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Kernel Optimization of LS-SVM Based on Damage Detection for Smart Structures

机译:基于损伤检测的智能结构LS-SVM内核优化

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The method of damage detection is an important issue related to the self-detecting damage function for smart structures. Based on smart structures nonlinear, parallel features, and the existed intrinsic flaws of conventional neural networks, research on Support Vector Machine (SVM) used to detect damages for smart structures has become one of main researches recently. Aimed at the key and difficult research problem on SVM-the selection and construction of kernel functions, a mixed kernel function used to Least Square Support Vector Machine (LS-SVM) is constructed through analyzing the existed kernel functions of LS-SVM. Based on damage detection for smart structures, the parameters of LS-SVM with the mixed kernel are optimized by Genetic Algorithms (GA), and the detecting results are compared with that of LS-SVM based on RBF kernel. The result shows that, the accuracy of damage detection based on LS-SVM with mixed kernel is higher than that based on LS-SVM with RBF kernel under the same condition. Compared with LS-SVM with RBF kernel, LS-SVM with mixed kernel possesses the better dissemination ability and stronger learning ability by absorbing the advantages of RBF kernel and polynomial kernel function.
机译:损伤检测方法是与智能结构自检测损伤功能有关的重要问题。基于智能结构的非线性,并行特征以及常规神经网络存在的固有缺陷,用于检测智能结构损伤的支持向量机(SVM)的研究已成为最近的主要研究之一。针对SVM的关键和难点研究问题-核函数的选择和构造,通过分析LS-SVM已有的核函数,构造了用于最小二乘支持向量机(LS-SVM)的混合核函数。在智能结构损伤检测的基础上,采用遗传算法对混合核最小二乘支持向量机的参数进行优化,并将检测结果与基于RBF核的最小二乘支持向量机进行比较。结果表明,在相同条件下,基于混合核的LS-SVM的损伤检测精度高于具有RBF核的LS-SVM的损伤检测精度。与带有RBF内核的LS-SVM相比,具有混合内核的LS-SVM通过吸收RBF内核和多项式内核功能的优点,具有更好的传播能力和更强的学习能力。

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