Visible Light Communication (VLC) provides an energy-efficient wireless solution by using existing LED-based illumination for high-speed data transmissions. Although solar cells offer the advantage of simultaneous energy harvesting and data reception, their broadband nature hinders accurate decoding of color-coded signals like Color Shift Keying (CSK). In this paper, we propose a novel approach exploiting the concept of tandem solar cells, multi-layer devices with partial wavelength selectivity, to capture coarse color information without resorting to energy-limiting color filters. To address the residual spectral overlap, we develop a bidirectional LSTM-based machine learning framework that infers channel characteristics by comparing solar cells' photovoltaic signals with pilot-based anchor data. Our commercial off-the-shelf (COTS) solar prototype achieves robust performance across varying distances and ambient lighting levels, significantly reducing bit error rates compared to conventional channel estimation methods. These findings mark a step toward sustainable, high-performance VLC systems powered by the multi-layer solar technologies.
@article{arxiv.2505.10226,
title = {Solar-CSK: Decoding Color Coded Visible Light Communications using Solar Cells},
author = {Yanxiang Wang and Yihe Yan and Jiawei Hu and Cheng Jiang and Brano Kusy and Ashraf Uddin and Mahbub Hassan and Wen Hu},
journal= {arXiv preprint arXiv:2505.10226},
year = {2025}
}