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Computationally efficient analysis of cable-stayed bridge for GA-based optimization

机译:基于遗传算法优化的斜拉桥计算效率分析

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Optimum design of a cable-stayed bridge structure is very complicated because of large number of design variables. Use of genetic algorithms (GAs) in optimizing such structure consumes significant computational time. Due to nonlinearity, structural analysis itself takes considerable computational time and the genetic algorithm has to perform a large number of iterations in order to obtain global minima. A new approach combining GA and support vector machine (SVM) has been adopted. This drastically reduces the computation time of optimization. The genetic algorithm is employed to obtain the minimum cost of the cable-stayed bridge. Constraint evaluation is done using SVM which is trained by a data base generated through FEM analysis. System level optimization is carried out considering configuration and cross-sectional parameters as design variables. In the present study, optimization was carried out for bridge lengths ranging from 100 to 500 m. Final optimum designs were reanalyzed to check the adequacy of the developed approach.
机译:斜拉桥结构的最佳设计由于大量设计变量而非常复杂。使用遗传算法(GA)优化此类结构会消耗大量计算时间。由于非线性,结构分析本身要花费大量的计算时间,而遗传算法必须执行大量迭代才能获得全局最小值。采用了一种将遗传算法与支持向量机(SVM)相结合的新方法。这大大减少了优化的计算时间。采用遗传算法来获得斜拉桥的最小成本。使用SVM进行约束评估,该SVM由通过FEM分析生成的数据库进行训练。系统级优化是将配置和横截面参数视为设计变量来进行的。在本研究中,对桥梁长度从100至500 m进行了优化。重新分析了最终的最佳设计,以检查所开发方法的适当性。

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