DRL-based Power Allocation in LiDAL-Assisted RLNC-NOMA OWC Systems
Ahmed A. Hassan, Ahmad Adnan Qidan, Taisir Elgorashi, Jaafar Elmirghani

TL;DR
This paper proposes a DRL-based power allocation method for LiDAL-assisted RLNC-NOMA optical wireless systems, improving sum rate efficiency and computational speed in dense-user scenarios.
Contribution
It introduces a novel DRL framework using NAF for power allocation in complex LiDAL-RLNC-NOMA systems, outperforming existing algorithms.
Findings
NAF closely matches exhaustive search performance.
NAF is 39% faster than DDPG.
Sum rate improves by 4.6% over GRPA.
Abstract
Non-orthogonal multiple access (NOMA) is a promising technique for optical wireless communication (OWC), enabling multiple users to share the optical spectrum simultaneously through the power domain. However, imperfect channel state information (CSI) and residual decoding errors deteriorate NOMA performance, especially in realistic dense-user indoor scenarios. In this work, we model an OWC system that integrates light detection and localization (LiDAL) and random linear network coding (RLNC) within a NOMA framework. LiDAL exploits spatio-temporal information to improve user CSI, while RLNC enhances data resilience in the successive decoding process, resulting in a LiDAL-assisted RLNC-NOMA OWC system. Power allocation (PA) is crucial in this system due to complex interactions between multiple users and the coding and detection processes, but optimizing continuous PA dynamically can be…
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