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Nonlinear Control System Intelligent Identification Using Optimized Support Vector Machines

机译:非线性控制系统智能识别使用优化支持向量机

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Nonlinear control system identification is studied using neoteric optimized Least Squares Support Vector Machines (LS-SVM) in this paper. Firstly, a multi-layer adaptive optimizing parameters algorithm is developed for improving learning and generalization ability of least squares support vector machines. According to different learning problems, the optimization approach can obtain appropriate LS-SVM parameters adaptively. Then, a nonlinear control system is identified by improved LS-SVM. The results show that the optimization approach can acquire best-optimized parameters for LS-SVM, and optimized LS-SVM can provide excellent control system identification precision and excellent convergence. And also, the multi-layer adaptive optimizing parameters algorithm may be appropriately extended to other types of support vector machines.
机译:本文使用近距离优化最小二乘支持向量机(LS-SVM)研究非线性控制系统识别。首先,开发了一种多层自适应优化参数算法,用于提高最小二乘支持向量机的学习和泛化能力。根据不同的学习问题,优化方法可以自适应地获得适当的LS-SVM参数。然后,通过改进的LS-SVM识别非线性控制系统。结果表明,优化方法可以为LS-SVM获取最优化的参数,优化的LS-SVM可以提供出色的控制系统识别精度和优异的收敛性。而且,多层自适应优化参数算法可以适当地扩展到其他类型的支持向量机。

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