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Kernel methods for subspace identification of multivariable LPV and bilinear systems

机译:多变量LPV和双线性系统子空间识别的核方法

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摘要

Subspace identification methods for multivariable linear parameter-varying (LPV) and bilinear state-space systems perform computations with data matrices of which the number of rows grows exponentially with the order of the system. Even for relatively low-order systems with only a few inputs and outputs, the amount of memory required to store these data matrices exceeds the limits of what is currently available on the average desktop computer. This severely limits the applicability of the methods. In this paper, we present kernel methods for subspace identification performing computations with kernel matrices that have much smaller dimensions than the data matrices used in the original LPV and bilinear subspace identification methods. We also describe the integration of regularization in these kernel methods and show the relation with least-squares support vector machines. Regularization is an important tool to balance the bias and variance errors. We compare different regularization strategies in a simulation study. (c) 2005 Elsevier Ltd. All rights reserved.
机译:用于多变量线性参数变化(LPV)和双线性状态空间系统的子空间识别方法使用数据矩阵执行计算,该数据矩阵的行数按系统的顺序呈指数增长。即使对于仅具有少量输入和输出的较低阶系统,存储这些数据矩阵所需的内存量也超过了普通台式计算机当前可用的限制。这严重限制了该方法的适用性。在本文中,我们介绍了用于子空间识别的内核方法,该方法使用比原始LPV和双线性子空间识别方法中使用的数据矩阵小得多的维度的内核矩阵执行计算。我们还描述了这些内核方法中正则化的集成,并显示了与最小二乘支持向量机的关系。正则化是平衡偏差和方差的重要工具。我们在模拟研究中比较了不同的正则化策略。 (c)2005 Elsevier Ltd.保留所有权利。

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