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Multiobjective topology optimization of structures using genetic algorithms with chromosome repairing

机译:基于遗传算法的染色体修复多目标拓扑优化

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In this work, a genetic algorithm (GA) for multiobjective topology optimization of linear elastic structures is developed. Its purpose is to evolve an evenly distributed group of solutions to determine the optimum Pareto set for a given problem. The GA determines a set of solutions to be sorted by its domination properties and a filter is defined to retain the Pareto solutions. As an equality constraint on volume has to be enforced, all chromosomes used in the genetic GA must generate individuals with the same volume value; in the coding adopted, this means that they must preserve the same number of “ones” and, implicitly, the same number of “zeros” along the evolutionary process. It is thus necessary: (1) to define chromosomes satisfying this propriety and (2) to create corresponding crossover and mutation operators which preserve volume. Optimal solutions of each of the single-objective problems are introduced in the initial population to reduce computational effort and a repairing mechanism is developed to increase the number of admissible structures in the populations. Also, as the work of the external loads can be calculated independently for each individual, parallel processing was used in its evaluation. Numerical applications involving two and three objective functions in 2D and two objective functions in 3D are employed as tests for the computational model developed. Moreover, results obtained with and without chromosome repairing are compared.
机译:在这项工作中,开发了一种用于线性弹性结构多目标拓扑优化的遗传算法(GA)。其目的是发展一组均匀分布的解决方案,以确定给定问题的最佳帕累托集。 GA根据其支配属性确定要排序的一组解决方案,并定义一个过滤器以保留Pareto解决方案。由于必须对体积施加平等约束,因此遗传GA中使用的所有染色体都必须生成具有相同体积值的个体。在采用的编码中,这意味着它们在进化过程中必须保留相同数量的“ 1”,并隐含相同数量的“ 0”。因此,有必要:(1)定义满足此特性的染色体,(2)创建相应的保留体积的交叉和突变算子。在初始种群中引入了每个单目标问题的最优解,以减少计算量,并开发了一种修复机制来增加种群中可允许结构的数量。此外,由于可以分别计算每个人的外部载荷功,因此在评估中使用了并行处理。涉及2D中的两个和三个目标函数以及3D中的两个目标函数的数值应用程序用作开发的计算模型的测试。此外,比较了有和没有染色体修复的结果。

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