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A Recurrent Interval Type-2 Fuzzy Neural Network with Asymmetric Membership Functions for Nonlinear System Identification

机译:具有非线性系统识别非对称隶属函数的反复间隔类型-2模糊神经网络

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This paper proposes a recurrent interval type-2 fuzzy neural network with asymmetric membership functions (RT2FNN-A). The RT2FNN-A uses the interval asymmetric type-2 fuzzy sets and it implements the FLS in a five layer neural network structure which contains four layer forward network and a feedback layer. Each asymmetric fuzzy member function (AFMF) is constructed by parts of four Gaussian functions. The corresponding learning algorithm is derived by gradient descent method. Finally, the RT2FNN-A is applied in identification of nonlinear dynamic system. Simulation results are shown to illustrate the effectiveness of the RT2FNN-A systems.
机译:本文提出了一种具有非对称隶属函数(RT2FNN-A)的反复间隔类型-2模糊神经网络。 RT2FNN-A使用间隔不对称类型-2模糊集,并且它在五层神经网络结构中实现了四层前向网络和反馈层的FLS。每个非对称模糊成员函数(AFMF)由四个高斯函数的部分构成。相应的学习算法通过梯度序列方法导出。最后,RT2FNN-A应用于非线性动态系统的识别。仿真结果显示用于说明RT2FNN-A系统的有效性。

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