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ONLINE CLASSIFICATION OF SWITCHING MODELS BASED ON SUBSPACE FRAMEWORK

机译:基于子空间框架的开关模型在线分类

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摘要

The paper deals with the modelling of switching systems and focuses on the characterization of the local functioning modes using online clustering approach. The considered system is represented as a weighted sum of local linear models where each model could have its own structure. That implies that the parameters and the order of the switching system could change when the system switches. The presented method consists in two steps. First, an online estimation method of the Markov parameters matrix of the local linear models is established. Secondly, the labelling of theses parameters is done using a dynamical decision space worked out with learning techniques, each local model being represented by a cluster. The paper ends with an example, in view to illustrate the method performances.
机译:本文涉及交换系统的建模,并着重于使用在线聚类方法表征本地功能模式。所考虑的系统表示为局部线性模型的加权总和,其中每个模型可以具有自己的结构。这意味着当系统切换时,切换系统的参数和顺序可能会更改。提出的方法包括两个步骤。首先,建立了局部线性模型的马尔可夫参数矩阵的在线估计方法。其次,这些参数的标记是使用通过学习技术得出的动态决策空间完成的,每个局部模型都由一个群集表示。本文以一个示例结尾,以说明该方法的性能。

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