本征函数
非线性系统
计算机科学
人工神经网络
特征向量
代表(政治)
操作员(生物学)
相空间
动力系统理论
转化(遗传学)
人工智能
物理
生物化学
化学
抑制因子
量子力学
政治
政治学
转录因子
法学
基因
热力学
标识
DOI:10.1088/1572-9494/ac6c7b
摘要
Abstract The observation and study of nonlinear dynamical systems has been gaining popularity over years in different fields. The intrinsic complexity of their dynamics defies many existing tools based on individual orbits, while the Koopman operator governs evolution of functions defined in phase space and is thus focused on ensembles of orbits, which provides an alternative approach to investigate global features of system dynamics prescribed by spectral properties of the operator. However, it is difficult to identify and represent the most relevant eigenfunctions in practice. Here, combined with the Koopman analysis, a neural network is designed to achieve the reconstruction and evolution of complex dynamical systems. By invoking the error minimization, a fundamental set of Koopman eigenfunctions are derived, which may reproduce the input dynamics through a nonlinear transformation provided by the neural network. The corresponding eigenvalues are also directly extracted by the specific evolutionary structure built in.
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