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Precise linearization of nonlinear, non-autonomous systems based on physical system modeling theory

机译:基于物理系统建模理论的非线性非自治系统的精确线性化

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Nonlinear dynamical systems behave linearly when recast in a higher dimensional space. This paper presents a new data-driven approach to precise linearization of a class of nonlinear dynamical systems. State variables are augmented by adding auxiliary variables that sufficiently inform the nonlinear dynamics of the system. A data matrix containing samples taken from the augmented state space is analyzed to extract latent variables that predict state transition in the latent space. First, the sufficiently informing augmented state variables are derived from Bond Graph where the connective structure of networked elements is known, but the constitutive laws of individual elements, which may be nonlinear, are unknown. Second, the rank of the data matrix and its covariance is analyzed based on the system's Bond Graph to determine the number of latent variables that can completely recover the data matrix. Third, using the latent variables, an exact linear state equation in Differential Algebraic Equation form is obtained for the class of nonlinear systems represented in the augmented state space. Furthermore, the latent variables are truncated to obtain a causal state equation that is linear, yet precisely represent the original nonlinear dynamics in the augmented state space. Finally, a practical example verifies and demonstrates the new methodology.
机译:在高维空间中进行重铸时,非线性动力学系统具有线性行为。本文提出了一种新的数据驱动方法,用于对一类非线性动力学系统进行精确线性化。通过添加辅助变量来增加状态变量,这些辅助变量足以通知系统的非线性动力学。分析包含从增强状态空间获取的样本的数据矩阵,以提取预测潜在空间中状态转换的潜在变量。首先,充分了解增强状态变量是从Bond Graph导出的,在Bond Graph中网络元素的连接结构是已知的,但是各个元素的本构定律(可能是非线性的)是未知的。其次,根据系统的Bond Graph分析数据矩阵的等级及其协方差,以确定可以完全恢复数据矩阵的潜在变量的数量。第三,使用潜变量,针对在增强状态空间中表示的一类非线性系统,获得了微分代数方程形式的精确线性状态方程。此外,潜在变量被截断以获得线性的因果状态方程,但精确地表示了增强状态空间中的原始非线性动力学。最后,通过一个实例验证并演示了新方法。

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