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首页> 外文期刊>International Journal of Geographical Information Science >Optimal spatial allocation of water resources based on Pareto ant colony algorithm
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Optimal spatial allocation of water resources based on Pareto ant colony algorithm

机译:基于帕累托蚁群算法的水资源最优空间分配

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摘要

The spatial allocation of water resources is optimised using the multi-objective functions and multi-constrained conditions of the Pareto ant colony algorithm (PACA). The objective function is the highest benefit to the economy, society and the environment, while the constraints include water supply, demand and quality. The PACA is improved by limiting local pheromone scope and dynamically updating global pher-omone levels. Since both strategies guide the ant towards borders of high-pheromone concentration, the new approach enhances the global search capability and convergence speed. Programming, database management and interface tools are then integrated into geographic information systems (GIS) software. The study area is located in Zhenping County, Henan Province, China, and water resource data are obtained using remote sensing (RS) and GIS technology. The improved PACA is solved in the GIS environment. Optimal spatial allocation schemes are obtained for surface, ground and transferred water and the model yields optimal spatial benefit schemes of water resources, embracing economic, social and ecological benefits. The results of improved PACA are superior to those of other intelligent optimisation algorithms, including the ant colony algorithm, multi-objective genetic algorithm and back-propagation artificial neural network. Therefore, the integration of RS, GIS and PACA can effectively optimise the large-scale, multi-objective allocation of water resources. The model also enhances the global search capability, convergence speed and result precision, and can potentially solve other optimal spatial problems with multi-objective functions.
机译:使用帕累托蚁群算法(PACA)的多目标函数和多约束条件来优化水资源的空间分配。目标函数是对经济,社会和环境的最大利益,而制约因素包括供水,需求和质量。通过限制本地信息素范围并动态更新全局信息素级别,改进了PACA。由于这两种策略都将蚂蚁引向高信息素浓度的边界,因此新方法增强了全局搜索能力和收敛速度。然后将编程,数据库管理和界面工具集成到地理信息系统(GIS)软件中。研究区域位于中国河南省镇坪县,利用遥感(RS)和GIS技术获取水资源数据。改进的PACA在GIS环境中得以解决。获得了地表水,地下水和调水的最优空间分配方案,该模型产生了水资源的最优空间效益方案,包括经济,社会和生态效益。改进的PACA的结果优于其他智能优化算法,包括蚁群算法,多目标遗传算法和反向传播人工神经网络。因此,RS,GIS和PACA的集成可以有效地优化水资源的大规模,多目标分配。该模型还增强了全局搜索能力,收敛速度和结果精度,并且可以潜在地解决具有多目标函数的其他最佳空间问题。

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