蚁群智能及其在大区域基础设施选址中的应用
Ant colony algorithms for optimal site selection in large regions
- 2009年13卷第2期 页码:246-256
纸质出版日期: 2009
DOI: 10.11834/jrs.20090245
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纸质出版日期: 2009 ,
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[1]何晋强,黎夏,刘小平,陶嘉.蚁群智能及其在大区域基础设施选址中的应用[J].遥感学报,2009,13(02):246-256.
Ant colony algorithms for optimal site selection in large regions[J]. Journal of Remote Sensing, 2009,13(2):246-256.
提出了基于蚁群智能的空间选址模型
通过蚁群智能和GIS的结合来解决复杂的空间优化配置问题。这种启发式的智能搜索方法大大提高了空间搜索能力。为符合选址问题的求解
从信息素更新方式和禁忌表调整策略两方面对基本蚁群算法进行改进。同时
为了使得模型能实用于大区域的基础设施选址
提出了"分步逼近"的策略
取得了较好的效果。将所提出的模型应用于广州市公共设施的空间优化选址。实验结果表明
该方法比简单搜索方法和遗传算法更有优势。
Optimal site search for sitting facilities is crucial for the effective use and management of resources and it is also a common task for urban planning. The brute-force method has difficulty in solving complex site search problems especially in large scale areas. In this study
a location model is proposed based on ant colony algorithms (ACO). It combines ant colony intelligence and GIS to solve the problems of complicated spatial optimal allocation. ACO has strong search ability for a huge volume of spatial data. At first
the algorithm is modified about the strategy of pheromone update and Tabu table adjusting to fit the sites location problem. Spatial allocation problems usually have a large set of spatial data and only a few targets. The pheromone evaporates very fast because the selected cells only amount to a small percentage of all the cells. The positive feedback is too weak to play a role in the optimization. A modification is to incorporate the strategy of neighborhood pheromone diffusion in defining pheromone updating. At the same time
an optimal result for sites selection usually does not include two near candidate cells together
so a restricted Tabu table updating strategy is adopted which resembles the strategy of neighborhood pheromone diffusion. Then another important modification is to adopt a multi-scale approach to alleviate the computational demand in conducting large-scale spatial search. This includes two phases of optimization. First
a coarser resolution is used for the identification of rough locations of targets using ACO. Then the next round of optimization is implemented by just searching the neighborhood around these initial locations in the original resolution. This two-phase procedure of optimization can thus significantly reduce the computation time. The study area is located in the city of Guangzhou. This optimization problem considers two spatial variables
population distribution and transportation conditions
which are obtained from GIS. The raster layers have a resolution of 100 × 100 m with a size of 250 × 250 pixels. A comparison experiment is conducted among the multi-scale ACO
ACO
genetic algorithms and simple search algorithms. Experiments indicate that this multi-scale ACO method can produce similar results but use much lesser computation time
compared with the single ACO method. This method has better performance than the single search method and the genetic algorithm method for solving site search problems. ACO has obtained the utility improvement of 2.7%—5.5%
compared with the single search method. ACO has slight improvement of the total utility value over the GA method
but is able to reduce computation time significantly. Its computation time is only 12.5%—29.5% and 8.8%—20.3% of those of the single search method and the GA method respectively. In conclusion
integrating ACO with GIS is important for solving real-world site selection problems. The integration allows these two techniques to be mutually benefited from each other. ACO provides an efficient distributed computation algorithm while GIS provides useful spatial information. The comparison experiment indicates that the proposed model has better performance than GA and SSA especially in the computing time for solving site search problems.
蚁群算法GIS选址简单搜索算法遗传算法
ant colony optimizationGISsite selectionsimple search algorithmgenetic algorithms
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