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Multiobjective criteria for neural network structure selection and identification of nonlinear systems using genetic algorithms

机译:基于遗传算法的神经网络结构选择和非线性系统辨识的多目标准则

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摘要

An approach to model selection and identification of nonlinear systems via neural networks and genetic algorithms is presented based on multiobjective performance criteria. It considers three performance indices or cost functions as the objectives, which are the Euclidean distance (L/sub 2/-norm) and maximum difference (L/spl infin/-norm) measurements between the real nonlinear system and the nonlinear model, and the complexity measurement of the nonlinear model, instead of a single performance index. An algorithm based on the method of inequalities, least squares and genetic algorithms is developed for optimising over the multiobjective criteria. Genetic algorithms are also used for model selection in which the structure of the neural networks is determined. The Volterra polynomial basis function network and the Gaussian radial basis function network are applied to the identification of a liquid-level nonlinear system.
机译:基于多目标性能准则,提出了一种通过神经网络和遗传算法对非线性系统进行模型选择和辨识的方法。它考虑了三个性能指标或成本函数作为目标,分别是实际非线性系统和非线性模型之间的欧几里德距离(L / sub 2 /范数)和最大差异(L / spl infin /范数)测量值,以及非线性模型的复杂性度量,而不是单个性能指标。提出了一种基于不等式,最小二乘和遗传算法的算法,用于优化多目标准则。遗传算法也用于模型选择,其中确定了神经网络的结构。 Volterra多项式基函数网络和高斯径向基函数网络被用于识别液位非线性系统。

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