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An instrumental least squares support vector machine for nonlinear system identification

机译:一种用于非线性系统辨识的工具最小二乘支持向量机

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Least-Squares Support Vector Machines (LS-SVMs), originating from Statistical Learning and Reproducing Kernel Hilbert Space (RKHS) theories, represent a promising approach to identify nonlinear systems via nonparametric estimation of the involved nonlinearities in a computationally and stochastically attractive way. However, application of LS-SVMs and other RKHS variants in the identification context is formulated as a regularized linear regression aiming at the minimization of the 2 loss of the prediction error. This formulation corresponds to the assumption of an auto-regressive noise structure, which is often found to be too restrictive in practical applications. In this paper, Instrumental Variable (IV) based estimation is integrated into the LS-SVM approach, providing, under minor conditions, consistent identification of nonlinear systems regarding the noise modeling error. It is shown how the cost function of the LS-SVM is modified to achieve an IV-based solution. Although, a practically well applicable choice of the instrumental variable is proposed for the derived approach, optimal choice of this instrument in terms of the estimates associated variance still remains to be an open problem. The effectiveness of the proposed IV based LS-SVM scheme is also demonstrated by a Monte Carlo study based simulation example. (C) 2015 Elsevier Ltd. All rights reserved.
机译:最小二乘支持向量机(LS-SVM)起源于统计学习和再现内核希尔伯特空间(RKHS)理论,是一种有前途的方法,可以通过计算和随机吸引人的方式通过对所涉及的非线性进行非参数估计来识别非线性系统。但是,将LS-SVM和其他RKHS变体在识别上下文中的应用公式化为正则化线性回归,旨在最小化预测误差的2损失。该公式对应于自回归噪声结构的假设,该噪声结构在实际应用中经常被发现过于严格。在本文中,基于工具变量(IV)的估计已被集成到LS-SVM方法中,从而在较小的条件下提供了关于噪声建模误差的非线性系统的一致识别。它显示了如何修改LS-SVM的成本函数以实现基于IV的解决方案。尽管为派生方法建议了一种实用的工具变量选择,但是根据相关方差的估计值对这种工具的最佳选择仍然是一个未解决的问题。提出的基于IV的LS-SVM方案的有效性也通过基于Monte Carlo研究的仿真示例得到了证明。 (C)2015 Elsevier Ltd.保留所有权利。

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