Neural Network Detection of Data Sequences in Communication Systems

被引:272
作者
Farsad, Nariman [1 ]
Goldsmith, Andrea [1 ]
机构
[1] Stanford Univ, Dept Elect Engn, Stanford, CA 94305 USA
关键词
Machine learning; deep learning; supervised learning; communication systems; detection; optical communication; free-space optical communication; molecular communication; DIFFUSIVE MOLECULAR COMMUNICATION; MULTIUSER DETECTION; CHANNELS; CAPACITY; CANCER;
D O I
10.1109/TSP.2018.2868322
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
We consider detection based on deep learning, and show it is possible to train detectors that perform well without any knowledge of the underlying channel models. Moreover, when the channel model is known, we demonstrate that it is possible to train detectors that do not require channel state information (CSI). In particular, a technique we call a sliding bidirectional recurrent neural network (SBRNN) is proposed for detection where, after training, the detector estimates the data in real time as the signal stream arrives at the receiver. We evaluate this algorithm, as well as other neural network (NN) architectures, using the Poisson channel model, which is applicable to both optical and molecular communication systems. In addition, we also evaluate the performance of this detection method applied to data sent over a molecular communication platform, where the channel model is difficult to model analytically. We show that SBRNN is computationally efficient, and can perform detection under various channel conditions without knowing the underlying channel model. We also demonstrate that the hit error rate performance of the proposed SBRNN detector is better than that of a Viterbi detector with imperfect CSI as well as that of other NN detectors that have been previously proposed. Finally, we show that the SBRNN can perform well in rapidly changing channels, where the coherence time is on the order of a single symbol duration.
引用
收藏
页码:5663 / 5678
页数:16
相关论文
共 66 条
[11]  
Cammerer S., 2017, GLOBECOM 2017 2017 I, P1, DOI DOI 10.1109/GLOCOM.2017.8254811
[12]   Capacity-Achieving Distributions for the Discrete-Time Poisson Channel-Part I: General Properties and Numerical Techniques [J].
Cao, Jihai ;
Hranilovic, Steve ;
Chen, Jun .
IEEE TRANSACTIONS ON COMMUNICATIONS, 2014, 62 (01) :194-202
[13]  
Cho K., 2014, P C EMPIRICAL METHOD, P1724, DOI 10.3115/
[14]  
Cover T. M., 1999, Elements of Information Theory, DOI 10.1002/0471200611
[15]  
Dahlman E., 2013, 4G:LTE/LTE-Advanced for Mobile Broadband
[16]   Programmable probiotics for detection of cancer in urine [J].
Danino, Tal ;
Prindle, Arthur ;
Kwong, Gabriel A. ;
Skalak, Matthew ;
Li, Howard ;
Allen, Kaitlin ;
Hasty, Jeff ;
Bhatia, Sangeeta N. .
SCIENCE TRANSLATIONAL MEDICINE, 2015, 7 (289)
[17]  
Debnath L, 2012, NONLINEAR PARTIAL DIFFERENTIAL EQUATIONS FOR SCIENTISTS AND ENGINEERS, THIRD EDITION, P1, DOI 10.1007/978-0-8176-8265-1
[18]   Modeling of Non-Line-of-Sight Ultraviolet Scattering Channels for Communication [J].
Ding, Haipeng ;
Chen, Gang ;
Majumdar, Arun K. ;
Sadler, Brian M. ;
Xu, Zhengyuan .
IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2009, 27 (09) :1535-1544
[19]   Deep Learning Based Communication Over the Air [J].
Doerner, Sebastian ;
Cammerer, Sebastian ;
Hoydis, Jakob ;
ten Brink, Stephan .
IEEE JOURNAL OF SELECTED TOPICS IN SIGNAL PROCESSING, 2018, 12 (01) :132-143
[20]  
Farsad N., 2017, P IEEE GLOB COMM C G, P1, DOI DOI 10.1109/GLOCOM.2017.8255058