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Deep Learning Based End-to-End Optical Wireless Communication Systems With Autoencoders

Hossein Safi, Iman Tavakkolnia, Harald Haas

2024IEEE Communications Letters15 citationsDOIOpen Access PDF

Abstract

The utilization of neural network-based autoencoders (AEs) for the implementation of the physical layer in communication systems has recently emerged as a promising technique for achieving end-to-end optimization of communication links. However, applying conventional AE architecture to intensity modulation/direct detection optical wireless systems is challenging due to positive real-value constraint, eye safety standards, and the limited dynamic range of light sources. To address these issues, in this paper we propose a practical architecture, namely differential AE, that incorporates the concept of differential signaling. This approach allows the transmission of negative encoder output elements. In a shot-noise limited scenario, we assess and compare the performance of the differential AE with state-of-the-art works in the optical wireless domain, highlighting the superior bit-error ratio achieved by the differential AE.

Topics & Concepts

End-to-end principleComputer scienceWirelessComputer networkDeep learningArtificial intelligenceTelecommunicationsAdvanced Photonic Communication SystemsOptical Network TechnologiesSemiconductor Lasers and Optical Devices