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A novel approach for predicting the spatial patterns of urban expansion by combining the chi-squared automatic integration detection decision tree, Markov chain and cellular automata models in GIS

机译:结合卡方自动集成检测决策树,马尔可夫链和元胞自动机模型的城市扩展空间格局预测的新方法

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摘要

Urban development is a continuous and dynamic spatio-temporal phenomenon associated with economic developments and growing populations. To understand urban expansion, it is important to establish models that can simulate urbanization process and its deriving factors behaviours, monitor deriving forces interactions and predict spatio-temporally probable future urban growth patterns explicitly. In this research, therefore, we presented a hybrid model that integrates the chi-squared automatic integration detection decision tree (CHAID-DT), Markov chain (MC) and cellular automata (CA) models to analyse, simulate and predict future urban expansions in Tripoli, Libya in 2020 and 2025. First, CHAID-DT model was applied to investigate the contributions of urban factors to the expansion process, to explore their interactions and to provide future urban probability map; second, MC model was employed to estimate the future demand of urban land; third, CA model was used to allocate estimated urban land quantity on the probability map to present future projected land use map. Three satellite images of the study area were obtained from the periods of 1984, 2002 and 2010 to extract land use maps and urban expansion data. We validated the model with two methods, namely, receiver operating characteristic and the kappa statistic index of agreement. Results confirmed that the proposed hybrid model could be employed in urban expansion modelling. The applied hybrid model overcame the individual shortcomings of each model and explicitly described urban expansion dynamics, as well as the spatio-temporal patterns involved.
机译:城市发展是与经济发展和人口增长有关的连续和动态的时空现象。要了解城市扩张,建立可模拟城市化过程及其派生因素行为,监控派生因素相互作用并明确预测时空可能的未来城市增长模式的模型非常重要。因此,在这项研究中,我们提出了一个混合模型,该模型集成了卡方自动集成检测决策树(CHAID-DT),马尔可夫链(MC)和元胞自动机(CA)模型,以分析,模拟和预测未来的城市扩展利比亚的黎波里在2020年和2025年。首先,使用CHAID-DT模型调查城市因素对扩张过程的贡献,探讨它们之间的相互作用并提供未来的城市概率图。其次,采用MC模型估算城市土地的未来需求。第三,使用CA模型在概率图上分配估计的城市土地数量,以呈现未来的预计土地使用图。从1984年,2002年和2010年获得了三个研究区域的卫星图像,以提取土地利用图和城市扩展数据。我们用两种方法对模型进行了验证,即接收机工作特性和一致性的κ统计指标。结果证实了所提出的混合模型可用于城市扩展模型。应用的混合模型克服了每个模型的个别缺点,并明确描述了城市扩张动态以及涉及的时空模式。

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