Comparison of statistical methods and multi-time validation for the determination of the shallow landslide rainfall thresholds

被引:0
作者
Yuri Galanti
Michele Barsanti
Andrea Cevasco
Giacomo D’Amato Avanzi
Roberto Giannecchini
机构
[1] University of Pisa,Department of Earth Sciences
[2] University of Pisa,Department of Civil and Industrial Engineering
[3] University of Genova,Department of Earth, Environment and Life Sciences
来源
Landslides | 2018年 / 15卷
关键词
Rainfall threshold; Shallow landslide; Regression analysis; Skill score; Multi-time validation; Liguria;
D O I
暂无
中图分类号
学科分类号
摘要
Shallow landslides are unforeseeable phenomena often resulting in critical conditions in terms of people’s safety and damage. The main purpose of this paper is the comparison of different statistical methods used to determine the rainfall thresholds for the shallow landslide occurrence. Rainfall data over a 46-year period were collected for one rain gauge located in a test area of northwest Italy (Riviera Spezzina; RS). In the RS, intense rainfalls often induce shallow landslides causing damage and sometimes casualties. The rainfall events occurred in the 1967–2006 period were classified as events inducing shallow landslides (SLEs1967–2006) and events that did not trigger shallow landslides (NSLEs1967–2006). Thresholds for various percentiles of SLEs1967–2006 were computed by identifying the lower limit above which shallow landslides occurred. Another set of thresholds, corresponding to different probabilities of occurrence, was determined using SLEs1967–2006 and NSLEs1967–2006. The least-squares linear fit (LSF) and the quantile regression (QR) techniques were employed in the former approach, while the logistic regression (LR) was applied in the latter. The thresholds were validated with the same data used for their definition and with the data recorded in the 2008–2014 period. Contingency tables were created and contingencies and skill scores were computed. The 10% probability threshold obtained using the LR method is characterized by the best values of at least two skill scores for both periods considered; therefore, it may be considered the “best” threshold for the RS. The results of this work can help the choice of the best statistical method to determine the shallow landslide rainfall thresholds.
引用
收藏
页码:937 / 952
页数:15
相关论文
共 279 条
  • [1] Aleotti P(2004)A warning system for rainfall-induced shallow failures Eng Geol 73 247-265
  • [2] Alvarez W(1974)Fragmentation of the Alpine orogenic belt by microplate dispersal Nature 248 309-314
  • [3] Cocozza T(2011)Alluvioni in Liguria, i fattori meteo e gli effetti Ecoscienza 5 6-9
  • [4] Wezel FC(2015)Assessing shallow landslide susceptibility by using the SHALSTAB model in Eastern Liguria (Italy) Rend Online Soc Geol Ital 35 17-20
  • [5] Bartelletti C(2017)The influence of geological–morphological and land use settings on shallow landslides in the Pogliaschina T. basin (northern Apennines, Italy) J Maps 13 142-152
  • [6] D’Amato Avanzi G(2010)Early warning of rainfall-induced shallow landslides and debris flows in the USA Landslides 7 259-272
  • [7] Galanti Y(2015)Hydrological factors affecting rainfall-induced shallow landslides: from the field monitoring to a simplified slope stability analysis Eng Geol 193 19-37
  • [8] Giannecchini R(2015)Developing and testing a data-driven methodology for shallow landslide susceptibility assessment: preliminary results Rend Online Soc Geol Ital 35 25-28
  • [9] Mazzali A(2010)Rainfall thresholds for the possible occurrence of landslides in Italy Nat Hazards Earth Syst Sci 10 447-458
  • [10] Bartelletti C(2015)Catalogue of rainfall events with shallow landslides and new rainfall thresholds in Italy Eng Geol Soc Territ 2 1575-1579