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Adaptive neurofuzzy inference systems networks design using hybrid genetic and singular value decomposition methods for modeling and prediction of the explosive cutting process

机译:使用混合遗传和奇异值分解方法的自适应神经模糊推理系统网络设计,用于炸药切割过程的建模和预测

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摘要

Genetic algorithm (GA) and singular value decomposition (SVD) are deployed for the optimal design of both Gaussian membership functions of antecedents and the vector of linear coefficients of consequents, respectively, of adaptive neurofuzzy inference systems (ANFIS) networks that are used for modeling of the explosive cutting process of plates by shaped charges. The aim of such modeling is to show how the depth of penetration varies with the variation of important parameters, namely, the apex angle, standoff, liner thickness, and mass of charge. It is demonstrated that S VD can be effectively used to optimally find the vector of linear coefficients of conclusion parts in ANFIS models and their Gaussian membership functions in premise parts are determined by a GA.
机译:分别采用遗传算法(GA)和奇异值分解(SVD)分别优化了用于建模的自适应神经模糊推理系统(ANFIS)网络的前因的高斯隶属函数和其结果的线性系数矢量装药爆炸性切割钢板的过程这种建模的目的是显示穿透深度如何随重要参数(即顶角,支座,衬里厚度和装料质量)的变化而变化。结果表明,S VD可以有效地用于在ANFIS模型中最优地找到结论部分的线性系数向量,并且它们在前提部分中的高斯隶属函数由GA确定。

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