Model-driven deep learning for physical layer communications

  • Hengtao He
  • , Shi Jin
  • , Chao Kai Wen
  • , Feifei Gao
  • , Geoffrey Ye Li
  • , Zongben Xu

Research output: Contribution to journalArticlepeer-review

401 Scopus citations

Abstract

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.

Original languageEnglish
Article number8715338
Pages (from-to)77-83
Number of pages7
JournalIEEE Wireless Communications
Volume26
Issue number5
DOIs
StatePublished - Oct 2019

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