Mapping wind erosion hazard with regression-based machine learning algorithms

被引:0
|
作者
Hamid Gholami
Aliakbar Mohammadifar
Dieu Tien Bui
Adrian L. Collins
机构
[1] University of Hormozgan,Department of Natural Resources Engineering
[2] Duy Tan University,Institute of Research and Development
[3] University of South-Eastern Norway,GIS Group, Department of Business and IT
[4] Sustainable Agriculture Sciences,undefined
[5] Rothamsted/Research,undefined
[6] North Wyke,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Land susceptibility to wind erosion hazard in Isfahan province, Iran, was mapped by testing 16 advanced regression-based machine learning methods: Robust linear regression (RLR), Cforest, Non-convex penalized quantile regression (NCPQR), Neural network with feature extraction (NNFE), Monotone multi-layer perception neural network (MMLPNN), Ridge regression (RR), Boosting generalized linear model (BGLM), Negative binomial generalized linear model (NBGLM), Boosting generalized additive model (BGAM), Spline generalized additive model (SGAM), Spike and slab regression (SSR), Stochastic gradient boosting (SGB), support vector machine (SVM), Relevance vector machine (RVM) and the Cubist and Adaptive network-based fuzzy inference system (ANFIS). Thirteen factors controlling wind erosion were mapped, and multicollinearity among these factors was quantified using the tolerance coefficient (TC) and variance inflation factor (VIF). Model performance was assessed by RMSE, MAE, MBE, and a Taylor diagram using both training and validation datasets. The result showed that five models (MMLPNN, SGAM, Cforest, BGAM and SGB) are capable of delivering a high prediction accuracy for land susceptibility to wind erosion hazard. DEM, precipitation, and vegetation (NDVI) are the most critical factors controlling wind erosion in the study area. Overall, regression-based machine learning models are efficient techniques for mapping land susceptibility to wind erosion hazards.
引用
收藏
相关论文
共 50 条
  • [41] Regression-based classification methods and their comparison with decision tree algorithms
    Kiselev, MV
    Ananyan, SM
    Arseniev, SB
    PRINCIPLES OF DATA MINING AND KNOWLEDGE DISCOVERY, 1997, 1263 : 134 - 144
  • [42] Regression-based algorithms for life insurance contracts with surrender guarantees
    Bacinello, Anna Rita
    Biffis, Enrico
    Millossovich, Pietro
    QUANTITATIVE FINANCE, 2010, 10 (09) : 1077 - 1090
  • [43] Performance analysis of regression-based machine learning models towards intelligent selection of MIMO configurations
    Beeharry, Yogesh
    Calchand, Dujaya R.
    CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2023, 35 (01):
  • [44] FAIREDU: A multiple regression-based method for enhancing fairness in machine learning models for educational applications
    Pham, Nga
    Do, Minh Kha
    Dai, Tran Vu
    Hung, Pham Ngoc
    Nguyen-Duc, Anh
    EXPERT SYSTEMS WITH APPLICATIONS, 2025, 269
  • [45] Multi-Analyte Concentration Analysis of Marine Samples through Regression-Based Machine Learning
    North, Nicole M.
    Clark, Jessica B.
    Enders, Abigail A. A.
    Grooms, Alex J.
    Wairegi, Salmika G.
    Duah, Kezia A.
    Palassis-Naziri, Efthimia I.
    Badu-Tawiah, Abraham
    Allen, Heather C.
    ACS EARTH AND SPACE CHEMISTRY, 2024, 8 (08): : 1549 - 1559
  • [46] Regression-based machine learning approaches for estimating discharge from water levels in microtidal rivers
    Mihel, Anna Maria
    Krvavica, Nino
    Lerga, Jonatan
    JOURNAL OF HYDROLOGY, 2025, 646
  • [47] Short-term water demand prediction using stacking regression-based machine learning
    Hussain, K. Mohamed
    Sivakumaran, N.
    Radhakrishnan, T. K.
    Swaminathan, G.
    Sankaranarayanan, S.
    WATER PRACTICE AND TECHNOLOGY, 2024, : 4773 - 4796
  • [48] Performance Evaluation of Regression-Based Machine Learning Models for Modeling Reference Evapotranspiration with Temperature Data
    Diamantopoulou, Maria J.
    Papamichail, Dimitris M.
    HYDROLOGY, 2024, 11 (07)
  • [49] Assessment of machine learning algorithms and new hybrid multi-criteria analysis for flood hazard and mapping
    Solaimani K.
    Darvishi S.
    Shokrian F.
    Environmental Science and Pollution Research, 2024, 31 (22) : 32950 - 32971
  • [50] Regression-Based Hyperparameter Learning for Support Vector Machines
    Peng, Shili
    Wang, Wenwu
    Chen, Yinli
    Zhong, Xueling
    Hu, Qinghua
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2023, 35 (12) : 18799 - 18813