Online Meta-Learning Channel Autoencoder for Dynamic End-to-end Physical Layer Optimization
Ali Owfi, Jonathan Ashdown, Kurt Turck, Fatemeh Afghah

TL;DR
This paper introduces OML-CAE, an online meta-learning framework that enables rapid adaptation of channel autoencoders to dynamic wireless channels using few pilot signals, addressing practical deployment challenges.
Contribution
It proposes a novel online meta-learning approach for CAEs, improving their adaptability and pilot efficiency in dynamic, real-world wireless communication scenarios.
Findings
Enhanced adaptability to changing channels.
Reduced pilot signal requirements for training.
Improved real-time performance in dynamic environments.
Abstract
Channel Autoencoders (CAEs) have shown significant potential in optimizing the physical layer of a wireless communication system for a specific channel through joint end-to-end training. However, the practical implementation of CAEs faces several challenges, particularly in realistic and dynamic scenarios. Channels in communication systems are dynamic and change with time. Still, most proposed CAE designs assume stationary scenarios, meaning they are trained and tested for only one channel realization without regard for the dynamic nature of wireless communication systems. Moreover, conventional CAEs are designed based on the assumption of having access to a large number of pilot signals, which act as training samples in the context of CAEs. However, in real-world applications, it is not feasible for a CAE operating in real-time to acquire large amounts of training samples for each new…
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Taxonomy
TopicsAdvanced Sensor and Control Systems · Image Processing Techniques and Applications
MethodsAutoencoders
