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A multi-objective optimization approach for health-care facility location-allocation problems in highly developed cities such as Hong Kong

机译:解决香港等发达城市医疗机构位置分配问题的多目标优化方法

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Public health-care facilities are essential to all communities, and their location/allocation has long been an important issue in urban planning. Given the steady growth of Hong Kong's population, new health-care facilities will need to be built over the next few years. This research examines the problem of where such health-care facilities should be located to improve the equity of accessibility, raise the total accessibility for the entire population, reduce the population that falls outside the coverage range, and decrease the cost of building new facilities. However, because urban areas such as Hong Kong are complex socio-ecological systems, the aforementioned conflicting objectives make it impossible to find one 'best' solution that meets all of the objectives. Therefore, this research uses a genetic algorithm based multi-objective optimization (MOO) approach to yield a set of Pareto solutions that can be used to find the most practical tradeoffs between the conflicting objectives. The MOO approach is used to optimize the location of new health-care facilities in Hong Kong for 2020. Because the MOO approach provides a set of diverse plans, planners can compare the value of each objective and the spatial distribution of facilities to analyze or select the solution that best supports their further decisions. Comparing the Pareto solutions with other solutions, it indicates that the MOO approach is a sensible choice for solving multi-objective problems of health-care facility location-allocation in Hong Kong. (C) 2016 Elsevier Ltd. All rights reserved.
机译:公共保健设施对所有社区都是必不可少的,其位置/分配长期以来一直是城市规划中的重要问题。鉴于香港人口稳定增长,未来几年将需要建造新的医疗保健设施。这项研究探讨了这样的医疗设施应位于何处的问题,以提高无障碍获取的公平性,提高整个人口的总体无障碍获取,减少超出覆盖范围的人口并降低建造新设施的成本。但是,由于香港等城市地区是复杂的社会生态系统,因此上述相互矛盾的目标使得不可能找到一个能够满足所有目标的“最佳”解决方案。因此,本研究使用基于遗传算法的多目标优化(MOO)方法来生成一组Pareto解,该解可用于找到冲突目标之间最实际的折衷。 MOO方法用于优化2020年香港新医疗设施的位置。由于MOO方法提供了一系列不同的计划,计划人员可以比较每个目标的价值和设施的空间分布,以进行分析或选择最能支持他们进一步决策的解决方案。将帕累托解决方案与其他解决方案进行比较,表明MOO方法是解决香港医疗保健设施位置分配的多目标问题的明智选择。 (C)2016 Elsevier Ltd.保留所有权利。

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