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Self-organising interval type-2 fuzzy neural network with asymmetric membership functions and its application

机译:自组织间隔Type-2模糊神经网络,具有不对称的成员函数及其应用

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摘要

For the identification and modelling problems of a nonlinear system with complex uncertainties, a self-organising interval type-2 fuzzy neural network structure with asymmetric membership functions (SIT2FNN-AMF) is developed. First, a fuzzy c-means algorithm with four fuzzifier parameters is used to partition the input data to obtain the uncertainty means and widths of the fuzzy rule antecedent; then, according to the cluster validity criterion, the number of fuzzy rules is determined. Thus, identifications of the structure and rule antecedent parameters are automatically completed. The consequent part uses the Mamdani model, and the initial value of the consequent parameter is an interval random number. The fuzzy rule parameters are tuned by the gradient descent method. Finally, the proposed SIT2FNN-AMF is applied to simulations of nonlinear system identification and soft-sensing model for ethylene cracking furnace yield. The comparison of simulation results obtained with a conventional fuzzy neural network and interval type-2 fuzzy neural network verifies the performance of the proposed SIT2FNN-AMF.
机译:对于具有复杂不确定性的非线性系统的识别和建模问题,开发了一种具有非对称隶属函数(SIT2FNN-AMF)的自组织间隔-2模糊神经网络结构。首先,使用具有四个模糊参数的模糊C均值算法用于分区输入数据,以获得模糊规则前的不确定性装置和宽度;然后,根据群集有效性标准,确定模糊规则的数量。因此,自动完成结构和规则前一种参数的标识。随后的部分使用Mamdani模型,结果参数的初始值是间隔随机数。模糊规则参数由梯度下降方法调整。最后,提出的SIT2FNN-AMF应用于非线性系统识别和乙烯裂解炉产量的软感测模型的模拟。用传统的模糊神经网络和间隔类型-2模糊神经网络获得的模拟结果的比较验证了所提出的SIT2FNN-AMF的性能。

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