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Application of support vector machine with firefly algorithm for investigation of the factors affecting the shear strength of angle shear connectors

机译:萤火虫算法的支持向量机在影响角剪连接器抗剪强度的因素中的应用

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摘要

The factors affecting the shear strength of the angle shear connectors in the steel-concrete composite beams can play an important role to estimate the efficacy of a composite beam. Therefore, the current study has aimed to verify the output of shear capacity of angle shear connector according to the input provided by Support Vector Machine (SVM) coupled with Firefly Algorithm (H A). SVM parameters have been optimized through the use of FFA, while genetic programming (GP) and artificial neural networks (ANN) have been applied to estimate and predict the SVM-FFA models' results. Following these results, GP and ANN have been applied to develop the prediction accuracy and generalization capability of SVM-FFA Therefore, SVM-FFA could be performed as a novel model with predictive strategy in the shear capacity estimation of angle shear connectors. According to the results, the Firefly algorithm has produced a generalized performance and be learnt faster than the conventional learning algorithms.
机译:影响钢筋混凝土组合梁中角剪连接器抗剪强度的因素对于评估组合梁的功效起着重要作用。因此,当前的研究旨在根据支持向量机(SVM)与Firefly算法(H A)结合提供的输入来验证角剪连接器的剪切能力输出。通过使用FFA对SVM参数进行了优化,而遗传编程(GP)和人工神经网络(ANN)已用于估计和预测SVM-FFA模型的结果。根据这些结果,GP和ANN已被用于提高SVM-FFA的预测精度和泛化能力,因此,可以将SVM-FFA作为具有预测策略的新型模型来进行角剪连接器的剪切能力估计。根据结果​​,Firefly算法产生了普遍的性能,并且比常规学习算法学习得更快。

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