We develop an auto-reservoir computing framework, Auto-Reservoir Neural Network (ARNN), to efficiently and accurately make multi-step-ahead predictions based on a short-term high-dimensional time series. Different from traditional reservoir computing whose reservoir is an external dynamical system irrelevant to the target system, ARNN directly transforms the observed high-dimensional dynamics as its reservoir, which maps the high-dimensional/spatial data to the future temporal values of a target variable based on our spatiotemporal information (STI) transformation. Thus, the multi-step prediction of the target variable is achieved in an accurate and computationally efficient manner. ARNN is successfully applied to both representative models and real-world datasets, all of which show satisfactory performance in the multi-step-ahead prediction, even when the data are perturbed by noise and when the system is time-varying. Actually, such ARNN transformation equivalently expands the sample size and thus has great potential in practical applications in artificial intelligence and machine learning.
Autoreservoir computing for multistep ahead prediction based on the spatiotemporal information transformation.
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作者:Chen Pei, Liu Rui, Aihara Kazuyuki, Chen Luonan
| 期刊: | Nature Communications | 影响因子: | 15.700 |
| 时间: | 2020 | 起止号: | 2020 Sep 11; 11(1):4568 |
| doi: | 10.1038/s41467-020-18381-0 | ||
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