Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks

Perfect channel state information (CSI) is required in most of the classical physical-layer security techniques, while it is difficult to obtain the ideal CSI due to the time-varying wireless fading channel. Although imperfect CSI has a great impact on the security of MIMO communications, deep learn...

Full description

Bibliographic Details
Main Authors: Dan Deng, Xingwang Li, Ming Zhao, Khaled M. Rabie, Rupak Kharel
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/6/1730
id doaj-1c352dc9cd6d41079d3694f91704a796
record_format Article
spelling doaj-1c352dc9cd6d41079d3694f91704a7962020-11-25T01:44:36ZengMDPI AGSensors1424-82202020-03-01206173010.3390/s20061730s20061730Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous NetworksDan Deng0Xingwang Li1Ming Zhao2Khaled M. Rabie3Rupak Kharel4School of Information Engineering, Guangzhou Panyu Polytechnic, Guangzhou 511406, ChinaSchool of Physics and Electronic Information Engineering, Henan Polytechnic University, Jiaozuo 454000, ChinaCAS Key Laboratory of Wireless-Optical Communications, University of Science and Technology of China, Hefei 230027, ChinaDepartment of Engineering, Manchester Metropolitan University, Manchester M15 6BH, UKDepartment of Computing and Mathematics, Manchester Metropolitan University, Manchester M15 6BH, UKPerfect channel state information (CSI) is required in most of the classical physical-layer security techniques, while it is difficult to obtain the ideal CSI due to the time-varying wireless fading channel. Although imperfect CSI has a great impact on the security of MIMO communications, deep learning is becoming a promising solution to handle the negative effect of imperfect CSI. In this work, we propose two types of deep learning-based secure MIMO detectors for heterogeneous networks, where the macro base station (BS) chooses the null-space eigenvectors to prevent information leakage to the femto BS. Thus, the bit error rate of the associated user is adopted as the metric to evaluate the system performance. With the help of deep convolutional neural networks (CNNs), the macro BS obtains the refined version from the imperfect CSI. Simulation results are provided to validate the proposed algorithms. The impacts of system parameters, such as the correlation factor of imperfect CSI, the normalized doppler frequency, the number of antennas is investigated in different setup scenarios. The results show that considerable performance gains can be obtained from the deep learning-based detectors compared with the classical maximum likelihood algorithm.https://www.mdpi.com/1424-8220/20/6/1730physical-layer securitydeep learningimperfect csiheterogeneous networkschannel estimation
collection DOAJ
language English
format Article
sources DOAJ
author Dan Deng
Xingwang Li
Ming Zhao
Khaled M. Rabie
Rupak Kharel
spellingShingle Dan Deng
Xingwang Li
Ming Zhao
Khaled M. Rabie
Rupak Kharel
Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks
Sensors
physical-layer security
deep learning
imperfect csi
heterogeneous networks
channel estimation
author_facet Dan Deng
Xingwang Li
Ming Zhao
Khaled M. Rabie
Rupak Kharel
author_sort Dan Deng
title Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks
title_short Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks
title_full Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks
title_fullStr Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks
title_full_unstemmed Deep Learning-Based Secure MIMO Communications with Imperfect CSI for Heterogeneous Networks
title_sort deep learning-based secure mimo communications with imperfect csi for heterogeneous networks
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-03-01
description Perfect channel state information (CSI) is required in most of the classical physical-layer security techniques, while it is difficult to obtain the ideal CSI due to the time-varying wireless fading channel. Although imperfect CSI has a great impact on the security of MIMO communications, deep learning is becoming a promising solution to handle the negative effect of imperfect CSI. In this work, we propose two types of deep learning-based secure MIMO detectors for heterogeneous networks, where the macro base station (BS) chooses the null-space eigenvectors to prevent information leakage to the femto BS. Thus, the bit error rate of the associated user is adopted as the metric to evaluate the system performance. With the help of deep convolutional neural networks (CNNs), the macro BS obtains the refined version from the imperfect CSI. Simulation results are provided to validate the proposed algorithms. The impacts of system parameters, such as the correlation factor of imperfect CSI, the normalized doppler frequency, the number of antennas is investigated in different setup scenarios. The results show that considerable performance gains can be obtained from the deep learning-based detectors compared with the classical maximum likelihood algorithm.
topic physical-layer security
deep learning
imperfect csi
heterogeneous networks
channel estimation
url https://www.mdpi.com/1424-8220/20/6/1730
work_keys_str_mv AT dandeng deeplearningbasedsecuremimocommunicationswithimperfectcsiforheterogeneousnetworks
AT xingwangli deeplearningbasedsecuremimocommunicationswithimperfectcsiforheterogeneousnetworks
AT mingzhao deeplearningbasedsecuremimocommunicationswithimperfectcsiforheterogeneousnetworks
AT khaledmrabie deeplearningbasedsecuremimocommunicationswithimperfectcsiforheterogeneousnetworks
AT rupakkharel deeplearningbasedsecuremimocommunicationswithimperfectcsiforheterogeneousnetworks
_version_ 1725027684088545280