8: Equal Gain Combining 4 Simulation Results 4.1 Channel Capacity of SISO and IO System Figure 9: SNR v/s channel capacity of SISO system Figure 10: SNR v/s channel capacity of IO system 4.2 Simulation Parameters of SISO and IO System SNR (db) No.of tx ant. No.of rx ant. Speed(bps/Hz) 1 1 1 1 3 1 1 1.4 6 1 1 1.9 Table 1: Simulation Parameters of SISO System SNR (db) No.of tx ant. No.of rx ant. Speed (bps/hz) 1 2 2 4 3 2 2 5 6 2 2 6.88 Table 2: Simulation Parameters of IO System 567

Channel Capacity of IO System... 4.3 SNR Vs SER for 16-QA with Selection combining, Equal Gain combining, aximum ratio combining receiver diversity technique Figure 11: SNR v/s SER for 16-QA modulation technique with different receiver diversity types 5 Conclusion We have concluded that as we increase the number of antenna the SER performance is improved. Compared to SISO and IO system, in IO system the lowest value of SER is achieved. We have also concluded that spectral efficiency or capacity of IO system is much higher than SISO system. We have also concluded that compared to all receiver diversity technique in RC technique the value of SER is lowest. References [1]P.K.Patel, D.C.Dalwadi, Comparative analysis of maximum ratio combining technique on SISO and SIO, in national conference PEPCCI-12, SVIT, Vasad, Gujarat, 9th January 2012, pp. 27-31. [2]]N. Chandrasekaran, Rutgers university, Diversity Technique in wireless Communication, Spring 2005 [3]E Thesis, Palak Patel, Gujarat technological university, Performance analysis of different diversity combining techniques with IO channel in wireless, June 2012. [4]Emad. ohamed and A..Abdulsattar, Evaluation Of imo System Capacity Over Rayleigh Fading Channel, (IJCSES) Vol.6, No.3, June 2015 [5]E. Ghayoula1,2, A. Bouallegue1, R. Ghayoula2,* and J-Y.Chouinard2, Capacity and Performance of IO systems for Wireless Communications Journal of Engineering Science and Technology Review 7 (3) (2014) 108 111 [6] P. Patel, D. Dalwadi, Channel Estimation of Various Communication System with Different odulation Technique, International Journal of Advanced Research in Computer Science and Software Engineering, Vol. 4, no. 1,January 2014 [7] Abdi, A. and tepedelenlioglu, C. and kaveh,. and Giannakis, G. on the estimation of the k parameter for the rice fading distribution, IEEE communications letters, arch 2001, p. 92-94. 568