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A mixed GA-PSO-based approach for performance-based design optimization of 2D reinforced concrete special moment-resisting frames

机译:基于GA-PSO的基于性能的设计优化方法的混合GA-PSO的方法

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A mixed genetic algorithm and particle swarm optimization in conjunction with nonlinear static and dynamic analyses as a smart and simple approach is introduced for performance-based design optimization of two-dimensional (2D) reinforced concrete special moment-resisting frames. The objective function of the problem is considered to be total cost of required steel and concrete in design of the frame. Dimensions and longitudinal reinforcement of the structural elements are considered to be design variables and serviceability, special moment-resisting and performance conditions of the frame are constraints of the problem. First, lower feasible bond of the design variables are obtained via analyzing the frame under service gravity loads. Then, the joint shear constraint has been considered to modify the obtained minimum design variables from the previous step. Based on these constraints, the initial population of the genetic algorithm (GA) is generated and by using the nonlinear static analysis, values of each population are calculated. Then, the particle swarm optimization (PSO) technique is employed to improve keeping percent of the badly fitted populations. This procedure is repeated until the optimum result that satisfies all constraints is obtained. Then, the nonlinear static analysis is replaced with the nonlinear dynamic analysis and optimization problem is solved again between obtained lower and upper bounds, which is considered to be optimum result of optimization solution with nonlinear static analysis. It has been found that by mixing the analyses and considering the hybrid GA-PSO method, the optimum result can be achieved with less computational efforts and lower usage of materials. (C) 2019 Elsevier B.V. All rights reserved.
机译:一种混合遗传算法和粒子群优化与非线性静态和动态分析结合为智能和简单的方法,用于基于性能的二维(2D)钢筋混凝土特殊力矩抵抗框架的设计优化。问题的目标函数被认为是框架设计中所需的钢和混凝土的总成本。结构元件的尺寸和纵向增强被认为是设计变量和可维护性,框架的特殊力矩抵抗和性能​​条件是问题的约束。首先,通过在使用重力载荷下分析框架来获得设计变量的降低可行键。然后,已经考虑了联合剪切约束来修改前一步的获得的最小设计变量。基于这些约束,产生遗传算法(GA)的初始群体,并通过使用非线性静态分析,计算每种群体的值。然后,采用粒子群优化(PSO)技术来改善保持严重拟合群体的百分比。重复该过程,直到获得满足所有约束的最佳结果。然后,用非线性动态分析代替非线性静态分析,并在获得的下限和上界之间再次求解优化问题,这被认为是具有非线性静态分析的优化解决方案的最佳结果。已经发现,通过混合分析并考虑混合GA-PSO方法,可以通过较少的计算工作和降低材料使用来实现最佳结果。 (c)2019年Elsevier B.V.保留所有权利。

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