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Support vector recurrent neurofuzzy networks in modeling nonlinear systems with correlated noise

机译:支持向量递归模糊神经网络建模具有相关噪声的非线性系统

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摘要

Good generalization results are obtained from neurofuzzy networks if its structure is suitably chosen. To select the structure of neurofuzzy networks, the authors proposed a construction algorithm that is derived from the Support Vector Regression. However, the modeling errors are assumed to be uncorrelated. In this paper, systems with correlated modeling errors are considered. The correlated noise is modeled separately by a recurrent network. The overall network is referred to as the support vector recurrent neurofuzzy networks. The prediction error method is used to train the networks, where the derivatives are computed by a sensitivity model. The performance of proposed networks is illustrated by an example involving a nonlinear dynamic system corrupted by correlated noise.
机译:如果适当选择神经模糊网络的结构,则可以从神经模糊网络获得良好的泛化结果。为了选择神经模糊网络的结构,作者提出了一种基于支持向量回归的构造算法。但是,建模误差被假定为不相关。在本文中,考虑了具有相关建模误差的系统。相关噪声由循环网络分别建模。整个网络称为支持向量递归神经模糊网络。预测误差方法用于训练网络,其中导数由灵敏度模型计算。所举网络的性能通过一个示例进行了说明,该示例涉及一个非线性动态系统,该系统被相关噪声破坏。

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