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首页> 外文期刊>Asian Journal of Control >COMPUTATIONAL RELAXED TP MODEL TRANSFORMATION: RESTRICTING THE COMPUTATION TO SUBSPACES OF THE DYNAMIC MODEL
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COMPUTATIONAL RELAXED TP MODEL TRANSFORMATION: RESTRICTING THE COMPUTATION TO SUBSPACES OF THE DYNAMIC MODEL

机译:计算松弛的TP模型转换:将计算限制为动态模型的子空间

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摘要

The tensor-product (TP) model transformation is a recently proposed numerical method capable of transforming linear parameter varying state-space models to the higher order singular value decomposition (HOSVD) based canonical form of polytopic models. It is also capable of generating various types of convex TP models, a type of polytop models, for linear matrix inequality based controller design. The crucial point of the TP model transformation is that its computational load exponentially explodes with the dimensionality of the parameter vector of the parameter-varying state-space model. In this paper we propose a modilied TP model transformation that leads to considerable reduction of the computation. The key idea of the method is that instead of transforming the whole system matrix at once in the whole parameter space, we decompose the problem and perform the transformation element wise and restrict the computation to the subspace where the given element of the model varies. The modified TP model transformation can readily be executed in higher dimensional cases when the original TP model transformation fails. The effectiveness of the new method is illustrated with numerical examples.
机译:张量积(TP)模型转换是最近提出的一种数值方法,能够将线性参数变化的状态空间模型转换为基于多主题模型的高阶奇异值分解(HOSVD)的规范形式。对于基于线性矩阵不等式的控制器设计,它还能够生成各种类型的凸TP模型(一种多面模型)。 TP模型转换的关键点在于其计算量随参数变化状态空间模型的参数向量的维数呈指数爆炸性增长。在本文中,我们提出了一种改进的TP模型转换,可大大减少计算量。该方法的关键思想是,代替在整个参数空间中一次转换整个系统矩阵,我们分解问题并明智地执行转换元素,并将计算限制在模型给定元素变化的子空间中。当原始TP模型转换失败时,可以在更高维度的情况下轻松执行修改后的TP模型转换。数值算例说明了该新方法的有效性。

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