A Review on Deep Learning Autoencoder in the Design of Next-Generation Communication Systems
Traditional mathematical models used in designing next-generation communication systems often fall short due to inherent simplifications, narrow scope, and computational limitations. In recent years, the incorporation of deep learning (DL) methodologies into communication systems has made significan...
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Zusammenfassung: | Traditional mathematical models used in designing next-generation
communication systems often fall short due to inherent simplifications, narrow
scope, and computational limitations. In recent years, the incorporation of
deep learning (DL) methodologies into communication systems has made
significant progress in system design and performance optimisation.
Autoencoders (AEs) have become essential, enabling end-to-end learning that
allows for the combined optimisation of transmitters and receivers.
Consequently, AEs offer a data-driven methodology capable of bridging the gap
between theoretical models and real-world complexities. The paper presents a
comprehensive survey of the application of AEs within communication systems,
with a particular focus on their architectures, associated challenges, and
future directions. We examine 120 recent studies across wireless, optical,
semantic, and quantum communication fields, categorising them according to
transceiver design, channel modelling, digital signal processing, and
computational complexity. This paper further examines the challenges
encountered in the implementation of AEs, including the need for extensive
training data, the risk of overfitting, and the requirement for differentiable
channel models. Through data-driven approaches, AEs provide robust solutions
for end-to-end system optimisation, surpassing traditional mathematical models
confined by simplifying assumptions. This paper also summarises the
computational complexity associated with AE-based systems by conducting an
in-depth analysis employing the metric of floating-point operations per second
(FLOPS). This analysis encompasses the evaluation of matrix multiplications,
bias additions, and activation functions. This survey aims to establish a
roadmap for future research, emphasising the transformative potential of AEs in
the formulation of next-generation communication systems. |
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DOI: | 10.48550/arxiv.2412.13843 |