Simulation for Land Use Dynamic Change of Dian-Chi Lake Watershed Using Agent-Based Modeling

Quanli Xu, Kun Yang, Jun-hua Yi, G. Wang
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引用次数: 1

Abstract

The land use structure and biological service function of Dian-chi lake watershed are being changed by the rapid development of social economy and urbanization, which finally leads to the generation and aggravation of agriculture and urban non-point source pollution in whole basin. Thereby, it is necessary to study the relationship and spatiotemporal process between human activities and land use/cover change (LUCC) of watershed, which is hopeful to offer the scientific decision support for reasonable land planning and land use. Through being combined with GIS technologies of spatial analysis and using the artificial intelligence algorithm called Ant Colony Optimization(ACO) for optimizing, this paper has applied the method of Agent-based modeling to establish the spatiotemporal process model of LUCC in order to simulating the dynamic change of land use in whole watershed. Generally, what has been explored is as fellows. Firstly, make a choice and evaluation for impact factors of land dynamic use, and then create the classes of Agents and their rules in LUCC process. Based on the Java language and Repast platform of modeling, the program design, implementation and simulation of model are given in detail. And finally, the validation for model and analysis for the simulating results are also discussed clearly. We could infer three conclusions from the results of experience. Ant colony algorithm is effective to promote the science express for moving and decision of agents, and the simulating results have better accuracy in both mathematics and geometry than no using it. And the highest accuracy reaches 78.6% in numbers and 68.5% in shape similarity.
基于agent的滇池流域土地利用动态变化模拟
社会经济和城市化的快速发展正在改变滇池流域的土地利用结构和生物服务功能,最终导致整个流域农业和城市面源污染的产生和加剧。因此,有必要研究流域人类活动与土地利用/覆被变化(LUCC)的关系及其时空过程,以期为合理的土地规划和土地利用提供科学的决策支持。本文通过与GIS空间分析技术相结合,利用蚁群优化(Ant Colony Optimization, ACO)人工智能算法进行优化,采用基于agent的建模方法,建立了土地利用变化的时空过程模型,以模拟整个流域土地利用的动态变化。一般来说,我们是作为同伴进行探索的。首先对土地动态利用的影响因子进行选择和评价,然后建立土地利用变化过程中agent的类别及其规则。基于Java语言和Repast建模平台,详细介绍了模型的程序设计、实现和仿真。最后,对模型的验证和仿真结果进行了分析。从经验的结果我们可以推断出三个结论。蚁群算法有效地促进了智能体运动和决策的科学性,仿真结果在数学和几何上都比不使用蚁群算法有更好的精度。其中,数字和形状相似性的准确率最高,分别达到78.6%和68.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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