A Comprehensive Evaluation of Machine Learning Algorithms for Digital Soil Organic Carbon Mapping on a National Scale

被引:0
|
作者
Radocaj, Dorijan [1 ]
Jug, Danijel [1 ]
Jug, Irena [1 ]
Jurisic, Mladen [1 ]
机构
[1] Univ Josip Juraj Strossmayer Osijek, Fac Agrobiotechn Sci Osijek, Vladimira Preloga 1, Osijek 31000, Croatia
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 21期
关键词
random forest; web of science core collection topic search; LUCAS dataset; environmental covariates; digital soil mapping; remote sensing; PREDICTION;
D O I
10.3390/app14219990
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The aim of this study was to narrow the research gap of ambiguity in which machine learning algorithms should be selected for evaluation in digital soil organic carbon (SOC) mapping. This was performed by providing a comprehensive assessment of prediction accuracy for 15 frequently used machine learning algorithms in digital SOC mapping based on studies indexed in the Web of Science Core Collection (WoSCC), providing a basis for algorithm selection in future studies. Two study areas, including mainland France and the Czech Republic, were used in the study based on 2514 and 400 soil samples from the LUCAS 2018 dataset. Random Forest was first ranked for France (mainland) and then ranked for the Czech Republic regarding prediction accuracy; the coefficients of determination were 0.411 and 0.249, respectively, which was in accordance with its dominant appearance in previous studies indexed in the WoSCC. Additionally, the K-Nearest Neighbors and Gradient Boosting Machine regression algorithms indicated, relative to their frequency in studies indexed in the WoSCC, that they are underrated and should be more frequently considered in future digital SOC studies. Future studies should consider study areas not strictly related to human-made administrative borders, as well as more interpretable machine learning and ensemble machine learning approaches.
引用
收藏
页数:15
相关论文
共 50 条
  • [41] Spatial prediction of soil organic carbon stocks in an arid rangeland using machine learning algorithms
    Rostaminia, Mahmood
    Rahmani, Asghar
    Mousavi, Sayed Roholla
    Taghizadeh-Mehrjardi, Rohullah
    Maghsodi, Ziba
    ENVIRONMENTAL MONITORING AND ASSESSMENT, 2021, 193 (12)
  • [42] A comprehensive review of soil organic carbon estimates: Integrating remote sensing and machine learning technologies
    Li, Tong
    Cui, Lizhen
    Kuhnert, Matthias
    Mclaren, Timothy I.
    Pandey, Rajiv
    Liu, Hongdou
    Wang, Weijin
    Xu, Zhihong
    Xia, Anquan
    Dalal, Ram C.
    Dang, Yash P.
    JOURNAL OF SOILS AND SEDIMENTS, 2024, : 3556 - 3571
  • [43] Selecting appropriate machine learning methods for digital soil mapping
    Khaledian, Yones
    Miller, Bradley A.
    APPLIED MATHEMATICAL MODELLING, 2020, 81 (81) : 401 - 418
  • [44] A note on knowledge discovery and machine learning in digital soil mapping
    Wadoux, Alexandre M. J-C
    Samuel-Rosa, Alessandro
    Poggio, Laura
    Mulder, Vera Leatitia
    EUROPEAN JOURNAL OF SOIL SCIENCE, 2020, 71 (02) : 133 - 136
  • [45] Biplots for understanding machine learning predictions in digital soil mapping
    van der Westhuizen, Stephan
    Heuvelink, Gerard B. M.
    Gardner-Lubbe, Sugnet
    Clarke, Catherine E.
    ECOLOGICAL INFORMATICS, 2024, 84
  • [46] Mapping surface soil organic carbon density of cultivated land using machine learning in Zhengzhou
    Guo, Hengliang
    Wang, Jinyang
    Zhang, Dujuan
    Cui, Jian
    Yuan, Yonghao
    Bao, Haoming
    Yang, Mengjiao
    Guo, Jiahui
    Chen, Feng
    Zhou, Wenge
    Wu, Gang
    Guo, Yang
    Wei, Haitao
    Qiao, Baojin
    Zhao, Shan
    ENVIRONMENTAL GEOCHEMISTRY AND HEALTH, 2025, 47 (01)
  • [47] Space-time mapping of soil organic carbon through remote sensing and machine learning
    Bartsch, Bruno dos Anjos
    Rosin, Nicolas Augusto
    Rosas, Jorge Tadeu Fim
    Poppiel, Raul Roberto
    Makino, Fernando Yutaro
    Vogel, Leticia Guadagnin
    Novais, Jean Jesus Macedo
    Falcioni, Renan
    Alves, Marcelo Rodrigo
    Dematte, Jose A. M.
    SOIL & TILLAGE RESEARCH, 2025, 248
  • [48] High-resolution digital mapping of soil organic carbon and soil total nitrogen using DEM derivatives, Sentinel-1 and Sentinel-2 data based on machine learning algorithms
    Zhou, Tao
    Geng, Yajun
    Chen, Jie
    Pan, Jianjun
    Haase, Dagmar
    Lausch, Angela
    SCIENCE OF THE TOTAL ENVIRONMENT, 2020, 729
  • [49] Assessing Machine Learning-Based Prediction under Different Agricultural Practices for Digital Mapping of Soil Organic Carbon and Available Phosphorus
    Kaya, Fuat
    Keshavarzi, Ali
    Francaviglia, Rosa
    Kaplan, Gordana
    Basayigit, Levent
    Dedeoglu, Mert
    AGRICULTURE-BASEL, 2022, 12 (07):
  • [50] Digital mapping of soil organic and inorganic carbon status in India
    Sreenivas, Kandrika
    Dadhwal, V. K.
    Kumar, Suresh
    Harsha, G. Sri
    Mitran, Tarik
    Sujatha, G.
    Suresh, G. Janaki Rama
    Fyzee, M. A.
    Ravisankar, T.
    GEODERMA, 2016, 269 : 160 - 173