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Article

Time Coding OTDM MIMO System Based on Singular Value Decomposition for 5G Applications

College of Engineering and Technology, Arab Academy for Science, Technology and Maritime Transport, Alexandria 1029, Egypt
*
Author to whom correspondence should be addressed.
Appl. Sci. 2019, 9(13), 2691; https://doi.org/10.3390/app9132691
Submission received: 14 May 2019 / Revised: 15 June 2019 / Accepted: 17 June 2019 / Published: 2 July 2019

Abstract

:
For 5G and beyond cellular communication systems, new coding and modulation techniques are suggested to reach the requirements of high data rate and quality of service. In this paper, a new space-time coded orthogonal transform division multiplexing (STC OTDM) technique is proposed for 5G applications. The proposed system is used to enhance the data rate and performance of the orthogonal transform division multiplexing (OTDM) technique. The proposed system is based on using space-time coding (STC) with OTDM to increase the system diversity and consequently the system performance. The OTDM technique is based on transmitting data on orthogonal basis functions obtained from the Singular Value Decomposition (SVD) of the channel impulse response of the desired user. Various modulation techniques like QPSK, 64-QAM, and 256-QAM are investigated using different subcarriers and channel models. The simulation results show that the proposed system achieved a better performance when compared to classical and recent multicarrier techniques. The proposed technique increases the diversity gain resulting in a decrease in the fading effect of the multipath channel and an enhancement in the bit error rate (BER) performance. The proposed technique also provides a secure data transmission to the desired user as his data is sent on the basis functions extracted from his own channel impulse response that cannot be decoded by other users.

1. Introduction

Wireless systems suffer from a rapid increasing demand for high data rates and quality of service. Therefore, it is substantial to design a practical physical layer technique to provide high data rates with high system performance [1]. This technique provides reliable advanced communication system like 5G and beyond [2]. This paper focuses on the cellular communication system although the proposed technique can be extended to different advanced wireless communication networks. The development of several modulation multicarrier techniques that are combined with the massive Multiple-Input-Multiple-Output (MIMO) is essential, which is the key to all the advanced cellular wireless systems [3].
Boroujeny and Moradi showed in [4] that, in the past, orthogonal frequency division multiplexing (OFDM) was one of the most popular modulation technique in wired and wireless systems, due to its ability to combat the frequency selectivity of the transmission channels and achieving high rate without intersymbol interference (ISI) [5,6]. Now, new techniques are needed to enhance the bit error rate (BER) and increase diversity.
In [7], Bharti and Rawat showed a combination between the OFDM and Alamouti space time block code (STBC) [8] to increase the performance of BER in multipath fading channels of the wireless communication systems by using multiple transmit and receive antennas. Additionally, it extended the diversity order as it used 4 × N Transmitters-Receivers.
Fernando et al. displayed in [9,10] that the self-heterodyne OFDM (self-het. OFDM) technique gives a better performance than the OFDM. It is used with STC in [9] to enhance the performance of MIMO millimeter wave communication.
In [11] Bariah et al. displayed a non-orthogonal multiple access (NOMA) technique due to its ability to improve the overall spectral efficiency of wireless systems. They show that the maximum possible order of diversity is proportional to the order of the user. The error probability expressions obtained are used to formulate an optimization problem that minimizes the overall bit error rate under power and error rate threshold constrains.
Ghaffari et al. presented in [12] a new non-orthogonal multiple access technique called Sparse Code Multiple Access (SCMA). It offers better performance and higher spectral efficiency than other comparable techniques. However, these improvements come at the expense of complex decoders.
The upcoming 5G systems are required to provide higher performance and quality of services compared to the currently deployed long-term evolution (LTE) systems. These requirements can be achieved by providing a significant increase in the system date rate, power consumption efficiency, spectral efficiency throughput, size of coverage area, number of devices connecting (users), and low latency. To fulfill the requirements of the coming generations, new techniques, like orthogonal time-frequency space (OTFS) modulation, was proposed by Hadani et al. in [13]. Moreover, the BER has been enhanced by the OTDM technique, besides the improvement of the security which was illustrated by Hamamreh and Arslan in [14].
In this paper, an STC OTDM technique is introduced to meet some of the challenges of the upcoming 5G system by increasing the data rate and the throughput of the system. Moreover, the STC OTDM increases the security level of transmission for the wireless system. A STC OTDM technique is proposed to reduce the BER using the STC, which also increases the diversity order. This is carried out by using Singular Value Decomposition (SVD) of the estimated channel, where every two symbols are modulated using orthonormal basis functions of SVD. Then, the modulated symbols are encoded using an Alamouti encoder for a 2 × 2 MIMO system and are transmitted over two consecutive symbol durations. This technique improves diversity and reduces the BER as a result of increasing the signal to noise ratio (SNR), in addition to the advantages of the OTDM mentioned in [15]. This technique is promising for the future high performance and secure 5G systems when compared to the conventional OFDM system. The proposed technique increases the diversity gain resulting in a decrease in the fading effect of the multipath channel, thus enhancing the bit error rate (BER) performance and throughput of the system. The proposed technique also provides a secure data transmission to the desired user as his data is sent on the basis functions extracted from his own channel impulse response that cannot be decoded by other users, thus the desired user can only receive his data correctly.
The remainder of the paper is organized as follows. Section 2 is devoted to a detailed description of the proposed system. System evaluation and simulation results are presented in Section 3. This is followed by the main conclusions showing the merits of the proposed system in Section 4.

2. System Model and Analysis

2.1. STC OTDM Transmitter

The proposed system transmitter is illustrated in Figure 1, which shows the sequence of the system transmitter architecture. At the transmitter side, the number of symbols per frame is N. The data symbols S are transmitted in a number of frames, each of length N symbols and each frame is divided into two sequences; even sequence, S 1   , and odd sequence S 2 . Both S 1 and S 2 C [ N 2 × 1].
Thus,
S 1 =   [ s ( 2 ( m     1 ) ) ] T   and
S 2 =   [ s ( 1 + 2 ( m     1 ) ) ] T
where m = 1, 2, …, N 2
After modulation with M subcarriers and passing through a serial-to-parallel (S/P) converter, each of the modulated complex value symbols is carried by a channel-based orthogonal transform basis. The mapping method is basically done by a direct multiplication operation between each data symbol and the orthogonal basis vector. These orthogonal basis vectors are extracted from the SVD decomposition of the Toeplitz matrix of the channel impulse response H b i j between the ith receiving antenna and the jth transmitting antenna, where i = 1, 2 and j = 1, 2. This can be represented by
H b i j = [ h i j [ 0 ] 0 0 h i j [ 0 ] 0 h i j [ 0 ] h i j [ L 1 ] 0 0 h i j [ L 1 ] h i j [ 0 ] 0 h i j [ L 1 ] 0 0 0 h i j [ L 1 ] ]
then,
H b j   =   i = 1 2 H b i j
where j = 1, 2 and H b j     C [ ( N 2 + L 1 ) × N 2 ] .
The receiver and the transmitter can extract the basic functions by decomposing the Toeplitz matrices using the SVD. Therefore, the Toeplitz matrices can be expressed in terms of the three new matrices as
H b j =   U n E n V n H
where n = 1, 2 and U n and V n H are orthogonal matrices that are C [ ( N 2 + L ) × N 2 ] and C [ N 2 × N 2 ] , respectively, and E n is a diagonal matrix with real entires C [ N 2 × N 2 ] .
The transformation matrix V n is given by
V n = v n ( 0 )   v n ( 1 ) v n ( N 2 1 )
where v (i) is the orthogonal basis vector of length ( N 2 1 ).
The transmitter maps each symbol to its corresponding basis functions by simple multiplication. This leads to two blocks of samples X 1 and X 2 referred to two OTDM symbols. This process can mathematically be expressed as
X n = i = 0 N 1 s n [ i ] v n [ i ] = V n S n   C [ N 2 × 1 ]
where n = 1, 2 and V n is the Hermitian of V n H .
The transmitted data blocks X n of length N 2 can be represented by simple multiplication of Toeplitz matrices H b j C [ ( N 2 + L 1 ) × N 2 ] with the transmitted data blocks. The transmitted data blocks pass through a parallel-to-serial (P/S) converter before adding the guard period (L).
Then, Alamouti space-time coding is applied to X 1 and X 2 in the frequency domain to generate the following code word matrix:
X = [ X 1 X 2 X 2 * X 1 * ] Space Time
So, the received OTDM signals R i j can be represented as
R 11 = ( H 11   X 1 ) + ( H 12   X 2 ) + z 1 ,
R 21 =   ( H 21   X 1 ) + ( H 22   X 2 ) + z 2 ,
R 12 = ( H 11   X 2 * ) +   ( H 12   X 1 * ) +   z 3 ,   and
R 22 = ( H 21   X 2 *   ) + ( H 22   X 1 * ) + z 4 ,
where i is the number of receive antennas and j is the number of transmit antennas, and z 1 , z 2 , z 3 , and z 4 are the additive white Gaussian noise (AWGN) with zero mean and variance σ 2 . H i j are the channel response between the ith receiving antennas and jth transmitting antennas. Then, these signals are exposed to the receiver sequence.

2.2. STC OTDM Receiver

At the receiver side, the received signals pass through STC decoder as shown in Figure 2.
The received symbol matrix in the MIMO system can be represented by [9]
[ Y 11 Y 21 Y 12 * Y 22 * ] Y = [ α * H 11 α * H 12 β * H 21 β * H 22 α H 12 * α H 11 * β H 22 * β H 21 * ] H e q [ X 1 X 1 ] + [ z 1 z 2 z 3 z 3 ] Z
where α= H 11 + H 12 and β = H 21 + H 22 .
The ZF equalizer is used to recover the data symbols by considering H ´ e q   Y , where H ´ e q is the pseudo-inverse of H e q which can be represented as
H ´ e q   =   1 Λ   H e q H
where Λ is the diversity gain represented as [7]
Λ =   | α | 2 ( m = 1 2 | H 1 m | 2 )     + | β | 2 ( m = 1 2 | H 2 m | 2 )
So, the estimated data symbols can be represented by
X ^ =   [ X ^ 1 X ^ 2 ] =   [ α H 11 * β H 21 * α * H 12 β * H 22 α H 12 * β H 22 * α * H 11 β * H 21 ]   [ Y 11 Y 21 Y 12 * Y 22 * ]   and
X ^ n = X n   Λ + Z .
After that, X ^ is passes through the S/P converter followed by the STC decoder. The receiver applies the SVD on the Toeplitz matrix of its channel response. The receiver uses the Hermitian Un as inverse basis functions to extract the data symbols from the received symbols without interference where n = 1, 2. This can be enforced as
s ^ ^ n = i = 0 N + L 1 x ^ ^ n [ i ] u n * [ i ] C [ N 2 ] + L × 1 .
Then, a one tap ZF equalization process for s ^ ^ n is performed by the receiver using E n to get the equalized data symbol block s ^ n . This process can mathematically be expressed as
s ^ n   =   E n 1 s ^ ^ n   =   E n 1   U n H X ^ n =   E n 1   U n H   ( X n   Λ   +   Z ) =   E n 1   U n H   ( H b j   V n   S n   Λ   + Z ) =   E n 1     U n H   ( U n   E n   V n H   V n     S n   Λ   + Z ) =   S n   Λ   +   E n 1     U n H     Z .
This is clearly shown in the system receiver architecture in Figure 2.

2.3. BER Analysis

Finally, we need to calculate the power of the signal and the variance of AWGN with zero mean to be able to calculate the BER of the proposed system. So, the power of the signals can be derived as
P S = n = 1 2 E [ | S n Λ | 2 ]
and the noise variance yields to
σ 2 = n = 1 2 E [ | E n 1 U n H Z | 2 ] .
Therefore, the total BER can be represented as [10]
BER = 2   Q ( P s σ 2   ) ( 1 1 2   Q ( P s σ 2 ) )
where Q(.) is the standard Q-function.
Finally, from Equation (22), we proved that the proposed system enhances the performance of the BER.

3. Simulation Results

In this section, the proposed STC OTDM technique is evaluated and compared to conventional OFDM [5] and recent multicarrier techniques like STC OFDM [7] and OTDM [14]. Set of experiments are conducted in terms of modulation techniques, number of subcarriers and channel taps. These experiments are discussed in the following subsections. The simulation results are displayed and discussed. An STC OTDM system is considered with N = 16, 64, and 128. The modulation schemes QPSK, 64-QAM, and 256-QAM are investigated with a number of channel taps equal to L = 9, 12 and 15. For the sake of comparison, a standard OFDM system, STC OFDM and standard OTDM are also considered with N = 16, 64, 128 sub-carriers. In this section, also, the effect of the modulation scheme on all the techniques is studied. The study includes the effect of increasing the number of subcarriers and the effect of increasing the number of channel taps. All the parameters used in simulations are collected in Table 1.

3.1. Effect of Modulation Scheme

Figure 3 shows the BER of the proposed system, compared to the OFDM, STC OFDM and OTDM using QPSK as a modulation technique with a number of subcarriers N = 16. It is clear that the BER of the proposed system outperforms the other techniques. The difference in SNR between the proposed system and OTDM technique equals 6 dB at BER = 10−3. If we compare the STC OTDM with STC OFDM, we find that at BER = 10−3, the difference in SNR between them approximately equals 0.7 dB and the SNR between the proposed system and the OFDM technique equals 16.5 dB. Furthermore, the eavesdropper cannot decode the data correctly because the eavesdropper and the transmitter are not in the same channel or both have different basis functions as clearly shown in Figure 3.
In Figure 4, 64-QAM is used with the same value of N. The effect of increasing the M-ary appears as the BER increases with the modulation order. This is because the constellation becomes closer to each other [16]. This appears at BER = 10−3, where the difference in SNR between the proposed system and OTDM system is approximately equal to 5 dB, where the SNR of the proposed system is 22.5 dB and 10 dB at 64-QAM and QPSK, respectively, at BER = 10−3. Thus, in 256-QAM, the performance of the proposed system degrades to reach 28 dB at the same BER as shown in Figure 5.

3.2. Effect of Subcarriers

Figure 6 shows the effect of increasing the number of subcarriers at all modulation techniques. The proposed system gives SNR = 10 dB at BER = 10−3 at QPSK modulation technique when N = 16. The performance of STC OTDM when N = 64 and 128 is nearly equal. So, this is great evidence to prove that STC OTDM gives high performance with less number of subcarriers at all the modulation techniques as it clear in the figure. The performance decreases at 64-QAM and 256-QAM to SNR = 22.5 dB and 28 dB, respectively, at BER = 10−3. Thus, the required performance can be obtained with a lower number of subcarriers and then lower complexity. This is in addition to the fact that the proposed technique is based on linear equalization and an SVD algorithm which is widely used in different present wireless communication systems like in channels estimation and beamforming algorithms [15]. The complexity of the SVD computation is of order O ( m n 2 ), where m and n are the matrix dimensions that will apply the SVD on it [17]. Thus, the proposed system is applicable and can practically be deployed.

3.3. Effect of Channel Taps

The effect of increasing the taps of the channel on the proposed system appears in Figure 7. Increasing the channel taps from 9 to 12 leads to a little bit increase in the performance of the proposed system at SNR greater than 10 dB. This is in a fair agreement with the work of Hamamreh and Arslan in [14] as the OTDM is designed especially to work better with the frequency selective channels, which is the case in most broadband systems.
The procedure is repeated for all modulation schemes at all values of N with channel taps of 9, 12, and 15. The obtained results at BER = 10−3 are summarized in Table 2.

4. Conclusions

An STC OTDM architecture is proposed for enhancing the performance of the BER and increasing the diversity order. We considered a system with N = 16, 64, and 128. The modulation schemes QPSK, 64-QAM, and 256-QAM were investigated with a number of channel taps equaling 9, 12, and 15. For the sake of comparison, we also considered a standard OFDM system, STC OFDM, and standard OTDM with the same active sub-carriers, a cyclic prefix (CP) of length L for the OFDM and STC OFDM techniques, and simple zero-forcing equalization. The proposed system shows its superiority over the OFDM, STC OFDM, and OTDM in enhancing the performance of BER. The simulation results show that the SNR of the proposed system using QPSK modulation technique is equal to 10 dB at BER =10−3 when 16 subcarriers are used in a 9-tap Rayleigh fading channel. Also, the results show that the BER performance of the proposed technique is nearly constant for a different number of subcarriers. For example, the proposed technique using 64-QAM achieved the same BER performance, 10−3 at SNR = 22.5 dB, for the different subcarriers 64 and 128. Thus, the required system performance can be obtained with less number of subcarriers and thus less system complexity for the different modulation techniques. When using 64-QAM and 256-QAM the performance of BER is nearly the same and the proposed system achieves high performance at high data rates. Simulations also showed that the STC OTDM improves the security of the wireless communication system, where only the desired user can decode the transmitted data.
The proposed technique is basically composed of a linear equalizer and SVD algorithm which is widely used in different present wireless communication systems. The complexity of the SVD computation is of order O( m n 2 ) where m and n are the matrix dimensions that will apply the SVD on it. Thus, the proposed system is applicable and can be practically deployed.

Author Contributions

Conceptualization, A.Z. and W.K.B.; Methodology, R.M.A., A.Z. and W.K.B.; Software, R.M.A., A.Z. and W.K.B.; Validation, A.Z., W.K.B. and M.H.A.; Formal Analysis, A.Z. and W.K.B.; Investigation, R.M.A.; Resources, R.M.A., A.Z. and W.K.B.; Data Curation, R.M.A.; Writing—Original Draft Preparation, R.M.A.; Writing—Review & Editing, A.Z., W.K.B. and M.H.A.; Visualization, R.M.A., A.Z. and W.K.B.; Supervision, A.Z., W.K.B. and M.H.A.; Project Administration, R.M.A., A.Z. and W.K.B.

Funding

This research has no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

References

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Figure 1. Space-time coded orthogonal transform division multiplexing (STC OTDM) transmitter technique.
Figure 1. Space-time coded orthogonal transform division multiplexing (STC OTDM) transmitter technique.
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Figure 2. STC OTDM receiver technique.
Figure 2. STC OTDM receiver technique.
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Figure 3. Bit error rate (BER) of the proposed technique (STC OTDM) in comparison with other multicarrier techniques at N = 16 and L = 9 using QPSK.
Figure 3. Bit error rate (BER) of the proposed technique (STC OTDM) in comparison with other multicarrier techniques at N = 16 and L = 9 using QPSK.
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Figure 4. BER of the proposed technique (STC OTDM) in comparison with other multicarrier techniques at N = 16 and L = 9 using 64-QAM.
Figure 4. BER of the proposed technique (STC OTDM) in comparison with other multicarrier techniques at N = 16 and L = 9 using 64-QAM.
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Figure 5. BER of the proposed technique (STC OTDM) in comparison with other multicarrier techniques at N = 16 and L = 9 using 256-QAM.
Figure 5. BER of the proposed technique (STC OTDM) in comparison with other multicarrier techniques at N = 16 and L = 9 using 256-QAM.
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Figure 6. BER of STC OTDM at different subcarriers and L = 9 for: (a) QPSK; (b) 64-QAM; and (c) 256-QAM.
Figure 6. BER of STC OTDM at different subcarriers and L = 9 for: (a) QPSK; (b) 64-QAM; and (c) 256-QAM.
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Figure 7. BER of STC OTDM at different channel taps L using QPSK.
Figure 7. BER of STC OTDM at different channel taps L using QPSK.
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Table 1. Simulation parameters.
Table 1. Simulation parameters.
Type of ChannelRayleigh Fading Channel
Number of channel taps, L6, 12 and 15
Type of modulationQPSK, 64-QAM and 256-QAM
Number of subcarrier, N16, 64 and 128
Table 2. The SNR (dB) simulation results at BER = 10 3 for different modulation schemes, different subcarriers, and channels models.
Table 2. The SNR (dB) simulation results at BER = 10 3 for different modulation schemes, different subcarriers, and channels models.
SNR (dB)
L91215
N166412816641281664128
QPSK
OFDM26.5272726.8272726.426.626.8
STC OFDM10.7111110.710.910.910.91111
OTDM162224142123.213.42022.4
STC OTDM1010.110.11010.0110.011010.0110.01
64-QAM
OFDM3435353535.235.135.235.335.4
STC OFDM23232323.223.1523.123.22323
OTDM27.53131.426.432.732.725.431.533
STC OTDM22.322.422.422.222.422.42222.322.4
256-QAM
OFDM37.738.53938.53939.339.839.938.6
STC OFDM28.328.528.728.228.428.292928.8928.96
OTDM32.53737.43136.837323637
STC OTDM28.228.328.322828.228.2828.128.1228.2

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MDPI and ACS Style

Aly, R.M.; Zaki, A.; Badawi, W.K.; Aly, M.H. Time Coding OTDM MIMO System Based on Singular Value Decomposition for 5G Applications. Appl. Sci. 2019, 9, 2691. https://doi.org/10.3390/app9132691

AMA Style

Aly RM, Zaki A, Badawi WK, Aly MH. Time Coding OTDM MIMO System Based on Singular Value Decomposition for 5G Applications. Applied Sciences. 2019; 9(13):2691. https://doi.org/10.3390/app9132691

Chicago/Turabian Style

Aly, Rana M., Amira Zaki, Waleed K. Badawi, and Moustafa H. Aly. 2019. "Time Coding OTDM MIMO System Based on Singular Value Decomposition for 5G Applications" Applied Sciences 9, no. 13: 2691. https://doi.org/10.3390/app9132691

APA Style

Aly, R. M., Zaki, A., Badawi, W. K., & Aly, M. H. (2019). Time Coding OTDM MIMO System Based on Singular Value Decomposition for 5G Applications. Applied Sciences, 9(13), 2691. https://doi.org/10.3390/app9132691

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