开放式滑坡项目(OLP),用于敏感性模型的浅层滑坡新清单:意大利西北部朗格-蒙费拉托地区2019年秋季极端降雨事件

IF 2.4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Geosciences (Switzerland) Pub Date : 2023-09-23 DOI:10.3390/geosciences13100289
Michele Licata, Victor Buleo Tebar, Francesco Seitone, Giandomenico Fubelli
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引用次数: 0

摘要

在温带和赤道气候地区,暴雨引发的山体滑坡对人类住区和基础设施构成重大威胁。本研究的重点是开发开放滑坡项目(OLP),这是一个开源的滑坡清单,旨在促进地质统计分析和滑坡风险管理。利用多学科方法和开源多卫星图像数据,对意大利西北部2019年秋季极端降雨引发的3000多起山体滑坡进行了系统测绘。库存创建过程遵循定义良好的标准,并经过严格的验证,以确保准确性和可靠性。通过多元相关和双帕累托概率密度函数验证了数据集的适用性。利用二元逻辑回归建立了滑坡敏感性模型,证明了OLP清单在评估滑坡风险方面的有效性。降雨和岩性分析表明,与峰值降雨量较大的地区相比,降雨量较小的地区发生山体滑坡的几率较大。这归因于岩石组成对降雨的反应。研究结果有助于人类气候区滑坡风险的认识和管理。OLP已被证明是未来地质统计分析的宝贵资源。
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The Open Landslide Project (OLP), a New Inventory of Shallow Landslides for Susceptibility Models: The Autumn 2019 Extreme Rainfall Event in the Langhe-Monferrato Region (Northwestern Italy)
Landslides triggered by heavy rainfall pose significant threats to human settlements and infrastructure in temperate and equatorial climate regions. This study focuses on the development of the Open Landslide Project (OLP), an open source landslide inventory aimed at facilitating geostatistical analyses and landslide risk management. Using a multidisciplinary approach and open source, multisatellite imagery data, more than 3000 landslides triggered by the extreme rainfall of autumn 2019 in northwestern Italy were systematically mapped. The inventory creation process followed well-defined criteria and underwent rigorous validation to ensure accuracy and reliability. The dataset’s suitability was confirmed through multivariate correlation and Double Pareto probably density function. The OLP inventory effectiveness in assessing landslide risks was proved by the development of a landslide susceptibility model using binary logistic regression. The analysis of rainfall and lithology revealed that regions with lower rainfall levels experienced a higher occurrence of landslides compared to areas with higher peak rainfall. This was attributed to the response of the lithological composition to rainfalls. The findings of this research contribute to the understanding and management of landslide risks in anthropized climate regions. The OLP has proven to be a valuable resource for future geostatistical analysis.
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来源期刊
Geosciences (Switzerland)
Geosciences (Switzerland) Earth and Planetary Sciences-Earth and Planetary Sciences (all)
CiteScore
5.30
自引率
7.40%
发文量
395
审稿时长
11 weeks
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