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Spatiotemporal Monitoring and Prediction of Land Use/Land Cover Changes Using CA-Markov Chain Model: A Case Study in Orkhon Province, Mongolia

机译:使用CA-Markov链式模型的时尚监测和预测土地使用/陆地覆盖变化:以蒙古奥克霍省为例

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Land use/land cover (LULC) is one of the serious phenomena that can influence human activities. Spatial-temporal analysis of land-use/land-cover (LULC) change, as well as the monitoring and modeling of urban expansion, are essential for the planning and management of urban environments. Such environments reflect the economic conditions and quality of life of the individual country. Urbanization is generally influenced by national laws, plans, and policies and by power, politics, and governance in many developing countries. Remote sensing tools play a vital role in monitoring LULC change and measuring the rate of urbanization at both the local and global levels. This paper monitored the changes of the urban suitability area, and prediction of LULC with urban growth using multi-criteria decision analysis and cellular automata (CA)-Markov chain model. The province of Orkhon is the most intensive development area in Mongolia, and a transitional zone on urban area expansion with residential, mining, and industries, where is sampled in this study. The methods are provided by the urban suitability area based on the analytic hierarchy process (AHP) with factor variables and simulation of LULC based on the CA-Markov chain model. The urban suitability area analysis is helpful to validate the prediction of an urban area by relative operating characteristic (ROC) curve. The CA-Markov chain model was calibrated with data from 1989 to 2019 and used to predict expansions for 2030 and 2040 with two datasets of explanatory variables including slope, forest, river, specially protected areas, road, railroad, and urban centers in an urban and non-urban area. All analyses were based on Landsat imageries (TM, ETM+, and OLI) that were used to derive main land use classes. The results show that the urban, agriculture and mining area were expanded intensively. Forest was decreased in the last few years caused by human influences. Besides, the simulation results were validated by ROC curves with urban suitability analysis. Finally, this kind of study results is very important and useful to land managers and urban planners.
机译:土地使用/陆地覆盖(LULC)是可能影响人类活动的严重现象之一。土地使用/陆地覆盖(LULC)变化的空间时间分析以及城市扩张的监测和建模对城市环境的规划和管理至关重要。这种环境反映了个别国家的经济状况和生活质量。城市化一般受到许多发展中国家的国家法律,计划和政策以及权力,政治和政治的影响。遥感工具在监测LULC变化和衡量本地和全球层面的城市化率方面发挥着至关重要的作用。本文监测了使用多标准决策分析和蜂窝自动机(CA)-Markov链模型的城市适用性地区的变化和Lulc与城市增长的预测。奥克森省是蒙古最强烈的开发区,以及与住宅,采矿和行业的城市地区的过渡带,在本研究中取样。基于CA-Markov链模型的CA-Markov链模型的分析层次过程(AHP)基于分析层次过程(AHP),基于CA-Markov链模型的Lulc模拟,由城市适用性区域提供了该方法。城市适用性地区分析有助于通过相对操作特征(ROC)曲线来验证城市地区的预测。 CA-Markov链式模型与1989年至2019年的数据校准,并用于预测2030年和2040的扩展,其中两个解释性变量数据集包括坡,森林,河流,特殊保护区,道路,铁路和城市中心和非城市地区。所有分析都基于用于导出主要土地使用类的Landsat成像(TM,ETM +和OLI)。结果表明,城市,农业和采矿区集中扩大。森林在人类影响造成的过去几年中减少。此外,仿真结果由ROC曲线进行验证,具有城市适用性分析。最后,这种研究结果对于土地管理人员和城市规划者来说非常重要,是有用的。

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