Application of Certainty Factor and Bayesian statistics models for evaluation of landslides and environmental factors at Bao Thang district and Lao Cai city, Lao Cai province

Minh Quang Nguyen, Phi Quoc Nguyen, Phamchimai Phan, H. Nguyen
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Abstract

The study area is heavily affected by landslides with increasing frequency and intensity, causing serious damages and affecting the sustainable socio-economic development of the region. The use of mathematical methods in landslide research is increasingly interested due to the quantitative nature of parameters and calculation results. This study aims to apply the Certainty Factor (CF) and Bayesian statistics models for geological hazard evaluation. Landslide distribution is identified from remote sensing images and field surveys. Landslide inventory maps (428 landslides) were compiled by reference to historical reports, Google Earth, and field mapping. All landslides were randomly separated into two data sets: 70% were used to establish the models (training data sets) and the rest for validation (validation data sets). Fifteen environmental factors from geology, topography and hydrological information of the studied area were extracted from the spatial database. Results show that the group of factors of slope angle, Terrain Ruggedness Index, fault/lineament density, stratigraphy, geoengineering characteristics, weathering types, and maximum daily rainfall play the most important role in the formation of landslides in the study area. Validation from Certainty Factor (CF) and Bayesian statistics models show 87% and 92% prediction accuracy between hazard maps and existing landslide locations. These models show reasonably accurate landslide predictions in the study area and can be served as the basis of landslide risk-management studies in the future.
确定性因子与贝叶斯统计模型在保塘区及老蔡市滑坡环境因子评价中的应用
研究区受滑坡影响严重,滑坡频率和强度不断增加,造成了严重的破坏,影响了区域社会经济的可持续发展。由于参数和计算结果的定量性质,数学方法在滑坡研究中的应用日益受到关注。本研究旨在将确定性因子(CF)和贝叶斯统计模型应用于地质灾害评价。通过遥感影像和野外调查确定滑坡分布。滑坡清单地图(428个滑坡)是通过参考历史报告、谷歌地球和实地测绘编制的。所有滑坡随机分为两个数据集:70%用于建立模型(训练数据集),其余用于验证(验证数据集)。从空间数据库中提取研究区地质、地形和水文信息中的15个环境因子。结果表明,坡角、地形崎岖指数、断层/线密度、地层、地质工程特征、风化类型和最大日降雨量等因素对研究区滑坡的形成起着重要作用。确定性因子(CF)和贝叶斯统计模型的验证表明,灾害图与现有滑坡位置的预测准确率分别为87%和92%。这些模型对研究区滑坡进行了较为准确的预测,可作为今后滑坡风险管理研究的基础。
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