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Approximating the Pareto-front of a planar bi-objective competitive facility location and design problem

机译:逼近平面双目标竞争性设施位置和设计问题的Pareto前沿

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A bi-objective competitive facility location and design problem is considered. The problem of obtaining a complete representation of the efficient set and its corresponding Pareto-front has been previously tackled through exact general methods, but they require high computational effort. In this work, we propose a new evolutionary multi-objective optimization algorithm, named FEMOEA, which deals with the problem at hand in a fast and efficient way. It combines ideas from different multi-objective and single-objective optimization evolutionary algorithms, although it also incorporates new devices which help to reduce the computational requirements, and also to improve the quality of the provided solutions. The performance of the algorithm is analyzed by comparing it to other (meta)heuristics previously proposed in the literature. In particular, the reference algorithms MOEA/D, SPEA2 and NSGA-II have been considered. A comprehensive computational study shows that the new heuristic method outperforms, on average, the three heuristic algorithms. Additionally, it reduces, on average, the computing time of the exact methods by approximately 99%, and this offering high-quality discrete approximations of the true Pareto-front. (C) 2014 Elsevier Ltd. All rights reserved.
机译:考虑了双目标竞争性设施的位置和设计问题。先前已经通过精确的通用方法解决了获得有效集及其对应的Pareto前沿的完整表示的问题,但是它们需要大量的计算工作。在这项工作中,我们提出了一种新的进化多目标优化算法FEMOEA,该算法以快速有效的方式解决了眼前的问题。它结合了来自不同多目标和单目标优化进化算法的思想,尽管它还结合了有助于减少计算需求并提高所提供解决方案质量的新设备。通过将其与文献中先前提出的其他(元)启发式算法进行比较来分析算法的性能。特别地,已经考虑了参考算法MOEA / D,SPEA2和NSGA-II。全面的计算研究表明,新的启发式方法平均优于三种启发式算法。此外,平均而言,它可以将精确方法的计算时间平均减少约99%,这提供了真实Pareto-front的高质量离散近似。 (C)2014 Elsevier Ltd.保留所有权利。

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