Litcius/Paper detail

A deep learning-aided temporal spectral ChannelNet for IEEE 802.11p-based channel estimation in vehicular communications

Xuchen Zhu, Zhichao Sheng, Yong Fang, Denghong Guo

2020EURASIP Journal on Wireless Communications and Networking21 citationsDOIOpen Access PDF

Abstract

Abstract In vehicular communications using IEEE 802.11p, estimating channel frequency response (CFR) is a remarkably challenging task. The challenge for channel estimation (CE) lies in tracking variations of CFR due to the extremely fast time-varying characteristic of channel and low density pilot. To tackle such problem, inspired by image super-resolution (ISR) techniques, a deep learning-based temporal spectral channel network (TS-ChannelNet) is proposed. Following the process of ISR, an average decision-directed estimation with time truncation (ADD-TT) is first presented to extend pilot values into tentative CFR, thus tracking coarsely variations. Then, to make tentative CFR values accurate, a super resolution convolutional long short-term memory (SR-ConvLSTM) is utilized to track channel extreme variations by extracting sufficiently temporal spectral correlation of data symbols. Three representative vehicular environments are investigated to demonstrate the performance of our proposed TS-ChannelNet in terms of normalized mean square error (NMSE) and bit error rate (BER). The proposed method has an evident performance gain over existing methods, reaching about 84.5% improvements at some high signal-noise-ratio (SNR) regions.

Topics & Concepts

Computer scienceChannel (broadcasting)IEEE 802.11pReal-time computingArtificial intelligenceAlgorithmTelecommunicationsVehicular ad hoc networkWirelessWireless ad hoc networkWireless Signal Modulation ClassificationSpeech and Audio ProcessingMillimeter-Wave Propagation and Modeling