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Dynamic urban land-use change management using multi-objective evolutionary algorithms

机译:使用多目标进化算法的动态城市土地利用变化管理

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Frequent land-use changes in urban areas require an efficient and dynamic approach to reform and update detailed plans by re-arrangement of surrounding land-uses in case of change in one or several urban land-uses. However, re-arrangement of land-uses is problematic, since a variety of conflicting criteria must be considered and satisfied. This paper proposes and examines a two-step approach to resolve the issue. The first step adopts a multi-objective optimization technique to obtain an optimal arrangement of surrounding land-uses in case of change in one or several urban land-uses, whereas the second step uses clustering analysis to produce appropriate solutions for decision makers from the outputs of the first step. To present and assess the approach, a case study was conducted in Tehran, the capital of Iran. To satisfy the first step, four conflicting objective functions including maximization of consistency, maximization of dependency, maximization of suitability and maximization of compactness were defined and optimized using non-dominated sorting genetic algorithm. Per-capita demand was also employed as a constraint in the optimization process. Clustering analysis based on ant colony optimization was used to satisfy the second step. The results of the optimization were satisfactory both from a convergence and from a repeatability point of view. Furthermore, the objective functions of optimized arrangements were better than existing land-use arrangement in the area, with the per-capita demand deficiency significantly compensated. The approach was also communicated to urban planners in order to assess its usefulness. In conclusion, the proposed approach can extensively support and facilitate decision making of urban planners and policy makers in reforming and updating existing detailed plans after land-use changes.
机译:频繁的土地利用城市地区的变化需要通过重新安排周围的土地用途,以改革和更新详细的计划,以便在一个或多个城市用途的情况下进行改革和更新详细的计划。然而,土地用途的重新安排是有问题的,因为必须考虑和满足各种冲突的标准。本文提出了一种解决问题的两步方法。第一步采用多目标优化技术,以便在一个或多个城市用途发生变化的情况下获得周围土地用途的最佳布置,而第二步则使用聚类分析来为来自输出的决策者产生适当的解决方案第一步。目前并评估该方法,在伊朗首都德黑兰进行了一个案例研究。为了满足第一步,使用非主导分类遗传算法定义和优化了四个相互关系,包括最大限度,包括最大化的相互关系,最大化和紧凑性的最大化的最大化的目标函数。人均需求也受雇于优化过程中的约束。基于蚁群优化的聚类分析用于满足第二步。优化的结果既是从收敛性的令人满意的令人满意的令人满意的观点。此外,优化安排的客观函数优于该地区现有的土地使用安排,人均需求缺乏显着补偿。该方法还传达给城市规划者,以评估其有用性。总之,拟议的方法可以广泛支持和促进城市规划者和决策者在改革和更新土地利用变革后的改革和更新现有详细计划方面的决策。

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