Forecasting Blue and Green Water Footprint of Wheat Based on Single, Hybrid, and Stacking Ensemble Machine Learning Algorithms Under Diverse Agro-Climatic Conditions in Nile Delta, Egypt

被引:0
|
作者
Lotfy, Ashrakat A. [1 ,2 ]
Abuarab, Mohamed E. [1 ]
Farag, Eslam [3 ]
Derardja, Bilal [2 ]
Khadra, Roula [2 ]
Abdelmoneim, Ahmed A. [2 ]
Mokhtar, Ali [1 ]
机构
[1] Cairo Univ, Fac Agr, Dept Agr Engn, Giza 12613, Egypt
[2] Mediterranean Agron Inst Bari, I-70010 Bari, Italy
[3] Natl Author Remote Sensing & Space Sci, Agr Applicat Dept, Cairo, Egypt
关键词
wheat BWFP and GWFP; climatic parameters; remote sensing indices; machine learning models; single and hybrid models; stacking ensemble; MODEL; VALIDATION; SELECTION; BORUTA;
D O I
10.3390/rs16224224
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The aim of this research is to develop and compare single, hybrid, and stacking ensemble machine learning models under spatial and temporal climate variations in the Nile Delta regarding the estimation of the blue and green water footprint (BWFP and GWFP) for wheat. Thus, four single machine learning models (XGB, RF, LASSO, and CatBoost) and eight hybrid machine learning models (XGB-RF, XGB-LASSO, XGB-CatBoost, RF-LASSO, CatBoost-LASSO, CatBoost-RF, XGB-RF-LASSO, and XGB-CatBoost-LASSO) were used, along with stacking ensembles, with five scenarios including climate and crop parameters and remote sensing-based indices. The highest R2 value for predicting wheat BWFP was achieved with XGB-LASSO under scenario 4 at 100%, while the minimum was 0.16 with LASSO under scenario 3 (remote sensing indices). To predict wheat GWFP, the highest R2 value of 100% was achieved with RF-LASSO across scenario 1 (all parameters), scenario 2 (climate parameters), scenario 4 (Peeff, Tmax, Tmin, and SA), and scenario 5 (Peeff and Tmax). The lowest value was recorded with LASSO and scenario 3. The use of individual and hybrid machine learning models showed high efficiency in predicting the blue and green water footprint of wheat, with high ratings according to statistical performance standards. However, the hybrid programs, whether binary or triple, outperformed both the single models and stacking ensemble.
引用
收藏
页数:38
相关论文
共 3 条
  • [1] Modelling daily reference evapotranspiration based on stacking hybridization of ANN with meta-heuristic algorithms under diverse agro-climatic conditions
    Elbeltagi, Ahmed
    Kushwaha, Nand Lal
    Rajput, Jitendra
    Vishwakarma, Dinesh Kumar
    Kulimushi, Luc Cimusa
    Kumar, Manish
    Zhang, Jingwen
    Pande, Chaitanya B.
    Choudhari, Pandurang
    Meshram, Sarita Gajbhiye
    Pandey, Kusum
    Sihag, Parveen
    Kumar, Navsal
    Abd-Elaty, Ismail
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2022, 36 (10) : 3311 - 3334
  • [2] Modelling daily reference evapotranspiration based on stacking hybridization of ANN with meta-heuristic algorithms under diverse agro-climatic conditions
    Ahmed Elbeltagi
    Nand Lal Kushwaha
    Jitendra Rajput
    Dinesh Kumar Vishwakarma
    Luc Cimusa Kulimushi
    Manish Kumar
    Jingwen Zhang
    Chaitanya B. Pande
    Pandurang Choudhari
    Sarita Gajbhiye Meshram
    Kusum Pandey
    Parveen Sihag
    Navsal Kumar
    Ismail Abd-Elaty
    Stochastic Environmental Research and Risk Assessment, 2022, 36 : 3311 - 3334
  • [3] Predicting Green Water Footprint of Sugarcane Crop Using Multi-Source Data-Based and Hybrid Machine Learning Algorithms in White Nile State, Sudan
    Al-Taher, Rogaia H.
    Abuarab, Mohamed E.
    Ahmed, Abd Al-Rahman S.
    Hamed, Mohammed Magdy
    Salem, Ali
    Helalia, Sara Awad
    Hammad, Elbashir A.
    Mokhtar, Ali
    WATER, 2024, 16 (22)