Modelling rainfall-induced landslides at a regional scale, a machine learning based approach

被引:0
作者
Stefania Magrì
Monica Solimano
Fabio Delogu
Tania Del Giudice
Mauro Quagliati
Michele Cicoria
Francesco Silvestro
机构
[1] Regional Agency for the Environmental Protection of Liguria (ARPAL),
[2] CIMA Foundation,undefined
[3] Regional Agency for the Environmental Protection of Lombardia (ARPALombardia),undefined
来源
Landslides | 2024年 / 21卷
关键词
Shallow landslides; Early warning system; Regression curve; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
In Italy, rainfall represents the most common triggering factor for landslides; thus, many Italian Regional Departments of Civil Protection are setting up warning systems based on rainfall recordings. Common methods are mainly based on empirical relationships that provide the rainfall thresholds above which the occurrence of landslide phenomena is likely to be expected. In recent years, the use of machine learning approaches has gained popularity in landslide susceptibility analysis and prediction. To support the operational early warning system of Liguria Civil Protection Department for landslides hazard, we propose the implementation of a polynomial Kernel regularized least squares regression (KRLS) algorithm, for predicting the daily occurrence of shallow landslides in the five Alert Zones in Liguria (North Western Italy). The model provides an estimate of the number of landslides associated with the set of three different hydrological features, also used for the Hydrological Assessment procedure: the soil moisture, the accumulated precipitation over 12 h and the precipitation peak over 3 h. Results of the model are converted to an Alert Scenario of landslide occurrence, based on the magnitude of the expected event and identified according to the National and Regional legislation (Regional Civil Protection guidelines D.G.R. n. 1116, 23/12/2020). The performance of the predictive model (e.g. accuracy of 93%) is deemed satisfactory and the methodology is considered a valuable support to the operational early warning system of Liguria Civil Protection Department. The choice of predictive variables allows, in future development, the values obtained from historical data to be replaced by those obtained from meteorological forecast models, introducing the use of the developed model in the operational forecasting chain.
引用
收藏
页码:573 / 582
页数:9
相关论文
共 151 条
[1]  
Aleotti P(2004)A warning system for rainfall-induced shallow failures Eng Geol 73 247-265
[2]  
Anderson MJ(2001)Permutation tests for linear models  Aust N Z J Stat 43 75-88
[3]  
Robinson J(2010)Rainfall thresholds for the possible occurrence of landslides in Italy Nat Hazards Earth Syst Sci 10 447-458
[4]  
Brunetti MT(2021)Performing hydrological monitoring at a national scale by exploiting rain-gauge and radar networks: the Italian case Atmosphere 12 771-260
[5]  
Peruccacci S(2006)Rainfall induced landslides in December 2004 in Southwestern Umbria, Central Italy Nat Hazards Earth Syst Sci 6 237-219
[6]  
Rossi M(2015)Storminess and geo-hydrological events affecting small coastal basins in a terraced Mediterranean environment Sci Total Environ 532 208-145
[7]  
Luciani S(1998)Regionalization of rainfall thresholds: an aid to landslide hazard evaluation Environ Geol 35 131-2680
[8]  
Valigi D(2017)Impact of rainfall assimilation on high-resolution hydro-meteorological forecasts over Liguria (Italy) J Hydrometeor 18 2659-1327
[9]  
Guzzetti F(2008)General calibration methodology for a combined Horton-SCS infiltration scheme in flash flood modeling Nat Hazards Earth Syst Sci 8 1317-665
[10]  
Bruno G(2015)Calibration and validation of rainfall thresholds for shallow landslide forecasting in Sicily, southern Italy Geomorphology 228 653-107