Modeling the Process of Spatio-Temporal Changes in Land-Use and Urban Development of Ahvaz Based on Spatial Planning Approach

Mohammad Abiyat, Mostefa Abiyat, Morteza Abiyat
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Abstract

The land-use changes and urban development are among the fundamental topics of spatial planning. Monitoring changes in previous years and predicting these changes in the coming years have a significant role in planning and organizing urban spaces. The purpose of this study was to investigate land-use change and urban development in Ahvaz with a landscaping approach based on balanced urban development. .Images of TM (1989), ETM+ (2002), and OLI (2019) of the Landsat satellite are the basis for analyzing this trend. LCM model was used to identify the past changes, while CA-Markov chain model was applied to predict the future changes. These images were classified using a support vector machine algorithm of the object-oriented method, and the land-use maps were prepared using three sensors with four classes of vegetation, barren areas, constructed areas, and water zones. The accuracy of maps was improved separately using NDVI and SAVI indexes in the classification of the images. The efficiency of the indexes was measure by kappa coefficients and the overall accuracy of land-use maps, and then changes were investigated using maps related to the superior index. The results showed that maps related to the SAVI index were more accurate and accordingly, they were used in assessing land-use changes. The LCM model showed that in the periods 1989-2002 and 2002-2019, 2602.92 hectares and 31174.77 hectares were added to the built areas, respectively. In both periods, the most changes were about converting barren lands to built-up areas and the least changes were related to the transformation of the built-up areas to water areas. The results of the CA-Markov model until 2029 showed the continuity of the increasing trend of built-up areas, such that in ten years, 2238.82 hectares will be added to the built-up areas, and it is anticipated that the area will reach approximately 12345.63 hectares by 2029.
基于空间规划方法的阿瓦士土地利用与城市发展时空变化过程建模
土地利用变化和城市发展是空间规划的基本主题之一。监测前几年的变化并预测未来几年的变化对城市空间的规划和组织具有重要作用。本研究的目的是利用基于城市平衡发展的景观研究方法来研究阿瓦士的土地利用变化和城市发展,并以TM(1989)、ETM+(2002)和OLI(2019)的Landsat卫星图像为基础分析这一趋势。LCM模型用于识别过去的变化,CA-Markov链模型用于预测未来的变化。利用面向对象方法的支持向量机算法对图像进行分类,利用植被、荒地、建设区和水区4类传感器绘制土地利用图。分别采用NDVI和SAVI指标对影像进行分类,提高了地图的精度。利用kappa系数和土地利用地图的总体精度来衡量各指标的效率,然后利用优势指标相关的地图考察其变化。结果表明,与SAVI指数相关的地图更为准确,可用于土地利用变化评价。LCM模型显示,1989-2002年和2002-2019年,新增建成区面积分别为2602.92公顷和31174.77公顷。在这两个时期,变化最多的都是荒地向建成区的转变,变化最少的是建成区向水域的转变。CA-Markov模型到2029年的结果显示建成区增加趋势的连续性,在10年内建成区将增加2238.82公顷,预计到2029年建成区将达到约12345.63公顷。
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