Deep Learning Channel Estimation for OFDM 5G Systems with Different Channel Models
-
Published:2022-10-21
Issue:4
Volume:128
Page:2891-2912
-
ISSN:0929-6212
-
Container-title:Wireless Personal Communications
-
language:en
-
Short-container-title:Wireless Pers Commun
Author:
Mohammed Aliaa Said MousaORCID, Taman Abdelkarim Ibrahim Abdelkarim, Hassan Ayman M., Zekry Abdelhalim
Abstract
AbstractAt cellular wireless communication systems, channel estimation (CE) is one of the key techniques that are used in Orthogonal Frequency Division Multiplexing modulation (OFDM). The most common methods are Decision‐Directed Channel Estimation, Pilot-Assisted Channel Estimation (PACE) and blind channel estimation. Among them, PACE is commonly used and has a steadier performance. Applying deep learning (DL) methods in CE is getting increasing interest of researchers during the past 3 years. The main objective of this paper is to assess the efficiency of DL-based CE compared to the conventional PACE techniques, such as least-square (LS) and minimum mean-square error (MMSE) estimators. A simulation environment to evaluate OFDM performance at different channel models has been used. A DL process that estimates the channel from training data is also employed to get the estimated impulse response of the channel. Two channel models have been used in the comparison: Tapped Delay Line and Clustered Delay Line channel models. The performance is evaluated under different parameters including number of pilots (64 pilots or 8 pilots), number of subcarriers (64), the length of cyclic prefix (16 or 0 samples) and carrier frequency (4 GHz) through computer simulation using MATLAB. From the simulation results, the trained DL estimator provides better results in estimating the channel and detecting the transmitted symbols compared to LS and MMSE estimators although, the complexity of the proposed LSTM estimator exceeds the equivalent LS estimator. Furthermore, the DL estimator also demonstrates its effectiveness with various pilot densities and with different cyclic prefix periods.
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering,Computer Science Applications
Reference33 articles.
1. Wang, F. (2011). Pilot-based channel estimation in OFDM system. Doctoral dissertation, University of Toledo. 2. Li, T. H., Khandaker, M. R., Tariq, F., Wong, K. K., & Khan, R. T. (2019). Learning the wireless V2I channels using deep neural networks. In 2019 IEEE 90th vehicular technology conference, VTC2019-Fall (pp. 1–5). IEEE. 3. Wang, T., Wen, C. K., Wang, H., Gao, F., Jiang, T., & Jin, S. (2017). Deep learning for wireless physical layer: Opportunities and challenges. China Communications, 14(11), 92–111. 4. Hu, Q., Gao, F. F., Zhang, H., Jin, S., & Li, G. Y. (2019). Deep learning for MIMO channel estimation: interpretation, performance, and comparison. arXiv preprint arXiv:1911.01918 5. Huang, H., Guo, S., Gui, G., Yang, Z., Zhang, J., Sari, H., & Adachi, F. (2019). Deep learning for physical-layer 5G wireless techniques: Opportunities, challenges and solutions. IEEE Wireless Communications, 27(1), 214–222.
Cited by
14 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|