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Spatial resource allocation via extremal optimization enhanced by cell-based local search

机译:通过基于单元的本地搜索增强了通过极值优化进行的空间资源分配

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摘要

A new treatment is presented for land use planning problems by means of extremal optimization (EO) in conjunction to cell-based neighborhood local search. EO, inspired by self-organized critical models of evolution has been applied mainly to the solution of classical combinatorial optimization problems. Cell-based local search has been employed by the author elsewhere in problems of spatial resource allocation in combination with genetic algorithms and simulated annealing. In this paper, it complements EO in order to enhance its capacity for a spatial optimization problem. The hybrid method thus formed is compared to methods of the literature on a specific resource allocation problem by taking into account both the development and the transportation cost. It yields better results both in terms of objective function values and in terms of compactness. The latter is an important quantity for spatial planning and its meaning is discussed. The appearance of significant compactness values as emergent results is investigated.
机译:通过极值优化(EO)结合基于单元的邻域局部搜索,提出了一种针对土地利用规划问题的新处理方法。受自组织的关键进化模型启发的EO主要应用于解决经典组合优化问题。作者在其他地方已将基于单元格的局部搜索与遗传算法和模拟退火相结合来解决空间资源分配问题。在本文中,它对EO进行了补充,以增强其解决空间优化问题的能力。通过同时考虑开发和运输成本,将由此形成的混合方法与关于特定资源分配问题的文献方法进行比较。就目标函数值和紧凑性而言,它都能产生更好的结果。后者是空间规划的重要内容,并对其意义进行了讨论。研究了显着紧密度值作为紧急结果的外观。

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