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Long-Time Predictive Modeling of Nonlinear Dynamical Systems Using Neural Networks

机译:基于神经网络的非线性动力学系统的长期预测建模

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摘要

We study the use of feedforward neural networks (FNN) to develop models of nonlinear dynamical systems from data. Emphasis is placed on predictions at long times, with limited data availability. Inspired by global stability analysis, and the observation of strong correlation between the local error and the maximal singular value of the Jacobian of the ANN, we introduce Jacobian regularization in the loss function. This regularization suppresses the sensitivity of the prediction to the local error and is shown to improve accuracy and robustness. Comparison between the proposed approach and sparse polynomial regression is presented in numerical examples ranging from simple ODE systems to nonlinear PDE systems including vortex shedding behind a cylinder and instability-driven buoyant mixing flow. Furthermore, limitations of feedforward neural networks are highlighted, especially when the training data does not include a low dimensional attractor. Strategies of data augmentation are presented as remedies to address these issues to a certain extent.
机译:我们研究使用前馈神经网络(FNN)从数据开发非线性动力学系统的模型。长期将重点放在预测上,而数据的可用性有限。受全局稳定性分析的启发,并观察到局部误差与ANN雅可比行列的最大奇异值之间的强相关性,我们在损失函数中引入了雅可比行正则化。这种正则化抑制了预测对局部误差的敏感性,并显示出可以提高准确性和鲁棒性。从简单的ODE系统到非线性PDE系统(包括圆柱体后面的涡旋脱落和不稳定性驱动的浮力混合流)等数值示例,都对所提出的方法与稀疏多项式回归进行了比较。此外,突出了前馈神经网络的局限性,尤其是在训练数据不包括低维吸引子的情况下。提出了数据增强策略作为在一定程度上解决这些问题的补救措施。

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