A Random Forest Machine Learning Approach for the Identification and Quantification of Erosive Events

被引:9
作者
Vergni, Lorenzo [1 ]
Todisco, Francesca [1 ]
机构
[1] Univ Perugia, Dept Agr Food & Environm Sci, I-06124 Perugia, Italy
关键词
soil water erosion; USLE models; plot scale; artificial intelligence; data-driven approach; SERLAB experimental site; PLOT SOIL LOSS; USLE-MM; NEURAL-NETWORKS; RUNOFF; PREDICTION; SINGLE;
D O I
10.3390/w15122225
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Predicting the occurrence of erosive rain events and quantifying the corresponding soil loss is extremely useful in all applications where assessing phenomenon impacts is required. These problems, addressed in the literature at different spatial and temporal scales and according to the most diverse approaches, are here addressed by implementing random forest (RF) machine learning models. For this purpose, we used the datasets built through many years of soil loss observations at the plot-scale experimental site SERLAB (central Italy). Based on 32 features describing rainfall characteristics, the RF classifier has achieved a global accuracy of 84.8% in recognizing erosive and non-erosive events, thus demonstrating slightly higher performances than previously used (non-machine learning) methodologies. A critical performance is the percentage of erosive events correctly recognized to the observed total (72.3%). However, since the most relevant erosive events are correctly identified, we found only a slight underestimation of the total rainfall erosivity (91%). The RF regression model for estimating the event soil loss, based on three event features (runoff coefficient, erosivity, and period of occurrence), demonstrates better performances (RMSE = 2.30 Mg ha(-1)) than traditional regression models (RMSE = 3.34 Mg ha(-1)).
引用
收藏
页数:13
相关论文
共 50 条
[21]   Artificial neural networks of soil erosion and runoff prediction at the plot scale [J].
Licznar, P ;
Nearing, MA .
CATENA, 2003, 51 (02) :89-114
[22]  
Morgan RPC, 2005, Soil Erosion and Conservation, V3rd, P320
[23]   Review of Artificial Intelligence and Machine Learning Technologies: Classification, Restrictions, Opportunities and Challenges [J].
Mukhamediev, Ravil, I ;
Popova, Yelena ;
Kuchin, Yan ;
Zaitseva, Elena ;
Kalimoldayev, Almas ;
Symagulov, Adilkhan ;
Levashenko, Vitaly ;
Abdoldina, Farida ;
Gopejenko, Viktors ;
Yakunin, Kirill ;
Muhamedijeva, Elena ;
Yelis, Marina .
MATHEMATICS, 2022, 10 (15)
[24]   A single, continuous function for slope steepness influence on soil loss [J].
Nearing, MA .
SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 1997, 61 (03) :917-919
[25]   Prediction of Severe Drought Area Based on Random Forest: Using Satellite Image and Topography Data [J].
Park, Haekyung ;
Kim, Kyungmin ;
Lee, Dong Kun .
WATER, 2019, 11 (04)
[26]   Soil erosion: A food and environmental threat [J].
Pimentel D. .
Environment, Development and Sustainability, 2006, 8 (1) :119-137
[27]  
Renard K.G., 1997, US DEP AGR AGR HDB N
[28]   ERROR ASSESSMENT IN THE UNIVERSAL SOIL LOSS EQUATION [J].
RISSE, LM ;
NEARING, MA ;
NICKS, AD ;
LAFLEN, JM .
SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 1993, 57 (03) :825-833
[29]   Evaluating the performance of random forest for large-scale flood discharge simulation [J].
Schoppa, Lukas ;
Disse, Markus ;
Bachmair, Sophie .
JOURNAL OF HYDROLOGY, 2020, 590
[30]   The use of Kohonen neural networks for runoff-erosion modeling [J].
Simoes de Farias, Camilo Allyson ;
Guimaraes Santos, Celso Augusto .
JOURNAL OF SOILS AND SEDIMENTS, 2014, 14 (07) :1242-1250