Khan Kaffayatullah, Biswas Rahul, Gudainiyan Jitendra, Amin Muhammad Nasir, Qureshi Hisham Jahangir, Arab Abdullah Mohammad Abu, Iqbal Mudassir
Department of Civil and Environmental Engineering, College of Engineering, King Faisal University, Al-Ahsa 31982, Saudi Arabia.
Department of Applied Mechanics, Visvesvaraya National Institute of Technology, Nagpur 440010, India.
Materials (Basel). 2022 Sep 18;15(18):6477. doi: 10.3390/ma15186477.
In order to forecast the axial load-carrying capacity of concrete-filled steel tubular (CFST) columns using principal component analysis (PCA), this work compares hybrid models of artificial neural networks (ANNs) and meta-heuristic optimization algorithms (MOAs). In order to create hybrid ANN models, a dataset of 149 experimental tests was initially gathered from the accessible literature. Eight PCA-based hybrid ANNs were created using eight MOAs, including artificial bee colony, ant lion optimization, biogeography-based optimization, differential evolution, genetic algorithm, grey wolf optimizer, moth flame optimization and particle swarm optimization. The created ANNs' performance was then assessed. With R ranges between 0.7094 and 0.9667 in the training phase and between 0.6883 and 0.9634 in the testing phase, we discovered that the accuracy of the built hybrid models was good. Based on the outcomes of the experiments, the generated ANN-GWO (hybrid model of ANN and grey wolf optimizer) produced the most accurate predictions in the training and testing phases, respectively, with R = 0.9667 and 0.9634. The created ANN-GWO may be utilised as a substitute tool to estimate the load-carrying capacity of CFST columns in civil engineering projects according to the experimental findings.
为了使用主成分分析(PCA)预测钢管混凝土(CFST)柱的轴向承载能力,本文比较了人工神经网络(ANN)和元启发式优化算法(MOA)的混合模型。为了创建混合ANN模型,最初从可获取的文献中收集了一个包含149个试验测试的数据集。使用包括人工蜂群算法、蚁狮优化算法、基于生物地理学的优化算法、差分进化算法、遗传算法、灰狼优化算法、蛾火焰优化算法和粒子群优化算法在内的8种MOA创建了8个基于PCA的混合ANN。然后评估所创建的ANN的性能。我们发现,在训练阶段R值介于0.7094和0.9667之间,在测试阶段介于0.6883和0.9634之间,所构建的混合模型的准确性良好。基于实验结果,所生成的ANN - GWO(ANN与灰狼优化算法的混合模型)在训练和测试阶段分别产生了最准确的预测,R值分别为0.9667和0.9634。根据实验结果,所创建的ANN - GWO可作为一种替代工具,用于估算土木工程项目中CFST柱的承载能力。