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The Deep Input-Koopman Operator for Nonlinear Systems

机译:非线性系统的深度输入-考夫曼算子

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In this paper, we propose a method that exploit the Koop-man operator theory to make the strongly nonlinear dynamical systems approximately represented in the linear framework based on deep neural network (DNN) which is data-driven and equation-free. On account of the conventional Koopman operator is incapable for actuated systems, we introduce the notion of input-Koopman operator for the systems incorporated with the effects of inputs and controls. We construct the controllability gramian for nonlinear systems that are represented in the finite-dimensional input-Koopman operators. Moreover, we illustrate the several relationship between the space of full state observable functions and the original local controllability.
机译:在本文中,我们提出了一种基于库普曼算子理论的方法,该方法基于数​​据驱动且无方程的深度神经网络(DNN),使强非线性动力学系统近似地表示在线性框架中。由于传统的Koopman算子无法用于致动系统,因此我们针对结合了输入和控制效果的系统引入了输入Koopman算子的概念。我们构造了以有限维输入-库普曼算子表示的非线性系统的可控制性。此外,我们说明了全状态可观察函数的空间与原始局部可控性之间的几种关系。

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