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Identification of hybrid and linear parameter varying models via recursive piecewise affine regression and discrimination

机译:通过分段递归仿射回归和判别识别混合参数和线性参数变化模型

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Piecewise affine (PWA) regression is a supervised learning method which aims at estimating, from a set of training data, a PWA map approximating the relationship between a set of explanatory variables (commonly called regressors) and continuous-valued outputs. In this paper, we describe a recursive and numerically efficient PWA regression algorithm, and discuss its application to the identification of multi-input multi-output PWA dynamical models in autoregressive form and to the identification of linear parameter-varying models.
机译:分段仿射(PWA)回归是一种有监督的学习方法,旨在从一组训练数据中估算一个PWA映射,该映射近似一组解释变量(通常称为回归变量)与连续值输出之间的关系。在本文中,我们描述了一种递归且数值高效的PWA回归算法,并讨论了其在自回归形式的多输入多输出PWA动力学模型的识别以及线性参数变化模型的识别中的应用。

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