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Cellular automata modeling approaches to forecast urban growth for adana, Turkey: A comparative approach

机译:元胞自动机建模方法可预测土耳其阿达纳的城市增长:一种比较方法

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The aim of this study was to assess the application of cellular automata in urban modeling to give insights into a wide variety of urban phenomena, using the most commonly used urban modeling approaches including: Markov Chain, SLEUTH, Dinamica EGO modelling with the Logistic Regression (LR), Regression Tree (RT) and Artificial Neural Networks (ANN). The effectiveness of these approaches in forecasting the urban growth was assessed in the example of Adana as a fast growing City in Turkey for the year 2023. Different models have their own merits and advantages, the empirical results and findings of various approaches provided a guide for urban sprawl modeling. The accuracy figures to assess the models were derived using Allocation and Disagreement maps together with Kappa statistics. Calibration data were from remotely sensed images recorded in 1967, 1977, 1987, 1998 and 2007. SLEUTH, Markov Chain and RT models resulted in overall Kappa accuracy measures of 75%, 72% and 71% respectively, measured over the past data using hindcasting. LR and ANN yielded the least accurate results with an overall Kappa accuracy of 66%. Different modeling approaches have their own merits. However, the SLEUTH model was the most accurate for handling the variability in the present urban development. (C) 2016 Elsevier B.V. All rights reserved.
机译:这项研究的目的是评估元胞自动机在城市建模中的应用,以使用最常用的城市建模方法(包括马尔可夫链,SLEUTH,Dinamica EGO建模与Logistic回归( LR),回归树(RT)和人工神经网络(ANN)。以Adana作为2023年土耳其快速增长的城市为例,评估了这些方法在预测城市增长方面的有效性。不同的模型各有其优缺点,各种方法的实证结果和发现为该方法提供了指导。城市蔓延建模。使用分配图和分歧图以及Kappa统计数据得出评估模型的准确性数字。校准数据来自1967、1977、1987、1998和2007年记录的遥感图像。SLEUTH,Markov Chain和RT模型得出的Kappa总体准确度测量值分别为75%,72%和71%,这是使用后播方法测得的。 。 LR和ANN产生的结果最不准确,总体Kappa准确度为66%。不同的建模方法各有千秋。但是,SLEUTH模型对于处理当前城市发展中的变化最为准确。 (C)2016 Elsevier B.V.保留所有权利。

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