Applications of Deep Learning to the Design of Enhanced Wireless Communication Systems
Mathieu Goutay

TL;DR
This paper compares neural network-based, end-to-end autoencoder, and hybrid deep learning strategies for enhancing wireless communication systems, highlighting their advantages, limitations, and potential for practical deployment.
Contribution
It introduces and evaluates three deep learning approaches for physical layer design, demonstrating their respective benefits and trade-offs in wireless communication systems.
Findings
DL-based MU-MIMO detector improves BER over traditional methods
End-to-end autoencoder design achieves high throughput with PAPR and ACLR constraints
Hybrid approach offers scalable, low-error performance in multi-user scenarios
Abstract
Innovation in the physical layer of communication systems has traditionally been achieved by breaking down the transceivers into sets of processing blocks, each optimized independently based on mathematical models. Conversely, deep learning (DL)-based systems are able to handle increasingly complex tasks for which no tractable models are available. This thesis aims at comparing different approaches to unlock the full potential of DL in the physical layer. First, we describe a neural network (NN)-based block strategy, where an NN is optimized to replace a block in a communication system. We apply this strategy to introduce a multi-user multiple-input multiple-output (MU-MIMO) detector that builds on top of an existing DL-based architecture. Second, we detail an end-to-end strategy, in which the transmitter and receiver are modeled as an autoencoder. This approach is illustrated with…
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Taxonomy
TopicsWireless Signal Modulation Classification · Blind Source Separation Techniques · Antenna Design and Optimization
