Model-Driven Deep Learning for Physical Layer Communications

被引:324
作者
He, Hengtao [1 ]
Jin, Shi [2 ]
Wen, Chao-Kai [3 ]
Gao, Feifei [4 ,5 ]
Li, Geoffrey Ye [6 ]
Xu, Zongben [7 ]
机构
[1] Southeast Univ, Informat & Commun Engn, Nanjing, Jiangsu, Peoples R China
[2] Southeast Univ, Natl Mobile Commun Res Lab, Nanjing, Jiangsu, Peoples R China
[3] Natl Sun Yat Sen Univ, Inst Commun Engn, Hsinchu, Taiwan
[4] Tsinghua Univ, Dept Automat, Beijing, Peoples R China
[5] Beijing Natl Res Ctr Informat, Beijing, Peoples R China
[6] Georgia Inst Technol, Atlanta, GA 30332 USA
[7] Xi An Jiao Tong Univ, Xian, Shaanxi, Peoples R China
基金
美国国家科学基金会; 中国国家自然科学基金;
关键词
Receivers; OFDM; Wireless communication; Physical layer; Neural networks; Mathematical model; CHANNEL ESTIMATION;
D O I
10.1109/MWC.2019.1800447
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Intelligent communication is gradually becoming a mainstream direction. As a major branch of machine learning, deep learning (DL) has been applied in physical layer communications and has demonstrated an impressive performance improvement in recent years. However, most existing works related to DL focus on data-driven approaches, which consider the communication system as a black box and train it by using a huge volume of data. Training a network requires sufficient computing resources and extensive time, both of which are rarely found in communication devices. By contrast, model-driven DL approaches combine communication domain knowledge with DL to reduce the demand for computing resources and training time. This article discusses the recent advancements in model-driven DL approaches in physical layer communications, including transmission schemes, receiver design, and channel information recovery. Several open issues for future research are also highlighted.
引用
收藏
页码:77 / 83
页数:7
相关论文
共 20 条
[11]   An Introduction to Deep Learning for the Physical Layer [J].
O'Shea, Timothy ;
Hoydis, Jakob .
IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2017, 3 (04) :563-575
[12]   On a Novel Deep-Learning-Based Intelligent Partially Overlapping Channel Assignment in SDN-IoT [J].
Tang, Fengxiao ;
Mao, Bomin ;
Fadlullah, Zubair Md. ;
Kato, Nei .
IEEE COMMUNICATIONS MAGAZINE, 2018, 56 (09) :80-86
[13]   ON REMOVING ROUTING PROTOCOL FROM FUTURE WIRELESS NETWORKS: A REAL-TIME DEEP LEARNING APPROACH FOR INTELLIGENT TRAFFIC CONTROL [J].
Tang, Fengxiao ;
Mao, Bomin ;
Fadlullah, Zubair Md. ;
Kato, Nei ;
Akashi, Osamu ;
Inoue, Takeru ;
Mizutani, Kimihiro .
IEEE WIRELESS COMMUNICATIONS, 2018, 25 (01) :154-160
[14]   Deep Learning-Based CSI Feedback Approach for Time-Varying Massive MIMO Channels [J].
Wang, Tianqi ;
Wen, Chao-Kai ;
Jin, Shi ;
Li, Geoffrey Ye .
IEEE WIRELESS COMMUNICATIONS LETTERS, 2019, 8 (02) :416-419
[15]   Deep Learning for Wireless Physical Layer: Opportunities and Challenges [J].
Wang, Tianqi ;
Wen, Chao-Kai ;
Wang, Hanqing ;
Gao, Feifei ;
Jiang, Tao ;
Jin, Shi .
CHINA COMMUNICATIONS, 2017, 14 (11) :92-111
[16]   Deep Learning for Massive MIMO CSI Feedback [J].
Wen, Chao-Kai ;
Shih, Wan-Ting ;
Jin, Shi .
IEEE WIRELESS COMMUNICATIONS LETTERS, 2018, 7 (05) :748-751
[17]   Model-driven deep-learning [J].
Xu, Zongben ;
Sun, Jian .
NATIONAL SCIENCE REVIEW, 2018, 5 (01) :22-24
[18]  
Ye H., 2018, P IEEE GLOB COMM C A
[19]   Deep Reinforcement Learning Based Resource Allocation for V2V Communications [J].
Ye, Hao ;
Li, Geoffrey Ye ;
Juang, Biing-Hwang Fred .
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2019, 68 (04) :3163-3173
[20]   Power of Deep Learning for Channel Estimation and Signal Detection in OFDM Systems [J].
Ye, Hao ;
Li, Geoffrey Ye ;
Juang, Biing-Hwang .
IEEE WIRELESS COMMUNICATIONS LETTERS, 2018, 7 (01) :114-117