预测奥克兰Muriwai地区降雨引发的山体滑坡:一种增强风险管理的综合多模型方法

Yousef Adeeb Chamachaei
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引用次数: 0

摘要

滑坡研究对于理解和减轻与这些地质灾害相关的风险具有重要意义。特别是在像新西兰这样的地区,不同的地形和气候条件导致了山体滑坡的频繁发生,这类研究至关重要。这项研究的重点是奥克兰的Muriwai,这是一个经历了大量由降雨引发的滑坡活动的地区。本研究采用多模型方法,结合经验模型和过程模型对降雨诱发滑坡进行预测。这种方法利用了各个模型的优势,包括逻辑回归、随机森林、支持向量机、人工神经网络和决策树,从而提高了预测的鲁棒性和准确性。一个综合数据集,包括历史滑坡记录、气候数据、地形和地质数据,用于训练和验证这些模型。数据在统一的地理信息系统(GIS)数据库中进行空间对齐,确保分析的一致性和准确性。多模型集成提供了滑坡发生的概率预测,并将其可视化为滑坡易感性图。这张地图是了解穆里瓦伊滑坡风险空间分布的宝贵工具。每个模型和集成的性能使用几个指标进行评估,以确保预测的可靠性。对结果进行解释,以了解不同因素,特别是气候参数对滑坡发生的影响。本研究的发现有助于奥克兰Muriwai有效的滑坡风险管理和缓解策略,并为其他地区的类似研究提供宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Rainfall-Induced Landslides in Muriwai, Auckland: A Comprehensive Multi-Model Approach for Enhanced Risk Management
Landslide studies hold significant importance in understanding and mitigating the risks associated with these geohazards. Particularly in regions like New Zealand, where diverse topography and climatic conditions contribute to frequent landslide occurrences, such studies are crucial. This research focuses on Muriwai, Auckland, a region that has experienced substantial landslide activity triggered by rainfall. The study adopts a multi-model approach, integrating both empirical and process-based models to predict rainfall-induced landslides. This approach leverages the strengths of individual models, including logistic regression, random forest, support vector machines, artificial neural networks, and decision trees, thereby enhancing the robustness and accuracy of predictions. A comprehensive dataset, comprising historical landslide records, climatic data, and terrain and geological data, is used to train and validate these models. The data is spatially aligned within a unified Geographic Information System (GIS) database, ensuring consistency and accuracy in the analysis. The multi-model ensemble provides a probabilistic prediction of landslide occurrence, which is visualized as a landslide susceptibility map. This map serves as a valuable tool for understanding the spatial distribution of landslide risks in Muriwai. The performance of each model and the ensemble is evaluated using several metrics, ensuring the reliability of the predictions. The results are interpreted to understand the influence of different factors, particularly climatic parameters, on landslide occurrences. This study's findings contribute to effective landslide risk management and mitigation strategies in Muriwai, Auckland, and provide valuable insights for similar studies in other regions.
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