Soil Conservation and Watershed Management Research Department, Chaharmahal and Bakhtiari Agricultural and Natural Resources Research and Education Center (AREEO), Shahrekord, Iran.
Department of Natural Resources and Environmental Engineering, College of Agriculture, Shiraz University, Shiraz, Iran.
Sci Rep. 2020 Jul 22;10(1):12144. doi: 10.1038/s41598-020-69233-2.
This study sought to produce an accurate multi-hazard risk map for a mountainous region of Iran. The study area is in southwestern Iran. The region has experienced numerous extreme natural events in recent decades. This study models the probabilities of snow avalanches, landslides, wildfires, land subsidence, and floods using machine learning models that include support vector machine (SVM), boosted regression tree (BRT), and generalized linear model (GLM). Climatic, topographic, geological, social, and morphological factors were the main input variables used. The data were obtained from several sources. The accuracies of GLM, SVM, and functional discriminant analysis (FDA) models indicate that SVM is the most accurate for predicting landslides, land subsidence, and flood hazards in the study area. GLM is the best algorithm for wildfire mapping, and FDA is the most accurate model for predicting snow avalanche risk. The values of AUC (area under curve) for all five hazards using the best models are greater than 0.8, demonstrating that the model's predictive abilities are acceptable. A machine learning approach can prove to be very useful tool for hazard management and disaster mitigation, particularly for multi-hazard modeling. The predictive maps produce valuable baselines for risk management in the study area, providing evidence to manage future human interaction with hazards.
本研究旨在为伊朗的一个山区制作精确的多灾害风险图。研究区域位于伊朗西南部。该地区在最近几十年经历了许多极端自然事件。本研究使用机器学习模型(包括支持向量机(SVM)、增强回归树(BRT)和广义线性模型(GLM))来模拟雪崩、滑坡、野火、地面沉降和洪水的概率。气候、地形、地质、社会和形态因素是主要的输入变量。数据来自多个来源。GLM、SVM 和功能判别分析(FDA)模型的精度表明,SVM 是预测研究区域内滑坡、地面沉降和洪水灾害最准确的模型。GLM 是野火制图的最佳算法,而 FDA 是预测雪崩风险最准确的模型。使用最佳模型的所有五种灾害的 AUC(曲线下面积)值均大于 0.8,表明模型的预测能力是可以接受的。机器学习方法可以证明是灾害管理和减轻灾害的非常有用的工具,特别是对于多灾害建模。预测图为研究区域的风险管理提供了有价值的基线,为管理未来人类与灾害的相互作用提供了证据。