论文

基于多智能体的居住空间格局演变的真实场景模拟

展开
  • 中山大学地理科学与规划学院,广州 510275
陶海燕 (1966-), 女, 讲师, 博士, 主要研究方向: 多智能体地理模拟。E-mail: taohy@mail.sysu.edu.cn

收稿日期: 2008-09-26

  修回日期: 2009-01-10

  网络出版日期: 2009-06-25

基金资助

国家自然科学基金重点项目 (40830532); 国家杰出青年基金项目 (40525002); 国家自然科学基金项目 (40301084)

Simulation for Evolvement of Residential Spatial Patterns in Real Scene Based on Multi-agent

Expand
  • Geography and Planning School, Sun Yat-sen University, Guangzhou 510275, China

Received date: 2008-09-26

  Revised date: 2009-01-10

  Online published: 2009-06-25

Supported by

The Key Project for National Natural Science Foundation of China, No.40830532; National Outstanding Youth Foundation of NSF of China, No.40525002; National Natural Science Foundation of China, No.40301084

摘要

多智能体建模方法为城市研究提供了一种新的研究思路。采用自下而上的多智能体方法构建真实场景的居住决策模型,并研究城市居住格局的形成和演变具有重要的理论意义和应用价值。但目前的多智能体模型通常把空间抽象为均质空间,无法反映真实的地理空间。通过对居住环境的"宜居性"评价,作为居民智能体对居住环境评价的影响因子。将多智能体模型与GIS相结合,为智能体模型提供一个异质的、动态变化的模拟环境。由此居民智能体根据自身的经济状况以及对居住环境的偏好不断地调整其在城市中的居住地,模拟出城市居住空间格局的演变过程。将模型应用于广州市海珠区,其模拟的住宅价格空间分布与实际情况相关系数在0.6以上,说明模拟结果与实际的情况比较吻合。模拟结果在一定程度上为理解和探讨居住空间格局的成因和动态变化提供帮助,为发展和验证城市理论提供一种重要的分析手段和模拟方法。

本文引用格式

陶海燕, 黎夏, 陈晓翔 . 基于多智能体的居住空间格局演变的真实场景模拟[J]. 地理学报, 2009 , 64(6) : 665 -676 . DOI: 10.11821/xb200906003

Abstract

Multi-agent modeling provides a new method for urban research. And it is of theoretical and practical significance to adopt multi-agent modeling, a bottom-up approach, to build up the actual residential decision model, and to research the formation and evolvement of the urban residential spatial patterns. However, many multi-agent models usually describe space as homogeneous space which is beyond expression of real geo-space. In order to simulate the urban residential patterns, some evaluation indices of urban residential suitability in the human-environment science are introduced. Integrating multi-agent model with GIS can provide a heterogeneous and dynamic simulated environment. The model based on multi-agent is constructed as follows: simulated inhabitants wander through the universe to find the optimal place of residence according to constraints as their incomes and preference of residential environment. Evaluation indices, such as traffic accessibility, life convenience and landscape beauty, have been chosen and quantified by GIS. The migration decision of agent depends on the current residential pressure. It is suggested that the probability of leaving its current location increases monotonically with an increase in the residential pressure. Current residential pressure of an agent is estimated by the pressure caused by both basic house price and house environmental price. On the Swarm platform, Java language and component of Swarm-GIS are used to realize the model. The proposed model is applied to simulate the formation of residential spatial patterns in Haizhu district of Guangzhou, Guangdong province. The results of simulation reveal that downtown area is still the first choice of housing location for middle and high income residents in Guangzhou, which shows a different residential mode from Western developed countries. The Spearman rank correlation coefficient of simulated house price and actual house price exceeds 0.6, which indicates that the simulation result can reflect the rules in real practice. Although some uncertainty remains in the model, such as the lack of unified criteria for residential environment evaluation, randomness of house choice and the simplification of the model, the simulation can help us to understand and explore causes and dynamics of residential space patterns, and provide an important analytical tool and simulation method to develop and verify urban theories.

参考文献

[1] Zhang Wenzhong, Liu Wang. The comment on research of Western intra-urban residential relocation models. Progress in Geography, 2004, 23(1): 89-95. [张文忠, 刘旺. 西方城市居住区位决策与再选择模型的评述. 地理科学进展, 2004, 23(1): 89-95.]
[2] Benenson I. Multi-agent simulations of residential dynamics in the city. Computers, Environment and Urban Systems, 1998, 22(1): 25-42.
[3] Benenson I, Torrens P M. Geosimulation: Object-based modeling of urban phenomena. Computers, Environment and Urban Systems, 2004, 28(1/2):1-8.
[4] Weiss G. Multi-agent Systems: A Modern Approach to Distributed Artificial Intelligence. Cambridge, MA: The MIT Press, 1999.
[5] Fang Meiqi, Zhang Shuren. Modeling and Simulation of Complex Systems. Beijing: China Renmin University Press, 2005. [方美琪, 张树人. 复杂系统建模与仿真. 北京: 中国人民大学出版社, 2005.]
[6] Schelling T C. Micromotives and Macrobehaviror. New York: W. W. Norton & Company, Inc., 1978.
[7] Epstein J M, Axtell R. Growing Artificial Societies: Social Science from the Bottom Up. Washing D.C.: Brookings Institution Press, 1996.
[8] Benenson I, Torrens P M. Geosimulation: Automata-based Modeling of Urban Phenomena. Chichester: John Wiley & Sons Ltd., 2004.
[9] Zhang Wenzhong. Index system and method of residential environmental evaluation in inner cities. Scientia Geographica Sinica, 2007, 27(1): 17-23. [张文忠. 城市内部居住环境评价的指标体系和方法. 地理科学, 2007, 27(1): 17-23.]
[10] Gu Chaolin, Song Guochen. The study on the urban image and its application in the urban planning. City Planning Review, 2001, 25(3): 70-73. [顾朝林, 宋国臣. 城市意象研究及其在城市规划中的应用. 城市规划, 2001, 25(3): 70-73.]
[11] Knox P, Steven P. Urban Social Geography: An Introduction. 4th edn. Beijing: The Commercial Press, 2005. [保罗·诺克斯, 斯蒂文·平奇. 城市社会地理学导论. 4版. 北京: 商务印书馆, 2005. ]
[12] Ning Yuemin, Zha Zhiqiang. The study of evaluation and optimization for human settlement in the metropolitan areas: Take Shanghai as an example. City Planning Review, 1999, 23(6): 15-20. [宁越敏, 查志强. 大都市人居环境评价和优化研究: 以上海为例. 城市规划, 1999, 23(6): 15-20.]
[13] Oh K, Jeong Y. The usefulness of the GIS-fuzzy set approach in evaluating the urban residential environment. Environment and Planning B: Planning and Design, 2002, 29(4): 589-606.
[14] Bender A R, Din A, Favarger et al. An analysis of perceptions concerning the environmental quality of housing in Geneva. Urban Studies, 1997, 34(3): 509-513.
[15] Turkoglu H D. Residents' satisfaction of housing environments: The case of Istanbul, Turkey. Landscape and Urban Planning, 1997, 39(1): 55-67.
[16] Liu Wang, Zhang Wenzhong, Liu Changqi. The assessment of Beijing urban human settlements and the suggestions for the construction. Huazhong Architecture, 2004, 22(1): 2-3. [刘旺, 张文忠, 刘长岐. 北京市城市内部人居环境评价及对居住建设的启示. 华中建筑, 2004, 22(1): 2-3.]
[17] Wang Maojun, Zhang Xuexia, Luan Weixin. Structure and spatial analysis of evaluation of residential environment in Dalian City. Scientia Geographica Sinca, 2003, 23(1): 87-94. [王茂军, 张学霞, 栾维新. 大连城市居住环境评价构造与空间分析. 地理科学, 2003, 23(1): 87-94.]
[18] Chen Chun, Wu Zhigang. The study on method of human settlement environment grading in the city. Urban Problems, 2007, (6): 20-23. [陈春, 吴智刚. 城市人居环境定级方法研究. 城市问题, 2007(6): 20-23. ]
[19] Li Wangming, Ye Xinyue, Sun Yu. The assessment of urban human settlements: A case study of Hangzhou. Economic Geography, 1999, 19(2): 38-43. [李王鸣, 叶信岳, 孙于. 城市人居环境评价: 以杭州城市为例. 经济地理, 1999, 19(2): 38-43. ]
[20] Lu Yuqi, Lin Kang, Zhang Li. The methods of spatial development regionalization: A case study of Yizheng City. Acta Geographica Sinica, 2007, 62(4): 351-363. [陆玉麒, 林康, 张莉. 市域空间发展类型区划分的方法探讨: 以江苏省仪征市为例. 地理学报, 2007, 62(4): 351-363.]
[21] Darling A H. Measuring benefits generated by urban water parks. Land Economics, 1973, 49(1): 22-34.
[22] Brown G M J, Pollakowski H O. Economics value of shoreline. Review of Economics and Statistics, 1977, 59(3): 272-278.
[23] Sengupta S, Osgoos D E. The value of remoteness: A hedonic price estimation of ranchette prices. Ecological Economics, 2003, 44(1): 91-103.
[24] Correll M R, Lillydahl J H, Singell L D. The effects of greenbelts on residential property values: Some finding on the political economy of open space. Land Economics, 1978, 54(2): 207-217.
[25] Geoghgan J, Wainger L, Bockstael N E. Spatial landscape indices in a hedonic framework: An ecological economics analysis using GIS. Ecological Economics, 1997, 23(3): 251-264.
[26] Peiser R H, Mansons S M, Janssen M A. The private value of public open space within subdivisions. Journal of Architectural and Planning Research, 1993, 10(2): 91-104.
[27] Tao Haiyan, Pan Maolin, Li Xia et al. Study of residential differentiation model framework. Journal of System Simulation, 2007, 19(21): 5086-5089. [陶海燕, 潘茂林, 黎夏等. 城市居住空间分异仿真模型框架研究. 系统仿真学报, 2007, 19(21): 5086-5089.]
[28] Wang Kaiyong, Chen Tian. The development and evolvement of urban residential space. Resource Inhabitant and Environment, 2006, (3):31-33. [王开泳, 陈田. 大城市居住空间的发展与演变. 资源与人居环境, 2006, (3): 31-33.]
[29] Tao Haiyan, Li Xia, Chen Xiaoxiang et al. Method exploration of geographical spatial differentiation based on multi-agent: A case study of urban residential simulations. Acta Geographica Sinica, 2007, 62(6): 579-588. [陶海燕, 黎夏, 陈晓翔 等. 基于多智能体的地理空间分异现象模拟: 以城市居住空间演变为例. 地理学报, 2007, 62(6): 579-588.]
[30] Ou Ruiqiu, Wang Zeke. Diagram of Microeconomics. Beijing: China Renmin University Press, 2005. [欧瑞秋, 王则柯. 图解微观经济学. 北京: 中国人民大学出版社, 2005.]
[31] Du Debin, Cui Pei, Liu Xiaoling. Housing demand, residential location and residential differentiation. Economic Geography, 1996, 16(1): 82-90. [杜德斌, 崔裴, 刘小玲. 论住宅需求、居住选址与居住分异. 经济地理, 1996, 16(1): 82-90.]
[32] Li Shuangcheng, Xu Yueqing, Zhou Qiaofu et al. Statistical analysis on the relationship between road network and ecosystem fragmentation in China. Progress in Geography, 2004, 23(5): 78-85. [李双成, 许月卿, 周巧富 等. 中国道路网与生态系统破碎化关系统计分析. 地理科学进展, 2004, 23(5): 78-85.]
[33] Li Xia, Liu Xiaoping. Defining agents' behaviors to simulate complex residential development using multicriteria evaluatioan. Journal of Environmental Management, 2007, 85(4): 1063-1075.
[34] Li Xia, Yeh A G O. Knowledge discovery and geographical cellular automation. Science in China (Series D) , 2004, 34(9): 865-872. [黎夏, 叶嘉安. 知识发现及地理元胞自动机. 中国科学(D辑), 2004, 34(9): 865-872. ]
[35] Costanza R, Voinov A. Landscape Simulation Modeling: A Spatially Explicit Dynamic Approach. Zhengzhou: Yellow River Water Conservancy Press, 2006. [Costanza R, Voinov A 编著, 徐中民, 焦文献, 谢永成 等译校. 景观模拟模型: 空间显式的动态方法. 郑州: 黄河水利出版社, 2006.]

文章导航

/