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Conjugate gradient-based Takagi-Sugeno fuzzy neural network parameter identification and its convergence analysis

机译:基于共轭梯度的Takagi-Sugeno模糊神经网络参数辨识及其收敛性分析

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摘要

Model identification is divided into two parts: structure identification and parameter identification, and the parameter identification is actually an optimization process. For improving the optimization performance, in this paper, we firstly present a novel conjugate gradient descent method with a modified Armijo-type line search technique to train a Takagi-Sugeno fuzzy neural network model. Numerical simulations are implemented to demonstrate the efficiency of the proposed algorithm. According to the experimental comparisons that are evaluated over 15 classification and 3 regression problems, the advantages of the given method are superior to its another two counterparts. To complement the simulation results and help in establishing a robust fuzzy neural network model, we strictly prove two deterministic convergent behaviors of the presented algorithm, i.e., weak and strong convergence results. They indicate the gradient of the target function with respect to network weights converges to zero and the parameter sequence approaches a fixed optimal point, respectively. (C) 2019 Elsevier B.V. All rights reserved.
机译:模型识别分为结构识别和参数识别两部分,参数识别实际上是一个优化过程。为了提高优化性能,本文首先提出了一种新颖的共轭梯度下降方法,并采用了改进的Armijo型线搜索技术来训练Takagi-Sugeno模糊神经网络模型。数值仿真表明了该算法的有效性。根据对15个分类和3个回归问题进行评估的实验比较,给定方法的优点优于其他两个方法。为了补充仿真结果并帮助建立鲁棒的模糊神经网络模型,我们严格证明了所提出算法的两个确定性收敛性,即弱收敛性和强收敛性。它们指示目标函数相对于网络权重的梯度收敛到零,并且参数序列分别接近固定的最佳点。 (C)2019 Elsevier B.V.保留所有权利。

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