作者
Pedro Freire, Jaroslaw E Prilepsky, Yevhenii Osadchuk, Sergei K Turitsyn, Vahid Aref
发表日期
2022/10/10
期刊
IEEE Transactions on Communications
卷号
70
期号
12
页码范围
7973-7988
出版商
IEEE
简介
We examine here what type of predictive modelling, classification, or regression, using neural networks (NN), fits better the task of soft-demapping based post-processing in coherent optical communications, where the transmission channel is nonlinear and dispersive. For the first time, we present possible drawbacks in using each type of predictive task in a machine learning context, considering the nonlinear coherent optical channel equalization/soft-demapping problem. We study two types of equalizers based on the feed-forward and recurrent NNs, for several transmission scenarios, in linear and nonlinear regimes of the optical channel. We point out that even though from the information theory perspective the cross-entropy loss (classification) is the most suitable option for our problem, the NN models based on the cross-entropy loss function can severely suffer from learning problems. The latter translates into …
引用总数
20212022202320241583
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