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Multidimensional Approximation of Nonlinear Dynamical Systems

机译:非线性动力系统的多维逼近

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摘要

A key task in the field of modeling and analyzing nonlinear dynamical systems is the recovery of unknown governing equations from measurement data only. There is a wide range of application areas for this important instance of system identification, ranging from industrial engineering and acoustic signal processing to stock market models. In order to find appropriate representations of underlying dynamical systems, various data-driven methods have been proposed by different communities. However, if the given data sets are high-dimensional, then these methods typically suffer from the curse of dimensionality. To significantly reduce the computational costs and storage consumption, we propose the method multidimensional approximation of nonlinear dynamical systems (MANDy) which combines data-driven methods with tensor network decompositions. The efficiency of the introduced approach will be illustrated with the aid of several high-dimensional nonlinear dynamical systems.
机译:建模和分析非线性动力系统领域的一个关键任务是仅从测量数据中恢复未知的管理方程。 有广泛的应用领域是系统识别的重要实例,从工业工程和声学信号处理到股票市场模式。 为了找到潜在的动态系统的适当表示,不同的社区提出了各种数据驱动方法。 但是,如果给定的数据集是高维的,则这些方法通常遭受维度的诅咒。 为了显着降低计算成本和存储消耗,我们提出了与张量网络分解的数据驱动方法相结合的非线性动力系统(Mandy)的多维逼近方法。 借助于几种高维非线性动力系统,将说明引入的方法的效率。

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