Dal Seno Nicola, Evangelista D., Piccolomini E., Berti M.
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The effectiveness of ML methods is compared against conventional empirical-statistical approaches, evaluating factors such as prediction accuracy, model complexity, and the interpretability of results for use by regional landslide warning system operators. The findings indicate that machine learning techniques have an edge over traditional methods, yielding higher performance scores and fewer false positives. Nevertheless, these advancements are modest when considering the increased complexity of ML methods and the incorporation of additional rainfall parameters. This underlines the continued need for improvements in data quality and volume. The study stresses the importance of enhancing data collection and analysis techniques, especially in an era where advanced AI tools are increasingly available, to improve the accuracy of predicting rainfall thresholds for effective landslide warning systems.</p>","PeriodicalId":17938,"journal":{"name":"Landslides","volume":"19 1","pages":""},"PeriodicalIF":5.8000,"publicationDate":"2024-08-20","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Comparative analysis of conventional and machine learning techniques for rainfall threshold evaluation under complex geological conditions\",\"authors\":\"Dal Seno Nicola, Evangelista D., Piccolomini E., Berti M.\",\"doi\":\"10.1007/s10346-024-02336-3\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>This research focuses on the essential task of defining rainfall thresholds in regions with complex geological features, specifically at a regional scale. 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引用次数: 0
摘要
这项研究的重点是在具有复杂地质特征的地区,特别是在区域范围内,确定降雨阈值的基本任务。它研究了各种方法,从传统的经验统计方法到前沿的机器学习(ML)技术,以确定这些阈值。意大利艾米利亚-罗马涅大区以其错综复杂的地质结构和普遍存在的软弱岩石而闻名,这些软弱岩石经常导致大规模和深层次的山体滑坡。该地区降雨量和滑坡发生率之间的相互作用十分复杂,这对准确确定降雨量阈值构成了巨大挑战。我们将机器学习方法的有效性与传统的经验-统计方法进行了比较,评估了预测准确性、模型复杂性以及区域滑坡预警系统操作员使用结果的可解释性等因素。研究结果表明,机器学习技术比传统方法更具优势,能获得更高的性能分数,误报率也更低。然而,考虑到 ML 方法的复杂性增加以及纳入了更多降雨参数,这些进步并不明显。这凸显了提高数据质量和数据量的持续必要性。这项研究强调了加强数据收集和分析技术的重要性,特别是在先进的人工智能工具越来越多的时代,以提高预测降雨阈值的准确性,从而建立有效的滑坡预警系统。
Comparative analysis of conventional and machine learning techniques for rainfall threshold evaluation under complex geological conditions
This research focuses on the essential task of defining rainfall thresholds in regions with complex geological features, specifically at a regional scale. It examines a variety of methodologies, from traditional empirical-statistical methods to cutting-edge machine learning (ML) techniques, for establishing these thresholds. The Emilia-Romagna region in Italy, known for its intricate geological structure and prevalence of weak rocks that often lead to large and deep-seated landslides, serves as the study area. The region’s complex interplay between rainfall and landslide incidences poses a significant challenge in accurately determining rainfall thresholds. The effectiveness of ML methods is compared against conventional empirical-statistical approaches, evaluating factors such as prediction accuracy, model complexity, and the interpretability of results for use by regional landslide warning system operators. The findings indicate that machine learning techniques have an edge over traditional methods, yielding higher performance scores and fewer false positives. Nevertheless, these advancements are modest when considering the increased complexity of ML methods and the incorporation of additional rainfall parameters. This underlines the continued need for improvements in data quality and volume. The study stresses the importance of enhancing data collection and analysis techniques, especially in an era where advanced AI tools are increasingly available, to improve the accuracy of predicting rainfall thresholds for effective landslide warning systems.
期刊介绍:
Landslides are gravitational mass movements of rock, debris or earth. They may occur in conjunction with other major natural disasters such as floods, earthquakes and volcanic eruptions. Expanding urbanization and changing land-use practices have increased the incidence of landslide disasters. Landslides as catastrophic events include human injury, loss of life and economic devastation and are studied as part of the fields of earth, water and engineering sciences. The aim of the journal Landslides is to be the common platform for the publication of integrated research on landslide processes, hazards, risk analysis, mitigation, and the protection of our cultural heritage and the environment. The journal publishes research papers, news of recent landslide events and information on the activities of the International Consortium on Landslides.
- Landslide dynamics, mechanisms and processes
- Landslide risk evaluation: hazard assessment, hazard mapping, and vulnerability assessment
- Geological, Geotechnical, Hydrological and Geophysical modeling
- Effects of meteorological, hydrological and global climatic change factors
- Monitoring including remote sensing and other non-invasive systems
- New technology, expert and intelligent systems
- Application of GIS techniques
- Rock slides, rock falls, debris flows, earth flows, and lateral spreads
- Large-scale landslides, lahars and pyroclastic flows in volcanic zones
- Marine and reservoir related landslides
- Landslide related tsunamis and seiches
- Landslide disasters in urban areas and along critical infrastructure
- Landslides and natural resources
- Land development and land-use practices
- Landslide remedial measures / prevention works
- Temporal and spatial prediction of landslides
- Early warning and evacuation
- Global landslide database