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arxiv: 2106.12770 · v1 · pith:VQV6NXQ4new · submitted 2021-06-24 · 📡 eess.SP

Deep Learning-Aided OFDM-Based Generalized Optical Quadrature Spatial Modulation

classification 📡 eess.SP
keywords detectiongoqsmdeepofdm-basedopticalsystemsamplificationeffects
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In this paper, we propose an orthogonal frequency division multiplexing (OFDM)-based generalized optical quadrature spatial modulation (GOQSM) technique for multiple-input multiple-output optical wireless communication (MIMO-OWC) systems. Considering the error propagation and noise amplification effects when applying maximum likelihood and maximum ratio combining (ML-MRC)-based detection, we further propose a deep neural network (DNN)-aided detection for OFDM-based GOQSM systems. The proposed DNN-aided detection scheme performs the GOQSM detection in a joint manner, which can efficiently eliminate the adverse effects of both error propagation and noise amplification. The obtained simulation results successfully verify the superiority of the deep learning-aided OFDM-based GOQSM technique for high-speed MIMO-OWC systems.

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