基于非负张量分解的切换线性系统控制器性能评估

Deng-Yin Jiang, Li-Sheng Hu
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引用次数: 0

摘要

本文应用张量方法研究了基于数据驱动基准的切换系统控制器性能评估问题。对于每个子过程,提取具有有限样本数的多元输出作为特征矩阵的形式。因此,通过叠加与任何数据集采样相关的特征矩阵,创建了一个张量,这就需要研究使用张量考虑的切换系统的控制器性能评估。为了拟合用于控制器性能评估的测量输出张量数据处理的多重不变性,提出了基于高阶张量低秩分解唯一性的非负张量分解模型对张量数据进行分析。利用非负张量分解给出了估计的潜在输出结构,并结合基于协方差的算法推导出了各子过程控制器的数据驱动性能基准和性能指标,所提出的数据驱动基准估计算法需要一组闭环的日常运行数据。仿真实例验证了该方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Controller performance assessment for switched linear systems via applying non-negative tensor factorization
This paper considers the controller performance assessment problem based on the data-driven benchmark by applying the tensor approach for switched systems. For each subprocess, the multivariate output with finite sample numbers is extracted regarding as the forms of feature matrices. Consequently, by stacking the feature matrices associated to any data set samplings, a tensor is created, a fact which necessitates studying the controller performance assessment for switched systems considered using tensors. In order to fit the multiple invariance of the measurement output tensor data processing for controller performance assessment, the non-negative tensor factorization model is proposed to analyze the tensor data, which stems from uniqueness of low-rank decomposition of higher-order tensor. By using the non-negative tensor factorization, the estimated latent outputs structure combining with the covariance-based algorithm are given to derive the data-driven performance benchmark and performance index for each subprocess controller, and the presented data-driven benchmark estimation algorithm requires a set of close-loop routine operating data. A simulation example is provided to test the effectiveness and advantages of proposed method.
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