基于物理的长短期记忆预测与混沌重建

Elise Özalp, G. Margazoglou, L. Magri
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引用次数: 1

摘要

我们提出了物理信息长短期记忆(PI-LSTM)网络来重建和预测混沌系统中未测量变量的演化。训练受到正则化项的约束,正则化项惩罚违反系统控制方程的解。该网络在Lorenz-96模型上展示,该模型是一个典型的混沌动力系统,用于重建不同数量的变量。首先,我们展示了PI-LSTM架构,并解释了如何约束微分方程,这在lstm中是一项非常重要的任务。其次,对PI-LSTM的长期自治演化进行数值评价,研究其遍历性。我们表明,它正确地预测了未测量变量的统计量,这是没有物理约束无法实现的。第三,通过计算网络的Lyapunov指数来推断混沌系统的关键稳定性。出于重建的目的,与仅数据驱动的训练相比,添加物理通知损失定性地增强了网络的动态行为。这是通过李亚普诺夫指数的一致性来量化的。这项工作为非线性系统的状态重建和动力学学习开辟了新的机会。
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Physics-Informed Long Short-Term Memory for Forecasting and Reconstruction of Chaos
We present the Physics-Informed Long Short-Term Memory (PI-LSTM) network to reconstruct and predict the evolution of unmeasured variables in a chaotic system. The training is constrained by a regularization term, which penalizes solutions that violate the system's governing equations. The network is showcased on the Lorenz-96 model, a prototypical chaotic dynamical system, for a varying number of variables to reconstruct. First, we show the PI-LSTM architecture and explain how to constrain the differential equations, which is a non-trivial task in LSTMs. Second, the PI-LSTM is numerically evaluated in the long-term autonomous evolution to study its ergodic properties. We show that it correctly predicts the statistics of the unmeasured variables, which cannot be achieved without the physical constraint. Third, we compute the Lyapunov exponents of the network to infer the key stability properties of the chaotic system. For reconstruction purposes, adding the physics-informed loss qualitatively enhances the dynamical behaviour of the network, compared to a data-driven only training. This is quantified by the agreement of the Lyapunov exponents. This work opens up new opportunities for state reconstruction and learning of the dynamics of nonlinear systems.
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