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Practical Efficient Regional Land-Use Planning Using Constrained Multi-Objective Genetic Algorithm Optimization

机译:实用有效的区域土地利用规划使用受限多目标遗传算法优化

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摘要

Practical efficient regional land-use planning requires planners to balance competing uses, regional policies, spatial compatibilities, and priorities across the social, economic, and ecological domains. Genetic algorithm optimization has progressed complex planning, but challenges remain in developing practical alternatives to random initialization, genetic mutations, and to pragmatically balance competing objectives. To meet these practical needs, we developed a Land use Intensity-restricted Multi-objective Spatial Optimization (LIr-MSO) model with more realistic patch size initialization, novel mutation, elite strategies, and objectives balanced via nominalizations and weightings. We tested the model for Dapeng, China where experiments compared comprehensive fitness (across conversion cost, Gross Domestic Product (GDP), ecosystem services value, compactness, and conflict degree) with three contrast experiments, in which changes were separately made in the initialization and mutation. The comprehensive model gave superior fitness compared to the contrast experiments. Iterations progressed rapidly to near-optimality, but final convergence involved much slower parent–offspring mutations. Tradeoffs between conversion cost and compactness were strongest, and conflict degree improved in part as an emergent property of the spatial social connectedness built into our algorithm. Observations of rapid iteration to near-optimality with our model can facilitate interactive simulations, not possible with current models, involving land-use planners and regional managers.
机译:实际有效的区域土地利用计划要求规划者平衡社会,经济和生态领域的竞争用途,区域政策,空间兼容性和优先事项。遗传算法优化已经进行了复杂的规划,但挑战仍然发展为随机初始化,基因突变,以及务实平衡竞争目标的实用替代品。为了满足这些实际需求,我们开发了一种土地利用强度限制的多目标空间优化(Lir-MSO)模型,具有更现实的补丁尺寸初始化,新颖的突变,精英策略以及通过名义化和重量平衡的目标。我们测试了其中实验比较全面健身的大鹏,中国模型(跨转换成本,国内生产总值(GDP),生态系统服务价值,紧凑性和冲突的程度)有三个对比实验,其中的变化是在初始化分开制造突变。与对比度实验相比,综合模型具有卓越的健身。迭代迅速进展到近乎最优,但最终收敛涉及较慢的父母后代突变。转换成本和紧凑性之间的权衡最强,并且冲突程度部分地改善了我们算法中的空间社会联系的新兴财产。通过我们的模型的快速迭代对近乎最优迭代的观察可以促进互动模拟,而不是当前模型,涉及土地使用规划者和区域管理人员。

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