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AN ONLINE MANIFOLD LEARNING APPROACH FOR MODEL REDUCTION OF DYNAMICAL SYSTEMS~*

机译:动态模型简化的在线流形学习方法〜*

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摘要

This article discusses a newly developed online manifold learning method, subspace iteration using reduced models (SIRM), for the dimensionality reduction of dynamical systems. This method may be viewed as subspace iteration combined with a model reduction procedure. Specifically, starting with a test solution, the method solves a reduced model to obtain a more precise solution, and it repeats this process until sufficient accuracy is achieved. The reduced model is obtained by projecting the full model onto a subspace that is spanned by the dominant modes of an extended data ensemble. The extended data ensemble in this article contains not only the state vectors of some snapshots of the approximate solution from the previous iteration but also the associated tangent vectors. Therefore, the proposed manifold learning method takes advantage of the information of the original dynamical system to reduce the dynamics. Moreover, the learning procedure is computed in the online stage, as opposed to being computed offline, which is used in many projection-based model reduction techniques that require prior calculations or experiments. After providing an error bound of the classical POD-Galerkin method in terms of the projection error and the initial condition error, we prove that the sequence of approximate solutions converge to the actual solution of the original system as long as the vector field of the full model is locally Lipschitz on an open set that contains the solution trajectory. Good accuracy of the proposed method has been demonstrated in two numerical examples, from a linear advection-diffusion equation to a nonlinear Burgers equation. In order to save computational cost, the SIRM method is extended to a local model reduction approach by partitioning the entire time domain into several subintervals and obtaining a series of local reduced models of much lower dimensionality. The accuracy and efficiency of the local SIRM are shown through the numerical simulation of the Navier-Stokes equation in a lid-driven cavity flow problem.
机译:本文讨论了一种新开发的在线流形学习方法,即使用简化模型(SIRM)进行子空间迭代的方法,用于动态系统的降维。该方法可以看作是子空间迭代与模型简化过程的组合。具体而言,从测试解决方案开始,该方法求解简化模型以获得更精确的解决方案,然后重复此过程,直到获得足够的精度为止。通过将完整模型投影到一个子空间上,可以得到简化模型,该子空间由扩展数据集成的主导模式所跨越。本文中的扩展数据集合不仅包含来自先前迭代的近似解的某些快照的状态向量,而且还包含相关的切线向量。因此,提出的流形学习方法利用原始动力学系统的信息来减少动力学。此外,学习过程是在联机阶段进行计算的,而不是在脱机进行计算的过程中,该过程在许多需要事先计算或实验的基于投影的模型简化技术中使用。在针对投影误差和初始条件误差提供了经典POD-Galerkin方法的误差界限之后,我们证明了只要全场的矢量场,近似解的序列就收敛到原始系统的实际解。模型是包含解轨迹的开放集上的局部Lipschitz。从线性对流扩散方程到非线性Burgers方程的两个数值示例已证明了该方法的良好准确性。为了节省计算成本,SIRM方法通过将整个时域划分为几个子间隔并获得一系列低维的局部简化模型而扩展为局部模型简化方法。通过对盖驱动的腔体流动问题中的Navier-Stokes方程进行数值模拟,可以显示局部SIRM的准确性和效率。

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