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Identification of switched linear systems using self-adaptive SVR algorithm

机译:使用自适应SVR算法识别交换线性系统

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We consider the problem of switched linear system identification from input-output data set. This set may be a mixte set whose data are generated from a different switching affine subsystems so that one does not know a priori or a switching dynamics is unavailable. To overcome this main challenge, we develop an identification approach which consists in determining simultaneously a linear regression function which represents each submodel and a switching signal estimation via a self-adaptive clustering algorithm. The regression function is identified based on the Support Regression Vector (SVR) approach. However, the switching signal is provided by an unsupervised classification algorithm with self-adaptive capacities.
机译:我们考虑从输入输出数据集的切换线性系统识别问题。该设置可以是与不同的切换仿射子系统生成的混音节集,使得一个不知道先验或切换动态不可用。为了克服这一主要挑战,我们开发了一种识别方法,该识别方法包括通过自适应聚类算法表示同时确定每个子模型的线性回归函数和切换信号估计。基于支持回归向量(SVR)方法来识别回归函数。然而,开关信号由具有自适应容量的无监督分类算法提供。

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