Improving pedotransfer functions for predicting soil mineral associated organic carbon by ensemble machine learning

被引:33
|
作者
Xiao, Yi [1 ,2 ]
Xue, Jie [2 ]
Zhang, Xianglin [2 ]
Wang, Nan [2 ]
Hong, Yongsheng [2 ]
Jiang, Yefeng [2 ]
Zhou, Yin [3 ]
Teng, Hongfen [4 ]
Hu, Bifeng [5 ]
Lugato, Emanuele [6 ]
Richer-de-Forges, Anne C. [7 ]
Arrouays, Dominique [7 ]
Shi, Zhou [2 ]
Chen, Songchao [1 ,2 ]
机构
[1] ZJU Hangzhou Global Sci & Technol Innovat Ctr, Hangzhou 311200, Peoples R China
[2] Zhejiang Univ, Inst Appl Remote Sensing & Informat Technol, Coll Environm & Resource Sci, Hangzhou 310058, Peoples R China
[3] Zhejiang Univ Finance & Econ, Inst Land & Urban Rural Dev, Hangzhou 310018, Peoples R China
[4] Wuhan Inst Technol, Sch Environm Ecol & Biol Engn, Wuhan 430205, Peoples R China
[5] Jiangxi Univ Finance & Econ, Sch Tourism & Urban Management, Dept Land Resource Management, Nanchang 330013, Peoples R China
[6] European Commiss, Joint Res Ctr JRC, Ispra, Italy
[7] INRAE, Unite InfoSol, F-45075 Orleans, France
关键词
Soil carbon fractions; Model ensemble; LUCAS Soil; Forward recursive feature selection; RESOLUTION MAP; MATTER; FRACTIONS; MODEL; STOCKS; CALIBRATION; DYNAMICS; NITROGEN; DATASET;
D O I
10.1016/j.geoderma.2022.116208
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
Soil organic carbon (SOC) sequestration is a promising natural climate solution for capturing atmospheric CO2, and it provides crucial co-benefits in improving soil functions and services at the same time. Given that SOC is not a single and uniform entity, a deep understanding of SOC response to environmental changes requires additional information on SOC fractions with distinct characteristics such as particulate organic carbon (POC) and mineral associated organic carbon (MAOC). Despite their great importance, POC and MAOC information is still scarce in the soil databases, particularly on a broad scale. Pedotransfer function (PTF) is a good strategy to estimate missing soil properties, while its application in SOC fractions has been poorly explored. Based on 352 representative mineral topsoil samples (0-20 cm) across Europe, we evaluated the potential of MAOC prediction using machine learning based PTF (random forest (RF), Cubist, and gradient boosted machine (GBM)) together with predictor selection methods (recursive feature elimination (RFE) and forward recursive feature selection (FRFS)). The repeated validation (100 times) showed that MAOC could be well predicted by machine learning based PTFs (R2 of 0.877-0.9, RMSE of 2.994-3.269 g kg- 1). RFE can effectively reduce the number of predictors from 21 to 12 with comparable performance to the models using all predictors. The proposed FRFS algorithm had the best model parsimony with only 6 predictors (SOC, silt + clay, nitrogen, nitrogen deposition, soil erosion and sand) and performed similar to or even better than RFE. In combination with FRFS, Cubist performed best among the three machine learning models (R2 of 0.9, RMSE of 2.994 g kg- 1). Our results also showed that five model ensemble methods had similar model performance and can improve model accuracy and robustness compared to a single machine learning model. This study provides a valuable reference for coupling PTF and legacy soil databases to increase the spatial coverage and the performance of machine learning based SOC fraction predictions.
引用
收藏
页数:8
相关论文
共 50 条
  • [31] Soil Organic Matter and Biochar Effects on Soil Water: Measurements, Pedotransfer Functions and APSIM Simulations
    Aller, Deborah
    Archontoulis, Sotirios
    Laird, David
    EUROPEAN JOURNAL OF SOIL SCIENCE, 2025, 76 (02)
  • [32] Global stocks and capacity of mineral-associated soil organic carbon
    Georgiou, Katerina
    Jackson, Robert B.
    Vinduskova, Olga
    Abramoff, Rose Z.
    Ahlstrom, Anders
    Feng, Wenting
    Harden, Jennifer W.
    Pellegrini, Adam F. A.
    Polley, H. Wayne
    Soong, Jennifer L.
    Riley, William J.
    Torn, Margaret S.
    NATURE COMMUNICATIONS, 2022, 13 (01)
  • [33] Global stocks and capacity of mineral-associated soil organic carbon
    Katerina Georgiou
    Robert B. Jackson
    Olga Vindušková
    Rose Z. Abramoff
    Anders Ahlström
    Wenting Feng
    Jennifer W. Harden
    Adam F. A. Pellegrini
    H. Wayne Polley
    Jennifer L. Soong
    William J. Riley
    Margaret S. Torn
    Nature Communications, 13
  • [34] Global turnover of soil mineral-associated and particulate organic carbon
    Zhou, Zhenghu
    Ren, Chengjie
    Wang, Chuankuan
    Delgado-Baquerizo, Manuel
    Luo, Yiqi
    Luo, Zhongkui
    Du, Zhenggang
    Zhu, Biao
    Yang, Yuanhe
    Jiao, Shuo
    Zhao, Fazhu
    Cai, Andong
    Yang, Gaihe
    Wei, Gehong
    NATURE COMMUNICATIONS, 2024, 15 (01)
  • [35] European topsoil bulk density and organic carbon stock database (0-20 cm ) using machine-learning-based pedotransfer functions
    Chen, Songchao
    Chen, Zhongxing
    Zhang, Xianglin
    Luo, Zhongkui
    Schillaci, Calogero
    Arrouays, Dominique
    Richer-de-Forges, Anne Christine
    Shi, Zhou
    EARTH SYSTEM SCIENCE DATA, 2024, 16 (05) : 2367 - 2383
  • [36] Evaluation of pedotransfer functions for predicting soil bulk density for U.S. soils
    Abdelbaki, Ahmed M.
    AIN SHAMS ENGINEERING JOURNAL, 2018, 9 (04) : 1611 - 1619
  • [37] Ensemble machine learning to improve scoring functions
    Wang, Xiang
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2017, 254
  • [38] Evaluation of pedotransfer functions in predicting the soil water contents at field capacity and wilting point
    Givi, J
    Prasher, SO
    Patel, RM
    AGRICULTURAL WATER MANAGEMENT, 2004, 70 (02) : 83 - 96
  • [39] 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)
  • [40] Machine Learning Approaches to Develop Pedotransfer Functions for Tropical Sri Lankan Soils
    Gunarathna, M. H. J. P.
    Sakai, Kazuhito
    Nakandakari, Tamotsu
    Momii, Kazuro
    Kumari, M. K. N.
    WATER, 2019, 11 (09)