论文标题

学习看不见的共存吸引者

Learning unseen coexisting attractors

论文作者

Gauthier, Daniel J., Fischer, Ingo, Röhm, André

论文摘要

储层计算是一种机器学习方法,可以生成动态系统的替代模型。它可以使用更少的可训练参数来学习基础动力系统,从而比竞争方法更少。最近,一种更简单的公式(称为下一代储层计算)可以除去许多算法的元掌握器,并识别出良好的传统储层计算机,从而进一步简化了培训。在这里,我们研究了一个特别具有挑战性的问题,即学习具有不同时间尺度和多个共存动态状态(吸引子)的动态系统。我们使用量化地面真相和预测吸引子的几何形状的指标比较了下一代和传统的储层计算机。 For the studied four-dimensional system, the next-generation reservoir computing approach uses $\sim 1.7 \times$ less training data, requires $10^3 \times$ shorter `warm up' time, has fewer metaparameters, and has an $\sim 100\times$ higher accuracy in predicting the co-existing attractor characteristics in comparison to a traditional reservoir computer.此外,我们证明它以高精度预测吸引人的盆地。这项工作为动态系统的这种新机器学习算法的出色学习能力提供了进一步的支持。

Reservoir computing is a machine learning approach that can generate a surrogate model of a dynamical system. It can learn the underlying dynamical system using fewer trainable parameters and hence smaller training data sets than competing approaches. Recently, a simpler formulation, known as next-generation reservoir computing, removes many algorithm metaparameters and identifies a well-performing traditional reservoir computer, thus simplifying training even further. Here, we study a particularly challenging problem of learning a dynamical system that has both disparate time scales and multiple co-existing dynamical states (attractors). We compare the next-generation and traditional reservoir computer using metrics quantifying the geometry of the ground-truth and forecasted attractors. For the studied four-dimensional system, the next-generation reservoir computing approach uses $\sim 1.7 \times$ less training data, requires $10^3 \times$ shorter `warm up' time, has fewer metaparameters, and has an $\sim 100\times$ higher accuracy in predicting the co-existing attractor characteristics in comparison to a traditional reservoir computer. Furthermore, we demonstrate that it predicts the basin of attraction with high accuracy. This work lends further support to the superior learning ability of this new machine learning algorithm for dynamical systems.

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