Long-term prediction of chaotic systems with recurrent neural networks

6 Mar 2020Huawei FanJunjie JiangChun ZhangXingang WangYing-Cheng Lai

Reservoir computing systems, a class of recurrent neural networks, have recently been exploited for model-free, data-based prediction of the state evolution of a variety of chaotic dynamical systems. The prediction horizon demonstrated has been about half dozen Lyapunov time... (read more)

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