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NONLINEAR SYSTEM IDENTIFICATION BASED ON EVOLUTIONARY DYNAMIC NEURAL NETWORKS WITH HYBRID STRUCTURE

机译:基于混合结构进化动力神经网络的非线性系统辨识

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The paper presents a novel dynamic neural architecture that allows a flexible and compact representation of the nonlinear processes. The suggested neural topology considers local internal recurrence and a heterogeneous structure of the hidden layer. It allows the cooperation between different types of hidden units, such as perceptrons, sigmoidal neurons with functional links, radial basis function structures and/or gaussian neurons with complex weights. An evolutionary multiobjective procedure assists the automatic design of appropriate neural networks. It searches for accurate neural models, characterised by good generalisation capabilities. The experiments reveal that the presented approach is suitable for system identification.
机译:本文提出了一种新颖的动态神经架构,该架构允许灵活而紧凑地表示非线性过程。建议的神经拓扑考虑局部内部递归和隐藏层的异构结构。它允许在不同类型的隐藏单元之间进行协作,例如感知器,具有功能链接的S型神经元,径向基函数结构和/或具有复杂权重的高斯神经元。进化的多目标过程有助于适当神经网络的自动设计。它搜索具有良好泛化能力的准确神经模型。实验表明,该方法适用于系统识别。

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