Doan N A K, Polifke W, Magri L
Institute for Advanced Study, Technical University of Munich, Lichtenbergstrasse 2a, 85748 Garching, Germany.
Department of Mechanical Engineering, Technical University of Munich, Boltzmannstrasse 15, 85748 Garching, Germany.
Proc Math Phys Eng Sci. 2021 Sep;477(2253):20210135. doi: 10.1098/rspa.2021.0135. Epub 2021 Sep 1.
We propose a physics-constrained machine learning method-based on reservoir computing-to time-accurately predict extreme events and long-term velocity statistics in a model of chaotic flow. The method leverages the strengths of two different approaches: empirical modelling based on reservoir computing, which the chaotic dynamics from data only, and physical modelling based on conservation laws. This enables the reservoir computing framework to output physical predictions when training data are unavailable. We show that the combination of the two approaches is able to accurately reproduce the velocity statistics, and to predict the occurrence and amplitude of extreme events in a model of self-sustaining process in turbulence. In this flow, the extreme events are abrupt transitions from turbulent to quasi-laminar states, which are deterministic phenomena that cannot be traditionally predicted because of chaos. Furthermore, the physics-constrained machine learning method is shown to be robust with respect to noise. This work opens up new possibilities for synergistically enhancing data-driven methods with physical knowledge for the time-accurate prediction of chaotic flows.
我们提出了一种基于储层计算的物理约束机器学习方法,用于在混沌流模型中对极端事件和长期速度统计进行时间精确预测。该方法利用了两种不同方法的优势:基于储层计算的经验建模,它仅从数据中获取混沌动力学;以及基于守恒定律的物理建模。这使得储层计算框架在没有训练数据时也能输出物理预测结果。我们表明,这两种方法的结合能够准确再现速度统计,并预测湍流中自维持过程模型中极端事件的发生和幅度。在这种流动中,极端事件是从湍流状态到准层流状态的突然转变,这是由于混沌而无法传统预测的确定性现象。此外,物理约束机器学习方法在噪声方面表现出鲁棒性。这项工作为将物理知识与数据驱动方法协同增强,以实现对混沌流的时间精确预测开辟了新的可能性。