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Multi-objective location modeling of urban parks and open spaces: Continuous optimization

机译:城市公园和开放空间的多目标位置建模:持续优化

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摘要

In this paper, we present a multi-objective model with a promising application for facility location planning. The genetic algorithm (GA)-based multi-objective optimization model (GAMOOM) developed here is applied to the particular problem of obtaining optimum locations for urban parks and open spaces (POSs) by considering four incommensurable objectives: the provision of POSs near (1) densely populated areas, (2) areas with polluted air, (3) noisy areas, and (4) areas without POSs. The model is executed using real datasets collected from the city of Dhaka (as a case study). To assess the impact of each objective, computational results obtained from each objective function were compared. The second objective (air pollution) has been shown to have a significant impact on locating POSs compared to that of the other objectives. The results obtained using a composite objective function (by combining all objective functions) indicate that the model can successfully provide optimum locations for new POSs.rnThis study also clearly demonstrates the importance of using a dynamic weighting scheme to convert all objective functions into a composite one. The model developed here has been found to incorporate an operator to successfully generate non-dominated Pareto optimal solutions and a Pareto front. The alternative solutions obtained here act as a candidate pool from which decision makers may choose the best solution according to their preferences or determinant criteria. The outcome of this multi-objective GAMOOM model consequently does have implications for how POSs should be designed and managed by planning authorities in order to maintain not only a sustainable environment, but also a better quality of life in the city.
机译:在本文中,我们提出了一种多目标模型,该模型在设施选址规划中具有广阔的应用前景。此处开发的基于遗传算法(GA)的多目标优化模型(GAMOOM)通过考虑四个不可估量的目标,应用于获得城市公园和开放空间(POS)最佳位置的特定问题:在(1附近提供POS )人口稠密的地区,(2)空气污染的地区,(3)嘈杂的地区和(4)没有POS的地区。该模型是使用从达卡市收集的真实数据集执行的(作为案例研究)。为了评估每个目标的影响,比较了从每个目标函数获得的计算结果。与其他目标相比,第二个目标(空气污染)已显示出对POS定位的重要影响。使用复合目标函数(通过组合所有目标函数)获得的结果表明,该模型可以成功地为新POS提供最佳位置。rn这项研究还清楚地表明了使用动态加权方案将所有目标函数转换为复合目标函数的重要性。 。已经发现这里开发的模型将操作员纳入其中,以成功生成非支配的Pareto最优解和Pareto前沿。此处获得的替代解决方案充当候选者池,决策者可以根据他们的偏好或决定性标准从中选择最佳解决方案。因此,此多目标GAMOOM模型的结果确实对规划机构如何设计和管理POS产生了影响,以便不仅维持可持续的环境,而且改善城市的生活质量。

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