Data-driven forecasting of high-dimensional chaotic systems with long short-term memory networks 论文

2018Proceedings of the Royal Society A Mathematical Physical and Engineering Sciences引用 324
Neural Networks and ApplicationsNeural Networks and Reservoir ComputingChaos control and synchronization

详细信息

发表期刊/会议
Proceedings of the Royal Society A Mathematical Physical and Engineering Sciences
发表日期
2018-05-01
发表年份
2018

关键词

Neural Networks and ApplicationsNeural Networks and Reservoir ComputingChaos control and synchronization

摘要

We introduce a data-driven forecasting method for high-dimensional chaotic systems using long short-term memory (LSTM) recurrent neural networks. The proposed LSTM neural networks perform inference of high-dimensional dynamical systems in their reduced order space and are shown to be an effective set of nonlinear approximators of their attractor. We demonstrate the forecasting performance of the LSTM and compare it with Gaussian processes (GPs) in time series obtained from the Lorenz 96 system, the Kuramoto-Sivashinsky equation and a prototype climate model. The LSTM networks outperform the GPs in short-term forecasting accuracy in all applications considered. A hybrid architecture, extending the LSTM with a mean stochastic model (MSM-LSTM), is proposed to ensure convergence to the invariant measure. This novel hybrid method is fully data-driven and extends the forecasting capabilities of LSTM networks.

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