L63系统观测变量不完全时储层计算机预测层位估计

IF 2.6 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Physics Complexity Pub Date : 2023-05-03 DOI:10.1088/2632-072X/acd21c
Yu Huang, Zuntao Fu
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引用次数: 0

摘要

水库计算机(RC)是一种有吸引力的神经计算框架,可以很好地预测混沌系统的动力学。以前对RC性能的了解是建立在混沌系统中所有变量都被完全观察到的情况下。然而,在实际情况下,从动力系统观察到的变量通常是不完整的,其中缺乏对RC性能的理解。本文利用平均误差增长曲线来估计Lorenz63系统(L63)的RC预测水平,并特别研究了单变量时间序列的情况。结果表明,RC的预测水平优于L63的局部动态类似物,并且状态空间嵌入技术可以在观测不完全的情况下提高RC的预测水平。然后,我们在更复杂的系统上验证了结论,并将该方法推广到估计大气环流指数的季节内可预测性。这些结果可以为未来RC的发展和应用提供指示。
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Estimating prediction horizon of reservoir computer on L63 system when observed variables are incomplete
Reservoir computer (RC) is an attractive neural computing framework that can well predict the dynamics of chaotic systems. Previous knowledge of the RC performance is established on the case that all variables in a chaotic system are completely observed. However, in practical circumstances the observed variables from a dynamical system are usually incomplete, among which there is a lack of understanding of the RC performance. Here we utilize mean error growth curve to estimate the RC prediction horizon on the Lorenz63 system (L63), and particularly we investigate the scenario of univariate time series. Our results demonstrate that the prediction horizon of RC outperforms that of local dynamical analogs of L63, and the state-space embedding technique can improve the RC prediction in case of incomplete observations. We then test the conclusion on the more complicated systems, and extend the method to estimate the intraseasonal predictability of atmospheric circulation indices. These results could provide indications for future developments and applications of the RC.
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来源期刊
Journal of Physics Complexity
Journal of Physics Complexity Computer Science-Information Systems
CiteScore
4.30
自引率
11.10%
发文量
45
审稿时长
14 weeks
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