使用多标准决策(MCDM)、统计和机器学习模型的滑坡易感性制图,法国Aube部门

Q4 Earth and Planetary Sciences Earth Pub Date : 2023-09-09 DOI:10.3390/earth4030037
Abdessamad Jari, Achraf Khaddari, Soufiane Hajaj, El Mostafa Bachaoui, Sabine Mohammedi, Amine Jellouli, Hassan Mosaid, Abderrazak El Harti, Ahmed Barakat
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引用次数: 1

摘要

山体滑坡是最相关和最具潜在破坏性的自然风险之一,会造成物质和人员损失。法国的奥布省因几次重大滑坡事件而闻名。本研究在法国东北部的奥贝省(Aube)使用频率比(FR)作为统计方法,层次分析法(AHP)作为多准则决策(MCDM)方法,以及随机森林(RF)和k-近邻(kNN)作为机器学习方法来评估滑坡易感性(LS)。随后,在地理信息系统(GIS)环境中生成8个滑坡成因的主题层,包括距水文距离、采石场密度、高程、坡度、岩性、距道路距离、距断层距离、降雨量等。对主题层进行综合处理,绘制研究区滑坡易感性图。另一方面,根据法国地质调查局(BRGM)创建的数据库进行滑坡清单,其中选择了157个滑坡事件,然后训练RF和kNN模型生成研究区域的滑坡地图(lsm)。使用受试者工作特征曲线下面积(ROC AUC)评估生成的图谱。随后,FR模型的准确性评估显示,结果比AHP更准确(AUC = 66.0%),优于后者6%,而机器学习模型结果显示,RF比kNN (<7.3%)的结果更好,AUC = 95%。通过对LS填图结果的分析,岩性、到水文网的距离、到道路的距离和高程是控制研究区滑坡易感性的四个主要因素。目前的研究制图结果可使奥贝部内未来的缓解和保护活动受益,为决策者提供优化的土地管理。
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Landslide Susceptibility Mapping Using Multi-Criteria Decision-Making (MCDM), Statistical, and Machine Learning Models in the Aube Department, France
Landslides are among the most relevant and potentially damaging natural risks, causing material and human losses. The department of Aube in France is well known for several major landslide occurrences. This study focuses on the assessment of Landslide Susceptibility (LS) using the Frequency Ratio (FR) as a statistical method, the Analytic Hierarchy Process (AHP) as a Multi-Criteria Decision-Making (MCDM) method, and Random Forest (RF) and k-Nearest Neighbor (kNN) as machine learning methods in the Aube department, northeast of France. Subsequently, the thematic layers of eight landslide causative factors, including distance to hydrography, density of quarries, elevation, slope, lithology, distance to roads, distance to faults, and rainfall, were generated in the geographic information system (GIS) environment. The thematic layers were integrated and processed to map landslide susceptibility in the study area. On the other hand, an inventory of landslides was carried out based on the database created by the French Geological Survey (BRGM), where 157 landslide occurrences were selected, and then RF and kNN models were trained to generate landslide maps (LSMs) of the study area. The generated maps were assessed by using the Area Under the Receiver Operating Characteristic Curve (ROC AUC). Subsequently, the accuracy assessment of the FR model revealed more accurate results (AUC = 66.0%) than AHP, outperforming the latter by 6%, while machine learning models results showed that RF gave better results than kNN (<7.3%) with AUC = 95%. Following the analysis of LS mapping results, lithology, distance to the hydrographic network, distance to roads, and elevation were the four main factors controlling landslide susceptibility in the study area. Future mitigation and protection activities within the Aube department can benefit from the present study mapping results, implicating an optimized land management for decision-makers.
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Earth
Earth Earth and Planetary Sciences-Earth and Planetary Sciences (all)
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