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DEC-aided SM-OFDM: A Spatial Modulation System with Deep Learning based Error Correction

Published: 16 May 2023 Publication History

Abstract

In this work, we propose a Deep Learning (DL) based error correction system termed as DEC. It predicts the transmitted symbols at the receiver using the received soft symbols and channel state information (CSI) of the transmission link. Hence, the proposed system eliminates the need of using complex channel coding/decoding blocks in the wireless communication system. Specifically, we explore the application of proposed DEC system for Spatial Modulation-OFDM (SM-OFDM) systems. SM is a technique that avoids inter-channel interference (ICI) at receiver input, also offers a good balance between the energy and spectral efficiency. This together with DEC system can prove to be of interest for the next generation wireless system, particularly for the Internet-of-Things (IoT) devices that require optimal bit-error ratios (BER) at moderate data rates. The performance of the proposed system is compared with Trellis coded-SM (TCSM) system. The obtained simulation results successfully verify the superiority of the DEC-aided SM-OFDM system over the TCSM in terms of both BER and throughput.

References

[1]
Hasan Albinsaid, Keshav Singh, Sudip Biswas, Chih-Peng Li, and Mohamed-Slim Alouini. 2020. Block deep neural network-based signal detector for generalized spatial modulation. IEEE Communications Letters 24, 12 (2020), 2775–2779.
[2]
Yvo de Jong Bultitude and Terhi Rautiainen. 2007. IST-4-027756 WINNER II D1. 1.2 V1. 2 WINNER II Channel Models. EBITG, TUI, UOULU, CU/CRC, NOKIA, Tech. Rep(2007).
[3]
Ian Goodfellow, Yoshua Bengio, and Aaron Courville. 2016. Deep learning. MIT press.
[4]
Hongji Huang, Song Guo, Guan Gui, Zhen Yang, Jianhua Zhang, Hikmet Sari, and Fumiyuki Adachi. 2019. Deep learning for physical-layer 5G wireless techniques: Opportunities, challenges and solutions. IEEE Wireless Communications 27, 1 (2019), 214–222.
[5]
Ahmad M Jaradat, Jehad M Hamamreh, and Huseyin Arslan. 2018. OFDM with subcarrier number modulation. IEEE Wireless Communications Letters 7, 6 (2018), 914–917.
[6]
Jeyadeepan Jeganathan, Ali Ghrayeb, and Leszek Szczecinski. 2008. Spatial modulation: Optimal detection and performance analysis. IEEE Communications Letters 12, 8 (2008), 545–547.
[7]
Raed Mesleh, Marco Di Renzo, Harald Haas, and Peter M Grant. 2010. Trellis coded spatial modulation. IEEE transactions on wireless communications 9, 7(2010), 2349–2361.
[8]
Raed Y Mesleh, Harald Haas, Sinan Sinanovic, Chang Wook Ahn, and Sangboh Yun. 2008. Spatial modulation. IEEE Transactions on vehicular technology 57, 4 (2008), 2228–2241.
[9]
Athanasios Stavridis, Sinan Sinanovic, Marco Di Renzo, and Harald Haas. 2013. Energy evaluation of spatial modulation at a multi-antenna base station. In 2013 IEEE 78th Vehicular Technology Conference (VTC Fall). IEEE, 1–5.
[10]
Athanasios Stavridis, Sinan Sinanovic, Marco Di Renzo, Harald Haas, and Peter Grant. 2012. An energy saving base station employing spatial modulation. In 2012 IEEE 17th International Workshop on Computer Aided Modeling and Design of Communication Links and Networks (CAMAD). IEEE, 231–235.
[11]
Calin Vladeanu. 2012. Turbo trellis-coded spatial modulation. In 2012 IEEE Global Communications Conference (GLOBECOM). IEEE, 4024–4029.
[12]
Jintao Wang, Shuyun Jia, and Jian Song. 2012. Generalised spatial modulation system with multiple active transmit antennas and low complexity detection scheme. IEEE Transactions on Wireless Communications 11, 4(2012), 1605–1615.
[13]
Miaowen Wen, Beixiong Zheng, Kyeong Jin Kim, Marco Di Renzo, Theodoros A Tsiftsis, Kwang-Cheng Chen, and Naofal Al-Dhahir. 2019. A survey on spatial modulation in emerging wireless systems: Research progresses and applications. IEEE Journal on Selected Areas in Communications 37, 9(2019), 1949–1972.
[14]
Ping Yang, Yue Xiao, Ming Xiao, Yong Liang Guan, Shaoqian Li, and Wei Xiang. 2019. Adaptive spatial modulation MIMO based on machine learning. IEEE Journal on Selected Areas in Communications 37, 9(2019), 2117–2131.
[15]
Hao Ye, Geoffrey Ye Li, and Biing-Hwang Juang. 2017. Power of deep learning for channel estimation and signal detection in OFDM systems. IEEE Wireless Communications Letters 7, 1 (2017), 114–117.
[16]
Matthew D. Zeiler. 2012. ADADELTA: An Adaptive Learning Rate Method. CoRR abs/1212.5701(2012). arXiv:1212.5701http://arxiv.org/abs/1212.5701
[17]
Yue Zhang, Jintao Wang, Xuesi Wang, Yonglin Xue, and Jian Song. 2020. Efficient selection on spatial modulation antennas: Learning or boosting. IEEE Wireless Communications Letters 9, 8 (2020), 1249–1252.

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cover image ACM Other conferences
AIMLSystems '22: Proceedings of the Second International Conference on AI-ML Systems
October 2022
209 pages
ISBN:9781450398473
DOI:10.1145/3564121
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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Published: 16 May 2023

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Author Tags

  1. Deep Learning (DL)
  2. OFDM
  3. Spatial Modulation (SM)
  4. channel coding
  5. error correction
  6. neural network

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