We investigate end-to-end optimized optical transmission systems based on feedforward or bidirectional recurrent neural networks (BRNN) and deep learning. In particular, we report the first experimental demonstration of a BRNN auto-encoder, highlighting the performance improvement achieved with recurrent processing for communication over dispersive nonlinear channels.
翻译:我们调查基于进料或双向经常性神经网络(BRNN)和深层学习的端对端优化光学传输系统。 我们尤其报告了BRNN自动编码器的首次实验性示范,强调了通过对分散的非线性频道进行经常性通信处理而实现的绩效改进。