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Land subsidence susceptibility assessment using random forest machine learning algorithm

机译:基于随机森林机器学习算法的土地沉降敏感性评估

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The mechanism of land subsidence and soil deformation deals with the dissipation of excess pore water pressure and the compaction of soil skeleton under the effect of natural or man-made factors, which can lead to serious disasters in the process of urbanization. The negative effects of land subsidence include structural and fundamental damages to underground and aboveground infrastructures such as pipelines and buildings, changes in land surface morphology, and creation of earth fissures. Arid and semi-arid countries like Iran are highly prone to land subsidence phenomenon. In these regions, precipitation rate and natural recharges are relatively lower than those of the global average showing the importance of ground waters for agricultural and industrial activities. Land subsidence has already occurred in more than 300 plains in Iran. Semnan Plain is one of the most important areas facing this phenomenon. The purpose of this research was to assess land subsidence susceptibility using random forest machine learning theory. At first, prioritization of conditioning factors was done using random forest method. Results showed that distance from fault, elevation, slope angle, land use, and water table have the greatest impacts on subsidence occurrence. Then land subsidence susceptibility map was prepared in GIS and R environment. The receiver operating characteristic curve was applied to assess the accuracy of random forest algorithm. The area under the curve by value of 0.77 showed that random forest is an acceptable model for land subsidence susceptibility mapping in the study area. The research results can provide a basis for the protection of environment and also promote the sustainable development of economy and society.
机译:地面沉降和土壤变形的机理涉及自然或人为因素的作用下多余孔隙水压力的消散和土壤骨架的压实,在城市化过程中可能导致严重的灾害。地面沉降的负面影响包括对地下和地面基础设施(如管道和建筑物)的结构性破坏和根本性破坏,土地表面形态的变化以及裂隙的产生。像伊朗这样的干旱和半干旱国家极易发生土地沉降现象。在这些地区,降水率和自然补给相对低于全球平均水平,表明地下水对农业和工业活动的重要性。伊朗300多个平原已经发生地面沉降。森南平原是面对这一现象的最重要领域之一。这项研究的目的是使用随机森林机器学习理论来评估土地沉降敏感性。首先,使用随机森林方法确定条件因子的优先级。结果表明,距断层的距离,海拔,坡度角,土地利用和地下水位对沉降的影响最大。然后在GIS和R环境下绘制了地面沉降敏感性图。采用接收机工作特性曲线来评估随机森林算法的准确性。曲线下面积为0.77,表明随机森林是研究区域土地沉降敏感性图的可接受模型。研究成果可以为环境保护提供依据,也可以促进经济社会的可持续发展。

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