论文标题

稳定参数降级模型的非自动收入的时间序列方法

Non-autoregressive time-series methods for stable parametric reduced-order models

论文作者

Maulik, Romit, Lusch, Bethany, Balaprakash, Prasanna

论文摘要

以偏微分方程为特征的对流为主的动力系统在从天气预测到工程设计的应用中都发现了至关重要的工程设计。人们对从机器学习借用的技术的使用引起了极大的兴趣,以减少计算费用和/或提高这些系统预测的准确性。这些依赖于降低问题维度的基础的识别以及随后使用时间序列和顺序学习方法来预测降低状态的演变。但是,通常,基本投影减少后的机器学习预测受到稳定问题的困扰,这是由于对多尺度过程的不完全捕获以及由于长期预测持续时间的误差增长而引起的。为了解决这些问题,我们已经开发了一种\ emph {非自动进取}时间序列方法,用于预测正向模型的线性减少基本历史。特别是,我们证明了连续学习方法(例如长期记忆(LSTM))的非自动向等对应物,大大提高了机器学习的还原级模型的稳定性。我们评估了对无粘性浅水方程式的方法,并表明在PCA组件中双向的标准LSTM方法的非重力变体获得了重现部分观测的非线性动态的最佳准确性。此外,与基于方程式的Galerkin投影方法和标准LSTM方法相比,使用我们的方法和标准LSTM方法相比,对于这些替代物的许多应用至关重要。

Advection-dominated dynamical systems, characterized by partial differential equations, are found in applications ranging from weather forecasting to engineering design where accuracy and robustness are crucial. There has been significant interest in the use of techniques borrowed from machine learning to reduce the computational expense and/or improve the accuracy of predictions for these systems. These rely on the identification of a basis that reduces the dimensionality of the problem and the subsequent use of time series and sequential learning methods to forecast the evolution of the reduced state. Often, however, machine-learned predictions after reduced-basis projection are plagued by issues of stability stemming from incomplete capture of multiscale processes as well as due to error growth for long forecast durations. To address these issues, we have developed a \emph{non-autoregressive} time series approach for predicting linear reduced-basis time histories of forward models. In particular, we demonstrate that non-autoregressive counterparts of sequential learning methods such as long short-term memory (LSTM) considerably improve the stability of machine-learned reduced-order models. We evaluate our approach on the inviscid shallow water equations and show that a non-autoregressive variant of the standard LSTM approach that is bidirectional in the PCA components obtains the best accuracy for recreating the nonlinear dynamics of partial observations. Moreover---and critical for many applications of these surrogates---inference times are reduced by three orders of magnitude using our approach, compared with both the equation-based Galerkin projection method and the standard LSTM approach.

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