Channel-Agnostic Training of Transmitter and Receiver for Wireless Communications

Sensors (Basel). 2023 Dec 15;23(24):9848. doi: 10.3390/s23249848.

Abstract

Wireless communications systems are traditionally designed by independently optimising signal processing functions based on a mathematical model. Deep learning-enabled communications have demonstrated end-to-end design by jointly optimising all components with respect to the communications environment. In the end-to-end approach, an assumed channel model is necessary to support training of the transmitter and receiver. This limitation has motivated recent work on over-the-air training to explore disjoint training for the transmitter and receiver without an assumed channel. These methods approximate the channel through a generative adversarial model or perform gradient approximation through reinforcement learning or similar methods. However, the generative adversarial model adds complexity by requiring an additional discriminator during training, while reinforcement learning methods require multiple forward passes to approximate the gradient and are sensitive to high variance in the error signal. A third, collaborative agent-based approach relies on an echo protocol to conduct training without channel assumptions. However, the coordination between agents increases the complexity and channel usage during training. In this article, we propose a simpler approach for disjoint training in which a local receiver model approximates the remote receiver model and is used to train the local transmitter. This simplified approach performs well under several different channel conditions, has equivalent performance to end-to-end training, and is well suited to adaptation to changing channel environments.

Keywords: channel free training; deep learning; neural networks; over-the-air training; wireless communications.

Grants and funding

This research is supported by UniSQ-DSTG Postgraduate Research Scholarship 2021–2024 on the ‘Design of Efficient Artificial Intelligence Algorithms for Future Communication Systems’. It is funded by the Department of Defence, Commonwealth of Australia under DSP Scholarship (Project-Based) Agreement 10254.