作者
Danshi Wang, Min Zhang, Zhongle Cai, Yue Cui, Ze Li, Huanhuan Han, Meixia Fu, Bin Luo
发表日期
2016/6/15
期刊
Optics Communications
卷号
369
页码范围
199-208
出版商
North-Holland
简介
An effective machine learning algorithm, the support vector machine (SVM), is presented in the context of a coherent optical transmission system. As a classifier, the SVM can create nonlinear decision boundaries to mitigate the distortions caused by nonlinear phase noise (NLPN). Without any prior information or heuristic assumptions, the SVM can learn and capture the link properties from only a few training data. Compared with the maximum likelihood estimation (MLE) algorithm, a lower bit-error rate (BER) is achieved by the SVM for a given launch power; moreover, the launch power dynamic range (LPDR) is increased by 3.3 dBm for 8 phase-shift keying (8 PSK), 1.2 dBm for QPSK, and 0.3 dBm for BPSK. The maximum transmission distance corresponding to a BER of 1× 10− 3 is increased by 480 km for the case of 8 PSK. The larger launch power range and longer transmission distance improve the tolerance to …
引用总数
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