An approach to the time-accurate prediction of chaotic solutions is by learning temporal patterns from data. Echo State Networks (ESNs), which are a class of Reservoir Computing, can accurately predict the chaotic dynamics well beyond the predictability time. Existing studies, however, also showed that small changes in the hyperparameters may markedly affect the network's performance. The aim of this paper is to assess and improve the robustness of Echo State Networks for the time-accurate prediction of chaotic solutions. The goal is three-fold. First, we investigate the robustness of routinely used validation strategies. Second, we propose the Recycle Validation, and the chaotic versions of existing validation strategies, to specifically tackle the forecasting of chaotic systems. Third, we compare Bayesian optimization with the traditional Grid Search for optimal hyperparameter selection. Numerical tests are performed on two prototypical nonlinear systems that have both chaotic and quasiperiodic solutions. Both model-free and model-informed Echo State Networks are analysed. By comparing the network's robustness in learning chaotic versus quasiperiodic solutions, we highlight fundamental challenges in learning chaotic solutions. The proposed validation strategies, which are based on the dynamical systems properties of chaotic time series, are shown to outperform the state-of-the-art validation strategies. Because the strategies are principled-they are based on chaos theory such as the Lyapunov time-they can be applied to other Recurrent Neural Networks architectures with little modification. This work opens up new possibilities for the robust design and application of Echo State Networks, and Recurrent Neural Networks, to the time-accurate prediction of chaotic systems.
翻译:对混乱的解决方案进行时间准确预测的方法是从数据中学习时间规律; 热电州网络(ESNs)是“回收计算”的一类,可以准确地预测远超出可预测性时间的混乱动态; 然而,现有的研究还显示,超参数的微小变化可能明显影响网络的运行。 本文的目的是评估并改进回声国家网络的稳健性,以便及时预测混乱的解决方案。 目标为三重。 首先,我们调查常规使用的验证战略的稳健性。 其次,我们建议重新循环校正,以及现有验证战略的混乱版本,以具体应对混乱系统的预测。 第三,我们将贝氏优化与传统的网格搜索最佳超光度参数选择进行对比。 数字测试是对两种原始的非线性非线性系统进行的,这些系统既有混乱,也有半定期解决方案。 通过比较网络在学习混乱和准周期解决方案方面的稳健健性,我们突出当前验证战略在学习混乱的时序设计中遇到的基本挑战。 拟议的校正战略是以动态结构为基础, 是动态的校正战略,其基础是动态的校正的校正战略。