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基于GIS与ANN的土地转化模型在城市空间扩展研究中的应用——以北京市为例
引用本文:XU Ying~ 1,2,LV Bin~ 1, ~1Department of Urban and Regional Planning,College of Urban and Environmental Sciences,Peking University,Beijing 100871, ~2China Academy of Urban Planning and Design,Beijing 100044. 基于GIS与ANN的土地转化模型在城市空间扩展研究中的应用——以北京市为例[J]. 北京大学学报(自然科学版), 2008, 0(2)
作者姓名:XU Ying~ 1  2  LV Bin~ 1   ~1Department of Urban and Regional Planning  College of Urban and Environmental Sciences  Peking University  Beijing 100871   ~2China Academy of Urban Planning and Design  Beijing 100044
作者单位:北京大学城市与环境学院,北京大学城市与环境学院 城市与区域规划系,北京100871,中国城市规划设计研究院,北京100044,城市与区域规划系,北京100871
摘    要:结合GIS强大的空间分析功能与人工神经网络(ANN)处理非线性适应性信息的独特能力建立一种土地转化模型(land transformation model,LTM),用以定量分析城市土地扩展与社会、政策、环境等因子之间关系,并基于此对城市空间扩展的动态进行模拟与预测。LTM模型的运行主要分为3步:因子选取与数据预处理;建立人工神经网络并输入数据对其进行训练与仿真;应用PID法对人工神经网络的输出进行分析,同时在GIS平台上模拟出城市扩展的动态分布。选取相应的影响因子并运用该模型对北京市的城市扩展进行实证模拟检验与预测,结果表明此LTM模型确实提供了一种定量分析和预测城市空间扩展的方法,能够为城市规划与城市发展政策的制定提供重要的科学参考。

关 键 词:城市空间扩展  土地转化模型(LTM)  GIS  人工神经网络(ANN)

Application of Land Transformation Model Based on GIS and ANN:A Case Study of Beijing, China
Abstract:The land transformation model (LTM), which couples geographic systems (GIS) with artificial neural networks (ANN) to simulate and forecast urban spatial growth is presented. Using ANN with its highly intelligent function, LTM can make a quantitative analysis on the relationship between social, political, environmental factors and urban growth, and then give a prediction of urban spatial expanding. The main approach of LTM includes three steps: first, select some appropriate impact factors and pretreat them; second, set up Artificial Neural Network and train; third, input all factors data and gain the prediction result. A map of urban growth probability was calculated and used to predict future urban patterns. Then, Beijing which underwent a rapid urbanization in the past years is selected as the research area, and it shows that this LTM has a good efficiency and it is a useful tool for simulating urban growth.
Keywords:urban spatial expanding  land transformation model (LTM)  GIS  artificial neural network(ANN)
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