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A Kernel Principal Component Regressor for LPV System Identification ?

机译:LPV系统识别的内核主成本回归

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摘要

This article describes a Kernel Principal Component Regressor (KPCR) to identify Auto Regressive eXogenous (ARX) Linear Parmeter Varying (LPV) models. The new method differs from the Least Squares Support Vector Machines (LS-SVM) algorithm in the regularisa-tion of the Least Squares (LS) problem, since the KPCR only keeps the principal components of the Gram matrix while LS-SVM performs the inversion of the same matrix after adding a regularisation factor. Also, in this new approach, the LS problem is formulated in the primal space but it ends up being solved in the dual space overcoming the fact that the regressors are unknown.The method is assessed and compared to the LS-SVM approach through 2 Monte Carlo (MC) experiments. Every experiment consists of 100 runs of a simulated example, and a different noise level is used in each experiment, with Signal to Noise Ratios of 20db and 10db, respectively. The obtained results are twofold, first the performance of the new method is comparable to the LS-SVM, for both noise levels, although the required calculations are much faster for the KPCR. Second, this new method reduces the dimension of the primal space and may convey a way of knowing the number of basis functions required in the Kernel. Furthermore, having a structure very similar to LS-SVM makes it possible to use this method in other types of models, e.g. the LPV state-space model identification.
机译:本文介绍了内核主成分回归(KPCR),以识别自动回归外源性(ARX)线性降落点变化(LPV)模型。新方法与最小二乘支持向量机(LS-SVM)算法的规律性在最小二乘(LS)问题中不同,因为KPCR仅保留克矩阵的主组件,而LS-SVM执行反转添加正则化因子后相同的矩阵。此外,在这种新方法中,LS问题在原始空间中配制,但它最终解决了在双色空间中克服了回归尚未发现的事实。通过2个蒙特进行评估并将其与LS-SVM方法进行评估。卡洛(MC)实验。每个实验由100个脉冲示例组成,并且在每个实验中使用不同的噪声水平,分别具有20dB和10dB的信号到噪声比。获得的结果是双重的,首先,新方法的性能与LS-SVM相当,对于噪声水平,虽然KPCR所需的计算要更快。其次,这种新方法减少了原始空间的尺寸,并且可以传达一种了解内核所需的基函数的数量。此外,具有非常类似于LS-SVM的结构使得可以在其他类型的模型中使用该方法,例如, LPV状态空间模型识别。

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