Modeling Land Use Change Process by Integrating the MLP Neural Network Model in the Central Desert Regions of Iran

Desert Pub Date : 2019-12-01 DOI:10.22059/JDESERT.2019.76364
H. Fathizad, H. Ardakani, R. T. Mehrjardi, Hamid Sodaiezadeh
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Abstract

To understand and manage the natural and human-made ecosystems and develop long-term planning, it is necessary to model Land Use Change (LUC) and predict future changes. Therefore, we used Landsat satellite imagery, Multilayer Perceptron neural network (MLP) and Markov Chain model (MCA) to monitor the regional changes over 30 years in the central arid regions of Iran. In the present research, the stratified maps derived from the object-oriented algorithm were used to detect and map the changes of land use classes from 1986 to 2016. Furthermore, the land use in 2030 was predicted using Land use Change Modeler (LCM). Slop, contour elevation lines, distance from river, road, afforestation, agricultural lands/gardens, barren lands, poor rangelands, residential lands, rocky land, and sand dunes were considered as factors influencing the changes in the ANN. The Cramer's V coefficient was employed to select appropriate parameters with the highest significant correlation. Our results showed that the sub-models performed well (75-85%). Besides, the highest and lowest accuracy of sub-models were related to the distance from barren lands and distance from residential areas (75.23 and 85.91%, respectively). The results of land use change monitoring from 2016 to 2030 revealed that land use such as forest, residential lands, gardens, and sand dunes would be increased by about 0.11, 1.53, 2.36 and 0.56 %, respectively, by 2030 compared to 2016. On the other, the area of barren land and poor rangeland would be reduced by 2.88 and 1.68 %, respectively. Our results can be used in land change evaluations, environmental studies, and integrated planning and management regarding appropriate and logical use of natural resources and reducing resource degradation.
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基于MLP神经网络模型的伊朗中部沙漠地区土地利用变化过程模拟
为了了解和管理自然和人为生态系统并制定长期规划,有必要对土地利用变化进行建模并预测未来的变化。因此,我们使用陆地卫星图像、多层感知器神经网络(MLP)和马尔可夫链模型(MCA)来监测伊朗中部干旱地区30年来的区域变化。在本研究中,使用基于面向对象算法的分层地图来检测和绘制1986年至2016年土地利用类别的变化。此外,使用土地利用变化建模器(LCM)对2030年的土地利用进行了预测。坡度、等高线高程线、距河流、道路、植树造林、农田/花园、荒地、不良牧场、住宅用地、岩石地和沙丘被认为是影响ANN变化的因素。采用Cramer’s V系数选择具有最高显著相关性的适当参数。我们的结果表明,子模型表现良好(75-85%)。此外,子模型的最高和最低精度与距荒地的距离和距居民区的距离有关(分别为75.23%和85.91%)。2016年至2030年的土地利用变化监测结果显示,到2030年,森林、住宅用地、花园和沙丘等土地利用将分别比2016年增加约0.11%、1.53%、2.36%和0.56%。另一方面,贫瘠土地和贫瘠牧场的面积将分别减少2.88%和1.68%。我们的研究结果可用于土地变化评估、环境研究以及关于合理利用自然资源和减少资源退化的综合规划和管理。
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