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A new multi-objective self-organizing optimization algorithm (MOSOA) for spatial optimization problems

机译:一种新的空间优化问题的多目标自组织优化算法(MOSOA)

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Spatial planning is an important and complex activity. It includes land use planning and resource allocation as basic components. An abundance of papers can be found in the literature related to each one of these two aspects separately. On the contrary, a much smaller number of research reports deal with both aspects simultaneously. This paper presents an innovative evolutionary algorithm for treating combined land use planning and resource allocation problems. The new algorithm performs optimization on a cellular automaton domain, applying suitable transition rules on the individual neighbourhoods. The optimization process is multi-objective, based on non-domination criteria and self-organizing. It produces a Pareto front thus offering an advantage to the decision maker, in comparison to methods based on weighted-sum objective functions. Moreover, the present multi-objective self-organizing algorithm (MOSOA) can handle both local and global spatial constraints. A combined land use and water allocation problem is treated, in order to illustrate the cellular automaton optimization approach. Water is allocated after pumping from an aquifer, thus contributing a nonlinearity to the objective function. The problem is bi-objective aiming at (a) the minimization of soil and groundwater pollution and (b) the maximization of economic profit. An ecological and a socioeconomic constraint are imposed: (a) Groundwater levels at selected places are kept above prescribed thresholds. (b) Land use quota is predefined. MOSOA is compared to a standard multi-objective genetic algorithm and is shown to yield better results both with respect to the Pareto front and to the degree of compactness. The latter is a highly desirable feature of a land use pattern. In the land use literature, compactness is part of the objective function or of the constraints. In contrast, the present approach renders compactness as an emergent result.
机译:空间规划是一项重要而复杂的活动。它包括土地使用计划和资源分配作为基本组成部分。在与这两个方面的每一个有关的文献中,可以找到大量的论文。相反,很少有研究报告同时涉及这两个方面。本文提出了一种创新的进化算法,用于处理土地利用规划和资源分配问题。新算法在蜂窝自动机域上执行优化,对各个邻域应用合适的过渡规则。优化过程是基于非支配标准和自组织的多目标。与基于加权和目标函数的方法相比,它产生了帕累托前沿,从而为决策者提供了优势。此外,当前的多目标自组织算法(MOSOA)可以处理局部和全局空间约束。为了说明蜂窝自动机优化方法,对土地和水的分配问题进行了综合处理。从含水层中抽水后分配水,从而对目标函数产生非线性影响。问题是双目标的,目的是(a)使土壤和地下水污染最小化,以及(b)使经济利润最大化。施加了生态和社会经济约束:(a)选定地点的地下水位保持在规定的阈值以上。 (b)土地使用配额是预先确定的。将MOSOA与标准的多目标遗传算法进行了比较,并显示出在Pareto前沿和紧密度方面均能产生更好的结果。后者是土地利用模式的一个非常理想的特征。在土地使用文献中,紧凑性是目标函数或约束的一部分。相反,本方法将紧凑性作为紧急结果。

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