Sparse Approximation of LS-SVM for LPV-ARX Model Identification: Application to a Powertrain Subsystem

L. Cavanini, F. Ferracuti, S. Longhi, E. Marchegiani, A. Monteriù
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引用次数: 3

Abstract

Least Squares Support Vector Machine (LS-SVM) has been recently applied to non-parametric identification of Linear Parameter Varying (LPV) systems, described by the AutoRegressive with eXogenous input (ARX). However, the online application of LPV-ARX system in the LS-SVM setting requires high computational time, related to the number of training data used to compute the coefficients of the identified model, limiting the possibility to use the method to real-time applications. In this paper, the authors propose the Low-Rank (LR) matrix approximation and a pruning based approach to compute a sparse solution. In particular, the pruning algorithm is considered to compute off-line a sparse solution of Lagrangian multipliers and then speed up the testing stage, whereas the LR matrix approximation allows to speed up the training stage. The proposed approach has been tested by identifying a subsystem of a vehicle powertrain model by the input/output data collected from the simulation model. The proposed approach has been compared with respect to the standard approach based on LS-SVM. The methods are tested on the considered real-world problem and the proposed approach permits to reduce the execution time of about 77% on average in the considered identification problem, corresponding to a degradation of the identification result less than 0.2% with respect to the standard solution.
LS-SVM稀疏逼近在LPV-ARX模型识别中的应用
最小二乘支持向量机(LS-SVM)最近被应用于线性变参数系统(LPV)的非参数识别,该系统由外生输入的自回归(ARX)描述。然而,LPV-ARX系统在LS-SVM设置下的在线应用需要较高的计算时间,这与用于计算识别模型系数的训练数据的数量有关,限制了将该方法用于实时应用的可能性。在本文中,作者提出了低秩(LR)矩阵逼近和基于剪枝的方法来计算稀疏解。特别是,修剪算法被认为是离线计算拉格朗日乘子的稀疏解,然后加快测试阶段,而LR矩阵近似允许加快训练阶段。通过仿真模型采集的输入/输出数据对某汽车动力总成模型的子系统进行识别,验证了该方法的有效性。将该方法与基于LS-SVM的标准方法进行了比较。这些方法在考虑的实际问题上进行了测试,所提出的方法允许在考虑的识别问题中平均减少约77%的执行时间,对应于识别结果相对于标准解决方案的退化小于0.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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