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On Convergence of Extended Dynamic Mode Decomposition to the Koopman Operator

机译:关于扩展动态模式分解对Koopman运算符的融合

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Extended dynamic mode decomposition (EDMD) (Williams et al. in J Nonlinear Sci 25(6):1307-1346, 2015) is an algorithm that approximates the action of the Koopman operator on an N-dimensional subspace of the space of observables by sampling at M points in the state space. Assuming that the samples are drawn either independently or ergodically from some measure , it was shown in Klus et al. (J Comput Dyn 3(1):51-79, 2016) that, in the limit as , the EDMD operator converges to , where is the -orthogonal projection of the action of the Koopman operator on the finite-dimensional subspace of observables. We show that, as , the operator converges in the strong operator topology to the Koopman operator. This in particular implies convergence of the predictions of future values of a given observable over any finite time horizon, a fact important for practical applications such as forecasting, estimation and control. In addition, we show that accumulation points of the spectra of correspond to the eigenvalues of the Koopman operator with the associated eigenfunctions converging weakly to an eigenfunction of the Koopman operator, provided that the weak limit of the eigenfunctions is nonzero. As a by-product, we propose an analytic version of the EDMD algorithm which, under some assumptions, allows one to construct directly, without the use of sampling. Finally, under additional assumptions, we analyze convergence of (i.e., ), proving convergence, along a subsequence, to weak eigenfunctions (or eigendistributions) related to the eigenmeasures of the Perron-Frobenius operator. No assumptions on the observables belonging to a finite-dimensional invariant subspace of the Koopman operator are required throughout.
机译:扩展动态模式分解(EDMD)(WILLIAMS等人。在J非线性SCI 25(6)中:1307-1346,2015)是一种算法,其近似于Koopman运算符对观察空间的N维子空间的算法在州空间中的M点采样。假设样品从某种措施中独立地或令人垂直地抽出样品,它在Klus等人中显示。 (j计算Dyn 3(1):51-79,2016),在极限中,EDMD运算符收敛于,在哪里是Koopman运算符在可观察到的有限尺寸子空间上的 - 正交投影。我们展示了,如,运营商将强大的操作员拓扑中收敛到Koopman运算符。这尤其尤其意味着在任何有限时间范围内的给定可观察到的未来值的预测的收敛,这对于实际应用,例如预测,估计和控制等重要。此外,我们表明,对应于Koopman运算符的特征值的累积点与弱到Koopman运算符的特征函数会聚的相关的特征函数,条件是突出函数的弱极限是非零的。作为一个副产品,我们提出了一个分析版的EDMD算法,在某些假设下,允许一个人直接构建,而不使用采样。最后,在额外的假设下,我们分析(即),沿着随后的融合,遵循与珀罗 - Frobenius运营商的特征措施有关的弱点运行(或截止措施)的融合。在整个方面都不需要对属于Koopman操作员的有限维不变子空间的可观察到的假设。

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