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Hybrid optimization of information granulation-based fuzzy radial basis function neural networks

机译:基于信息粒化的模糊径向基函数神经网络的混合优化

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Purpose - The purpose of this paper is to propose an improved optimization methodology of information granulation-based fuzzy radial basis function neural networks (IG-FRBFNN). In the IG-FRBFNN, the membership functions of the premise part of fuzzy rules are determined by means of fuzzy c-means (FCM) clustering. Also, high-order polynomial is considered as the consequent part of fuzzy rules which represent input-output relation characteristic of sub-space and weighted least squares learning is used to estimate the coefficients of polynomial. Since the performance of IG-RBFNN is affected by some parameters such as a specific subset of input variables, the fuzzification coefficient of FCM, the number of rules and the order of polynomial of consequent part of fuzzy rules, we need the structural as well as parametric optimization of the network. The proposed model is demonstrated with the use of two kinds of examples such as nonlinear function approximation problem and Mackey-Glass time-series data. Design/methodology/approach - The type of polynomial of each fuzzy rule is determined by selection algorithm by considering the local error as performance index. In addition, the combined local error is introduced as a performance index considered by two kinds of parameters such as the polynomial type of each rule and the number of polynomial coefficients of each rule. Besides this, other structural and parametric factors of the IG-FRBFNN are optimized to minimize the global error of model by means of the hierarchical fair competition-based parallel genetic algorithm. Findings - The performance of the proposed model is illustrated with the aid of two examples. The proposed optimization method leads to an accurate and highly interpretable fuzzy model. Originality/value - The proposed hybrid optimization methodology is interesting for designing an accurate and highly interpretable fuzzy model. Hybrid optimization algorithm comes in the form of the combination of the combined local error and the global error.
机译:目的-本文的目的是提出一种改进的基于信息粒化的模糊径向基函数神经网络(IG-FRBFNN)的优化方法。在IG-FRBFNN中,模糊规则前提部分的隶属函数是通过模糊c均值(FCM)聚类确定的。同样,高阶多项式被认为是代表子空间输入输出关系特性的模糊规则的结果部分,加权最小二乘学习被用于估计多项式的系数。由于IG-RBFNN的性能受某些参数的影响,例如输入变量的特定子集,FCM的模糊化系数,规则数量以及模糊规则后面部分的多项式顺序,因此我们需要结构和网络的参数优化。通过使用非线性函数逼近问题和Mackey-Glass时间序列数据这两种示例来演示所提出的模型。设计/方法/方法-每个模糊规则的多项式类型由选择算法通过将局部误差视为性能指标来确定。另外,引入组合局部误差作为由两种参数(例如,每个规则的多项式类型和每个规则的多项式系数的数量)考虑的性能指标。除此之外,IG-FRBFNN的其他结构和参数因素还通过基于公平竞争的并行遗传算法进行了优化,以最小化模型的全局误差。结果-通过两个示例说明了所提出模型的性能。所提出的优化方法导致了准确且可高度解释的模糊模型。原创性/价值-提出的混合优化方法对于设计准确且可高度解释的模糊模型很有趣。混合优化算法以组合的局部误差和全局误差的组合形式出现。

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