Minghua CaoRuifang YaoXia JiepingKejun JiaHuiqin Wang
In order to improve the accuracy of signal recovery after transmitting over atmospheric turbulence channel, a deep-learning-based signal detection method is proposed for a faster-than-Nyquist (FTN) hybrid modulated optical wireless communication (OWC) system. It takes advantage of the long short-term memory (LSTM) network in the recurrent neural network (RNN) to alleviate the interdependence problem of adjacent symbols. Moreover, an LSTM attention decoder is constructed by employing the attention mechanism, which can alleviate the shortcomings in conventional LSTM. The simulation results show that the bit error rate (BER) performance of the proposed LSTM attention neural network is 1 dB better than that of the back propagation (BP) neural network and outperforms by 2.5 dB when compared with the maximum likelihood sequence estimation (MLSE) detection method.
Xia JiepingMinghua CaoHuiqin WangHongtao ZhouYan Qiu
Minghua CaoRuifang YaoQinxue SunYue ZhangQing YangHuiqin Wang
Xiaowei YueXingyu ZhangZhenpeng WuYue ZhangHuiqin WangMinghua Cao
Minghua CaoQing YangGuanghui ZhouYue ZhangXia ZhangHuiqin Wang
Xingyu ZhangCao MinghuaZhang YueZhou LuxiaLingyun ZhangHuiqin Wang