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Practical solutions for multi-objective optimization: An application to system reliability design problems

机译:多目标优化的实用解决方案:在系统可靠性设计问题中的应用

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摘要

For multiple-objective optimization problems, a common solution methodology is to determine a Pareto optimal set. Unfortunately, these sets are often large and can become difficult to comprehend and consider. Two methods are presented as practical approaches to reduce the size of the Pareto optimal set for multiple-objective system reliability design problems. The first method is a pseudo-ranking scheme that helps the decision maker select solutions that reflect his/her objective function priorities. In the second approach, we used data mining clustering techniques to group the data by using the k-means algorithm to find clusters of similar solutions. This provides the decision maker with just k general solutions to choose from. With this second method, from the clustered Pareto optimal set, we attempted to find solutions which are likely to be more relevant to the decision maker. These are solutions where a small improvement in one objective would lead to a large deterioration in at least one other objective. To demonstrate how these methods work, the well-known redundancy allocation problem was solved as a multiple objective problem by using the NSGA genetic algorithm to initially find the Pareto optimal solutions, and then, the two proposed methods are applied to prune the Pareto set.
机译:对于多目标优化问题,一种通用的解决方法是确定帕累托最优集。不幸的是,这些集合通常很大,并且可能变得难以理解和考虑。提出了两种方法来减小多目标系统可靠性设计问题的帕累托最优集的大小。第一种方法是伪排序方案,可帮助决策者选择反映其目标功能优先级的解决方案。在第二种方法中,我们使用数据挖掘聚类技术通过使用k-means算法查找相似解决方案的聚类来对数据进行分组。这为决策者提供了仅k种通用解决方案供您选择。通过第二种方法,从聚类的Pareto最优集合中,我们试图找到可能与决策者更相关的解决方案。这些解决方案中,一个目标的微小改进会导致至少另一个目标的较大恶化。为了证明这些方法是如何工作的,通过使用NSGA遗传算法最初找到Pareto最优解,解决了众所周知的冗余分配问题,将其作为多目标问题,然后将这两种提议的方法应用于Pareto集的修剪。

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