Training of ANFIS with simulated annealing algorithm on flexural buckling load prediction of aluminium alloy columns

B. Haznedar, Rabia Bayraktar, Melih Yayla, M. Demirkol
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引用次数: 0

Abstract

In this study, we propose a simulated annealing algorithm (SA) to train an adaptive neurofuzzy inference system (ANFIS). We performed different types of optimization algorithms such as genetic algorithm (GA), SA and artificial bee colony algorithm on two different problem types. Then, we measured the performance of these algorithms. First, we applied optimization algorithms on eight numerical benchmark functions which are sphere, axis parallel hyper-ellipsoid, Rosenbrock, Rastrigin, Schwefel, Griewank, sum of different powers and Ackley functions. After that, the training of ANFIS is carried out by mentioned optimization algorithms to predict the strength of heat-treated fine-drawn aluminium composite columns defeated by flexural bending. In summary, the accuracy of the proposed soft computing model was compared with the accuracy of the results of existing methods in the literature. It is seen that the training of ANFIS with the SA has more accuracy.   Keywords: Soft computing, ANFIS, simulated annealing, flexural buckling, aluminium alloy columns.
基于模拟退火算法的ANFIS在铝合金柱屈曲载荷预测中的训练
在这项研究中,我们提出了一种模拟退火算法(SA)来训练自适应神经模糊推理系统(ANFIS)。针对两种不同类型的问题分别采用遗传算法(GA)、SA和人工蜂群算法进行优化。然后,我们测量了这些算法的性能。首先,将优化算法应用于球面、轴平行超椭球、Rosenbrock、Rastrigin、Schwefel、Griewank、异幂和和Ackley函数等8个数值基准函数。然后,利用上述优化算法对ANFIS进行训练,预测热处理精拉铝复合材料柱受弯后的强度。综上所述,将提出的软计算模型的精度与文献中现有方法的结果精度进行了比较。可以看出,使用SA训练的ANFIS具有更高的准确性。关键词:软计算,ANFIS,模拟退火,弯曲屈曲,铝合金柱
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