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Neuro-fuzzy system modeling based on automatic fuzzy clustering

机译:基于自动模糊聚类的神经模糊系统建模

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摘要

A neuro-fuzzy system model based on automatic fuzzy clustering is proposed.A hybrid model identification algorithm is also developed to decide the model structure and model parameters.The algorithm mainly includes three parts:1) Automatic fuzzy C-means (AFCM),which is applied to generate fuzzy rules automatically,and then fix on the size of the neuro-fuzzy network,by which the complexity of system design is reducesd greatly at the price of the fitting capability;2) Recursive least square estimation (RLSE).It is used to update the parameters of Takagi-Sugeno model,which is employed to describe the behavior of the system;3) Gradient descent algorithm is also proposed for the fuzzy values according to the back propagation algorithm of neural network.Finally,modeling the dynamical equation of the two-link manipulator with the proposed approach is illustrated to validate the feasibility of the method.
机译:提出了一种基于自动模糊聚类的神经模糊系统模型。还开发了一种混合模型辨识算法来确定模型的结构和模型参数。该算法主要包括三个部分:1)自动模糊C均值(AFCM)。应用于自动生成模糊规则,然后固定神经模糊网络的大小,从而以拟合能力为代价大大降低了系统设计的复杂性; 2)递推最小二乘估计(RLSE)。用来更新Takagi-Sugeno模型的参数,以描述系统的行为; 3)根据神经网络的反向传播算法,针对模糊值提出了梯度下降算法。最后,对动力学模型进行建模。给出了所提出的方法的双连杆机械手方程,验证了该方法的可行性。

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