Predicting and Mapping of Soil Organic Carbon Using Machine Learning Algorithms in Northern Iran

被引:156
|
作者
Emadi, Mostafa [1 ]
Taghizadeh-Mehrjardi, Ruhollah [2 ,3 ]
Cherati, Ali [4 ]
Danesh, Majid [1 ]
Mosavi, Amir [5 ,6 ,7 ]
Scholten, Thomas [2 ,8 ,9 ]
机构
[1] Sari Agr Sci & Nat Resources Univ, Coll Crop Sci, Dept Soil Sci, Sari 4818168984, Iran
[2] Univ Tubingen, Dept Geosci Soil Sci & Geomorphol, D-72070 Tubingen, Germany
[3] Ardakan Univ, Fac Agr & Nat Resources, Ardakan 8951656767, Iran
[4] AREEO, Mazandaran Agr & Nat Resources Res & Educ Ctr, Soil & Water Res Dept, Sari 4849155356, Iran
[5] Tech Univ Dresden, Fac Civil Engn, D-01069 Dresden, Germany
[6] Duy Tan Univ, Inst Res & Dev, Da Nang 550000, Vietnam
[7] J Selye Univ, Dept Informat, Komarno 94501, Slovakia
[8] Univ Tubingen, CRC 1070, Ressource Cultures, D-72070 Tubingen, Germany
[9] Univ Tubingen, DFG Cluster Excellence Machine Learning, D-72070 Tubingen, Germany
关键词
soil organic carbon; carbon sequestration; machine learning; deep neural networks; susceptibility; big data; mapping; soil informatics; geochemistry; remote sensing; deep learning; data science; system science; ARTIFICIAL NEURAL-NETWORK; SPATIAL PREDICTION; SEMIARID RANGELANDS; GENETIC ALGORITHM; REGRESSION TREE; RANDOM FORESTS; MATTER CONTENT; GRADIENT; MODELS; STOCKS;
D O I
10.3390/rs12142234
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Estimation of the soil organic carbon (SOC) content is of utmost importance in understanding the chemical, physical, and biological functions of the soil. This study proposes machine learning algorithms of support vector machines (SVM), artificial neural networks (ANN), regression tree, random forest (RF), extreme gradient boosting (XGBoost), and conventional deep neural network (DNN) for advancing prediction models of SOC. Models are trained with 1879 composite surface soil samples, and 105 auxiliary data as predictors. The genetic algorithm is used as a feature selection approach to identify effective variables. The results indicate that precipitation is the most important predictor driving 14.9% of SOC spatial variability followed by the normalized difference vegetation index (12.5%), day temperature index of moderate resolution imaging spectroradiometer (10.6%), multiresolution valley bottom flatness (8.7%) and land use (8.2%), respectively. Based on 10-fold cross-validation, the DNN model reported as a superior algorithm with the lowest prediction error and uncertainty. In terms of accuracy, DNN yielded a mean absolute error of 0.59%, a root mean squared error of 0.75%, a coefficient of determination of 0.65, and Lin's concordance correlation coefficient of 0.83. The SOC content was the highest in udic soil moisture regime class with mean values of 3.71%, followed by the aquic (2.45%) and xeric (2.10%) classes, respectively. Soils in dense forestlands had the highest SOC contents, whereas soils of younger geological age and alluvial fans had lower SOC. The proposed DNN (hidden layers = 7, and size = 50) is a promising algorithm for handling large numbers of auxiliary data at a province-scale, and due to its flexible structure and the ability to extract more information from the auxiliary data surrounding the sampled observations, it had high accuracy for the prediction of the SOC base-line map and minimal uncertainty.
引用
收藏
页数:29
相关论文
共 50 条
  • [31] GEOLOGICAL MAPPING USING MACHINE LEARNING ALGORITHMS
    Harvey, A. S.
    Fotopoulos, G.
    XXIII ISPRS CONGRESS, COMMISSION VIII, 2016, 41 (B8): : 423 - 430
  • [32] A new approach in soil organic carbon estimation using machine learning algorithms: a study in a tropical forest in Vietnam
    Nguyen, Thuy Phuong
    Nguyen, Phuc Khoa
    Nguyen, Huu Ngu
    Tran, Thanh Duc
    Pham, Gia Tung
    Le, Thai Hung
    Le, Dinh Huy
    Nguyen, Trung Hai
    JOURNAL OF FOREST RESEARCH, 2025, 30 (02) : 79 - 88
  • [33] Digital Soil Mapping of Soil Organic Matter with Deep Learning Algorithms
    Zeng, Pengyuan
    Song, Xuan
    Yang, Huan
    Wei, Ning
    Du, Liping
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2022, 11 (05)
  • [34] Predicting and Mapping of Soil Organic Matter with Machine Learning in the Black Soil Region of the Southern Northeast Plain of China
    Li, Yiyang
    Yao, Gang
    Li, Shuangyi
    Dong, Xiuru
    AGRONOMY-BASEL, 2025, 15 (03):
  • [35] Mapping of soil organic carbon using machine learning models: Combination of optical and radar remote sensing data
    Zhou, Yang
    Zhao, Xiaomin
    Guo, Xi
    Li, Yi
    SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 2022, 86 (02) : 293 - 310
  • [36] Geospatial digital mapping of soil organic carbon using machine learning and geostatistical methods in different land uses
    Parvizi, Yahya
    Fatehi, Shahrokh
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [37] Improving soil organic carbon mapping in farmlands using machine learning models and complex cropping system information
    Ou, Jianxiong
    Wu, Zihao
    Yan, Qingwu
    Feng, Xiangyang
    Zhao, Zilong
    ENVIRONMENTAL SCIENCES EUROPE, 2024, 36 (01)
  • [38] Digital mapping of soil carbon fractions with machine learning
    Keskin, Hamza
    Grunwald, Sabine
    Harris, Willie G.
    GEODERMA, 2019, 339 (40-58) : 40 - 58
  • [39] Improving soil organic carbon mapping with a field-specific calibration approach through diffuse reflectance spectroscopy and machine learning algorithms
    Camargo, Livia Arantes
    do Amaral, Lucas Rios
    dos Reis, Aliny Aparecida
    Brasco, Thiago Luis
    Graziano Magalhaes, Paulo Sergio
    SOIL USE AND MANAGEMENT, 2022, 38 (01) : 292 - 303
  • [40] Predicting carbon dioxide emissions in the United States of America using machine learning algorithms
    Chukwunonso B.P.
    AL-Wesabi I.
    Shixiang L.
    AlSharabi K.
    Al-Shamma’a A.A.
    Farh H.M.H.
    Saeed F.
    Kandil T.
    Al-Shaalan A.M.
    Environ. Sci. Pollut. Res., 2024, 23 (33685-33707): : 33685 - 33707