Title
Cascade-Net: a New Deep Learning Architecture for OFDM Detection.
Abstract
In this paper, we consider using deep neural network for OFDM symbol detection and demonstrate its performance advantages in combating large Doppler Shift. In particular, a new architecture named Cascade-Net is proposed for detection, where deep neural network is cascading with a zero-forcing preprocessor to prevent the network stucking in a saddle point or a local minimum point. In addition, we propose a sliding detection approach in order to detect OFDM symbols with large number of subcarriers. We evaluate this new architecture, as well as the sliding algorithm, using the Rayleigh channel with large Doppler spread, which could degrade detection performance in an OFDM system and is especially severe for high frequency band and mmWave communications. The numerical results of OFDM detection in SISO scenario show that cascade-net can achieve better performance than zero-forcing method while providing robustness against ill conditioned channels. We also show the better performance of the sliding cascade network (SCN) compared to sliding zero-forcing detector through numerical simulation.
Year
Venue
DocType
2018
arXiv: Signal Processing
Journal
Volume
Citations 
PageRank 
abs/1812.00023
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Qisheng Huang100.68
Chunming Zhao267164.30
Ming Jiang319831.08
Xiaoming Li410712.42
Jing Liang51910.54