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首页> 外文期刊>IEEE Transactions on Control Systems Technology >A Kernel-Based PCA Approach to Model Reduction of Linear Parameter-Varying Systems
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A Kernel-Based PCA Approach to Model Reduction of Linear Parameter-Varying Systems

机译:基于核的PCA线性参数变化系统模型约简

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This brief presents a model reduction method for linear parameter-varying (LPV) systems using kernel-based principal component analysis (PCA). For state-space LPV models that are affine or rational in the scheduling variables and in which the variation of these variables is confined in a polytope, controller synthesis can be elegantly realized by solving the synthesis problem only at the vertices of the polytope. To exploit the computational simplicity of this approach, it is highly desirable to obtain LPV models of systems of interest in an affine or a rational form. In this respect, kernel PCA allows one to extract principal components of a given data set of scheduling variables in a high-dimensional feature space, reducing complicated coefficient dependencies that otherwise might not be easily reducible in a linear subspace; this gives kernel PCA an advantage over its linear PCA counterpart. We show that high-dimensional scheduling variables can be mapped into a set of low-dimensional variables through a nonlinear kernel PCA-based mapping. Since the kernel PCA mapping is nonlinear, finding the inverse mapping in order to represent the original scheduling variables requires solving a nonlinear optimization problem; consequently, the reduced LPV model is no longer affine in the reduced scheduling variables. To address this, we formulate an optimization problem to obtain a reduced model that is either affine or rational in the reduced scheduling variables. We apply the proposed model reduction method on a robotic manipulator system and use the reduced LPV model to design a gain-scheduled controller that satisfies an induced gain performance. Numerical simulations are used to demonstrate the performance of the resulting LPV controller on the nonlinear manipulator model. The achieved performance of the LPV controller with the kernel PCA-based reduced model is also compared wit- that of its linear PCA-based counterpart.
机译:本简介介绍了一种使用基于内核的主成分分析(PCA)的线性参数变化(LPV)系统的模型简化方法。对于在调度变量上具有仿射性或有理性并且这些变量的变化被限制在一个多面体中的状态空间LPV模型,可以通过仅在多面体的顶点处求解综合问题来优雅地实现控制器综合。为了利用这种方法的计算简单性,非常需要以仿射或有理形式获得目标系统的LPV模型。在这方面,内核PCA允许在高维特征空间中提取给定的调度变量数据集的主要成分,从而减少了复杂的系数依赖性,而这种依赖性在线性子空间中可能很难被简化。这使内核PCA优于线性PCA。我们表明,可以通过基于非线性核PCA的映射将高维调度变量映射为一组低维变量。由于内核PCA映射是非线性的,因此找到逆映射以表示原始调度变量需要解决非线性优化问题。因此,简化的LPV模型不再适用于简化的调度变量。为了解决这个问题,我们提出了一个优化问题,以获得简化的模型,该模型在缩减的调度变量中是仿射的还是有理的。我们将提出的模型简化方法应用于机器人机械手系统,并使用简化的LPV模型来设计满足感应增益性能的增益调度控制器。数值模拟用于证明所得LPV控制器在非线性机械手模型上的性能。 LPV控制器与基于内核PCA的简化模型的实现性能也与基于线性PCA的线性模型进行了比较。

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