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AI-Aided Online Adaptive OFDM Receiver: Design and Experimental Results

Peiwen Jiang, Tianqi Wang, Bin Han, Xuanxuan Gao, Jing Zhang, Chao-Kai Wen, Shi Jin, Geoffrey Ye Li

2021IEEE Transactions on Wireless Communications62 citationsDOIOpen Access PDF

Abstract

Orthogonal frequency division multiplexing (OFDM) has been widely applied in many wireless communi- cation systems. The artificial intelligence (AI)-aided OFDM receivers are currently brought to the forefront to replace and improve the traditional OFDM receivers. In this paper, we first compare two AI-aided OFDM receivers, namely, data-driven fully connected deep neural network and model-driven ComNet, through extensive simulation and real-time video transmission using a 5G rapid prototyping system for an over-the-air (OTA) test. We find a performance gap between the simulation and the OTA test caused by the discrepancy between the channel model for offline training and the real environment. We develop a novel online training system, which is called SwitchNet receiver, to address this issue. This receiver has a flexible and extendable architecture and can adapt to real channels by training only several parameters online. From the OTA test, the AI-aided OFDM receivers, especially the SwitchNet receiver, are robust to OTA environments and promising for future communication systems. At the end of this paper, we discuss potential challenges and future research inspired by our initial study in this paper.

Topics & Concepts

Orthogonal frequency-division multiplexingComputer scienceChannel (broadcasting)Transmission (telecommunications)WirelessArtificial neural networkMultiplexingReal-time computingElectronic engineeringWireless networkFrequency-division multiplexingComputer engineeringComputer architectureNetwork architectureData transmissionArchitectureComputer networkArtificial intelligenceKey (lock)Wireless Signal Modulation ClassificationPAPR reduction in OFDMAdvanced Wireless Communication Techniques