Optimization of reinforced concrete structures using population-based metaheuristic algorithms

Rodrigo Reis Amaral, Lamartini Fontana Barazzutti, Herbert Martins Gomes
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Abstract

For many industrial activities, ideal projects are achieved by comparing the solution of alternative projects with those already executed. The feasibility of solutions plays an important role in these activities. For example, the underlying objective (cost, profit, etc.) estimated for each project solution is calculated and the best solution is adopted. This is the usual procedure followed by many constructors due to time and resource limitations. However, in many cases, this method is followed simply by a lack of knowledge of existing optimization procedures. In this context, a comparative study of population-based metaheuristic algorithms applied to a case study of a reinforced concrete beam design reinforced with a polymer matrix with carbon fibers will be presented. Evolutionary algorithms have the ability to determine the optimal values of the design variables without disregarding the restrictions on ACI-318 and ACI-440 standards while minimizing the reinforcement area for each beam (cost). The comparative study shows that not all presented algorithms violated design constraints. In addition, it can be said that the values found for the design variables present a low dispersion around the mean value of the objective function.
利用基于群体的元启发式算法优化钢筋混凝土结构
对于许多工业活动,理想的项目是通过比较备选项目的解决方案与已经执行的项目来实现的。解决办法的可行性在这些活动中起着重要作用。例如,计算每个项目解决方案的潜在目标(成本、利润等),并采用最佳解决方案。由于时间和资源的限制,这是许多构造函数通常遵循的过程。然而,在许多情况下,这种方法仅仅是因为缺乏对现有优化程序的了解。在此背景下,将基于人口的元启发式算法应用于碳纤维聚合物基体增强钢筋混凝土梁设计的案例研究进行比较研究。进化算法能够在不考虑ACI-318和ACI-440标准限制的情况下确定设计变量的最优值,同时最小化每根梁的加固面积(成本)。对比研究表明,并非所有算法都违反了设计约束。此外,可以说,为设计变量找到的值在目标函数的平均值周围呈现出较低的离散度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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