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首页> 外文期刊>Advances in Structural Engineering >Shear strength prediction of short circular reinforced-concrete columns using soft computing methods
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Shear strength prediction of short circular reinforced-concrete columns using soft computing methods

机译:使用软计算方法剪切强度预测短圆形钢筋混凝土柱

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In this article, it has been aimed to predict the shear strength of short circular reinforced-concrete columns using the meta-heuristic algorithms. Based on the studies conducted so far, the parameters dominantly affecting the shear strength include axial force, longitudinal and transverse reinforcement, column dimension ratio, concrete compressive strength and ductility. In this respect, first, 200 numerical models of the short circular reinforced-concrete column incorporating various effective parameters so that a sufficient number of outputs could be provided, are analyzed by ABAQUS software to compute their shear strengths. Then, the gene expression programming and particle swarm optimization algorithms are employed to predict the shear strengths and by means of each algorithm, a relation was proposed accordingly. Then, using the experimental data, these relations are evaluated by comparing with those specified in ACI 318 and ASCE-ACI 426. The results indicate that the percentage of relative error between the experimental data and the values obtained from ACI 318 and ASCE-ACI 426 is respectively equal to 25% and 30%, which have been reduced to 13% and 9% through the gene expression programming and particle swarm optimization algorithms implying the satisfactory performance of these two algorithms. Finally, a comparison of the gene expression programming and particle swarm optimization is investigated in terms of convergence rate, degree of accuracy, and performance mechanism.
机译:在本文中,旨在使用元启发式算法预测短圆形钢筋混凝土柱的剪切强度。基于到目前为止进行的研究,主要影响剪切强度的参数包括轴向力,纵向和横向增强,柱尺寸比,混凝土抗压强度和延展性。在这方面,首先,通过ABAQUS软件分析了可以提供各种有效参数的短圆形增强混凝土柱的200个数值模型,从而通过ABAQUS软件分析了足够数量的输出来计算其剪切强度。然后,采用基因表达编程和粒子群优化算法来预测剪切强度并借助于每种算法,相应地提出了一种关系。然后,使用实验数据,通过与ACI 318和ASCE-ACI 426中规定的那些进行比较来评估这些关系。结果表明实验数据与ACI 318和ASCE-ACI 426中获得的值之间的相对误差百分比通过基因表达编程和粒子群优化算法,分别等于25%和30%,从而减少到13%和9%,这意味着这两个算法的令人满意的性能。最后,在收敛速度,精度和性能机制方面研究了基因表达编程和粒子群优化的比较。

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