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A hybrid genetic algorithm for constrained multi-objective optimization under uncertainty and target matching problems

机译:不确定和目标匹配问题下的约束多目标优化混合遗传算法

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摘要

This work presents a new approach for interval-based uncertainty analysis. The proposed approach integrates a local search strategy as the worst-case-scenario technique of anti-optimization with a constrained multi-objective genetic algorithm. Anti-optimization is a term for an approach to safety factors in engineering structures which is described as pessimistic and searching for least favorable responses, in combination with optimization techniques but in contrast to probabilistic approaches. The algorithm is applied and evaluated to be efficient and effective in producing good results via target matching problems: a simulated topology and shape optimization problem where a 'target' geometry set is predefined as the Pareto optimal solution and a constrained multiobjective optimization problem formulated such that the design solutions will evolve and converge towards the target geometry set.
机译:这项工作为基于区间的不确定性分析提供了一种新方法。所提出的方法将局部搜索策略作为约束条件的多目标遗传算法的反优化最坏情况方案进行了集成。反优化是一种针对工程结构中安全系数的方法的术语,该方法被描述为悲观并寻找最不利的响应,与优化技术结合使用,但与概率方法相反。该算法的应用和评估通过目标匹配问题产生了良好的效果,是有效的和有效的:模拟拓扑和形状优化问题,其中将“目标”几何集预定义为Pareto最优解,并制定了约束多目标优化问题,使得设计解决方案将向目标几何图形集发展并收敛。

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