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基于坡体单元和机器学习方法的温州滑坡灾害风险研究

Study on landslide hazard risk in Wenzhou based on slope units and machine learning approaches.

作者信息

Kang Dengjie, Dan Sheng, Hua Zhang, Jingyi Lu, Chenlu Wang, Zhenguo Wang, Shaohua Wang

机构信息

School of National Safety and Emergency Management, Beijing Normal University, Beijing, 100875, China.

Faculty of Geographical Science, Beijing Normal University, Beijing, 100875, China.

出版信息

Sci Rep. 2025 Mar 3;15(1):7511. doi: 10.1038/s41598-025-91669-7.

Abstract

Landslides are a prevalent and devastating form of geological disaster. These events occur when gravity causes rock and soil masses to slide along specific surfaces or zones, often triggered by intense rainfall, seismic activity, or human engineering activities. Assessing landslide hazard risk is crucial for effective disaster management, yet traditional approaches often rely on administrative or grid units, which lack the granularity needed for site-specific hazard management. This results in uniformly high-risk classifications for hilly areas, complicating practical engagement and increasing management costs. The study further combines historical landslide data and applies machine learning models such as Random Forest, XGBoost, and LightGBM to analyze landslide susceptibility in Wenzhou City, proposing a slope unit-based landslide hazard assessment method. The results are as follows: (1) Landslide Susceptibility across different slope units was categorized as low, low-moderate, moderate, moderate-high, high, and very high, with the very high-risk slope units accounting for 5.35% of the total area and the low-risk slope units covering the largest area (975.41 km). (2) Among the machine learning models used for landslide susceptibility analysis at the slope unit level, the Random Forest model performed the best, demonstrating higher prediction reliability, with an accuracy of 77.94% for Random Forest, 76.95% for XGBoost, and 78.30% for LightGBM. (3) Extreme rainfall events significantly increased the proportion of high-risk slope units, particularly in mountainous and hilly areas. According to different rainfall return periods, the proportion of very high-risk slope units increased from 5.35 to 40.39% under the 100-year return period. (4) A case study of Xuekou Village validated the practical application of the slope unit risk assessment results and proposed preventive measures for medium-to-high-risk units, such as regular monitoring and enhanced vegetation coverage, to mitigate landslide risks.

摘要

山体滑坡是一种常见且具有破坏性的地质灾害形式。当重力导致岩石和土壤团块沿着特定表面或区域滑动时,就会发生这些事件,通常由强降雨、地震活动或人类工程活动引发。评估山体滑坡灾害风险对于有效的灾害管理至关重要,但传统方法通常依赖行政或网格单元,缺乏针对特定地点灾害管理所需的粒度。这导致山区的风险分类普遍偏高,使实际应对工作复杂化并增加管理成本。该研究进一步结合历史山体滑坡数据,并应用随机森林、XGBoost和LightGBM等机器学习模型来分析温州市的山体滑坡易发性,提出了一种基于坡度单元的山体滑坡灾害评估方法。结果如下:(1)不同坡度单元的山体滑坡易发性分为低、低-中、中、中-高、高和非常高,其中极高风险坡度单元占总面积的5.35%,低风险坡度单元覆盖面积最大(975.41平方公里)。(2)在用于坡度单元层面山体滑坡易发性分析的机器学习模型中,随机森林模型表现最佳,显示出更高的预测可靠性,随机森林的准确率为77.94%,XGBoost为76.95%,LightGBM为78.30%。(3)极端降雨事件显著增加了高风险坡度单元的比例,特别是在山区和丘陵地区。根据不同的降雨重现期,在百年一遇的情况下,极高风险坡度单元的比例从5.35%增加到40.39%。(4)对薛口村的案例研究验证了坡度单元风险评估结果的实际应用,并针对中高风险单元提出了预防措施,如定期监测和增加植被覆盖,以降低山体滑坡风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d683/11876616/a89249ea3027/41598_2025_91669_Fig1_HTML.jpg

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