通过饱和监测和预测分析推进滑坡预警系统

Prashant Sudani, K.A. Patil
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引用次数: 0

摘要

山体滑坡最常发生在雨季,给基础设施和人类生命造成严重破坏。针对此类灾害的早期预测框架有助于减轻损失。为此,本研究开发了浅层滑坡引发预测框架,并通过实际案例研究进行了验证。为了测试预测框架的可靠性,我们对研究区域马哈拉施特拉邦马林村最近于 2014 年 7 月发生的一次滑坡进行了回溯分析。利用 Geo-Studio 分析模块,通过物理方法建立了滑坡稳定性与水饱和度的关系。针对研究地点开发了漏桶算法,以监测降雨对水饱和度的影响。滑坡稳定性的模拟结果与基于漏斗的降雨-水饱和度算法进行了比较。结果证实,通过所提出的框架,滑坡的发生具有良好的可预测性。本文提出的预测浅层滑坡发生的程序建议用于滑坡易发地点的实时监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing landslide early warning systems through saturation monitoring and predictive analysis
The landslide occurrence is most common in the rainy season, costing deep damage to the infrastructure and human lives. An early prediction framework for such a disaster can help to mitigate damages. For this reason, in this work, a prediction framework for shallow landslide initiation is developed and validated with a real case study. In order to test the reliability of the prediction framework, a back analysis of a recent landslide accrued in the study area, Malin village of Maharashtra, on July 2014 was performed. Relations of landslide stability with the water saturation were established through a physically based approach using the Geo-Studio analysis module. A leaky barrel algorithm was developed for the study locations to monitor rainfall's effect on water saturation. Simulation results of landslide stability were compared with the leaky barrel-based rainfall-water saturation algorithm. The result confirms the good predictability of landslide occurrence through a presented framework. The procedure presented in this paper for predicting shallow landslide occurrence is recommended for real-time monitoring of landslide-prone locations.
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