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An improved Genetic Algorithm for spatial optimization of multi-objective and multi-site land use allocation

机译:多目标多站点土地利用分配空间优化的改进遗传算法

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摘要

As a result of multiple land use types, spatial heterogeneity, and conflicts of interest among multiple participants, multi-site land use allocation becomes a complex and significant optimization issue. We propose an improved Genetic Algorithm (GA) to deal with multi-site land use allocation, in which maximum economic benefit, maximum ecological benefit, maximum suitability, and maximum compactness were formulated as optimal objectives; and residential space demand and some regulatory knowledge were set as constraints. A Goal Programming model with a reference point form was used to manage trade-offs among multiple objectives. In order to improve the efficiency of the common GA applied to multi-site land use allocation, two crossover steps and two mutation operations were designed. This paper presents an application of the improved GA to the Regional District of Central Okanagan in Canada. Results showed that the proposed GA exhibited good robustness and could generate any optimal land use scenario according to stakeholders' preferred objectives, thus having the potential to provide interactive technical support for land use planning. (C) 2016 Elsevier Ltd. All rights reserved.
机译:由于多种土地利用类型,空间异质性以及多个参与者之间的利益冲突,多地点土地利用分配成为一个复杂而重要的优化问题。我们提出了一种改进的遗传算法(GA)来处理多站点土地利用分配,其中以最大的经济效益,最大的生态效益,最大的适用性和最大的紧凑性为最佳目标。住宅空间需求和一些监管知识被设置为约束。具有参考点形式的目标编程模型用于管理多个目标之间的权衡。为了提高通用遗传算法应用于多站点土地利用分配的效率,设计了两个交叉步骤和两个变异操作。本文介绍了改进的遗传算法在加拿大中欧肯娜根地区的应用。结果表明,拟议的遗传算法表现出良好的鲁棒性,并且可以根据利益相关者的首选目标生成任何最佳的土地利用方案,从而有可能为土地利用规划提供交互式技术支持。 (C)2016 Elsevier Ltd.保留所有权利。

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