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Seeking the Pareto front for multiobjective spatial optimization problems

机译:寻找多目标空间优化问题的帕累托前沿

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摘要

Spatial optimization problems, such as route selection, usually involve multiple, conflicting objectives relevant to locations. An ideal approach to solving such multiobjective optimization problems (MOPs) is to find an evenly distributed set of Pareto-optimal alternatives, which is capable of representing the possible trade-off among different objectives. However, these MOPs are commonly solved by combining the multiple objectives into a parametric scalar objective, in the form of a weighted sum function. It has been found that this method fails to produce a set of well spread solutions by disregarding the concave part of the Pareto front. In order to overcome this ill-behaved nature, a novel adaptive approach has been proposed in this paper. This approach seeks to provide an unbiased approximation of the Pareto front by tuning the search direction in the objective space according to the largest unexplored region until a set of well-distributed solutions is reached. To validate the proposed methodology, a case study on multiobjective routing has been performed using the Singapore road network with the support of GIS. The experimental results confirm the effectiveness of the approach.
机译:空间优化问题(例如路线选择)通常涉及与位置相关的多个相互冲突的目标。解决此类多目标优化问题(MOP)的理想方法是找到一组均匀分布的帕累托最优方案,该方案能够表示不同目标之间的可能取舍。但是,通常通过将多个目标组合为加权和函数形式的参数标量目标来解决这些MOP。已经发现,通过忽略帕累托锋面的凹入部分,该方法不能产生一组良好扩展的解。为了克服这种不良行为的性质,本文提出了一种新颖的自适应方法。该方法试图通过根据最大的未探索区域调整目标空间中的搜索方向,直到获得一组分布良好的解,来提供帕累托前沿的无偏逼近。为了验证所提出的方法,在新加坡地理信息系统的支持下,使用新加坡道路网对多目标路由进行了案例研究。实验结果证实了该方法的有效性。

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