Space-time modelling of soil organic carbon stock change at multiple scales: Case study from Hungary

被引:2
|
作者
Szatmari, Gabor [1 ]
Pasztor, Laszlo [1 ]
Takacs, Katalin [1 ]
Meszaros, Janos [1 ]
Beno, Andras [1 ,2 ]
Laborczi, Annamaria [1 ]
机构
[1] HUN REN Ctr Agr Res, Inst Soil Sci, Budapest, Hungary
[2] Univ Debrecen, Doctoral Sch Earth Sci, Debrecen, Hungary
关键词
Soil organic carbon; Spatiotemporal modelling; Spatiotemporal assessment; Machine learning; Space-time geostatistics; Spatial aggregation; Uncertainty assessment; CONDITIONAL SIMULATIONS; CLIMATE-CHANGE; SEQUESTRATION; UNCERTAINTY; PREDICTION; DECOMPOSITION; GEOSTATISTICS;
D O I
10.1016/j.geoderma.2024.117067
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
The role of soil organic carbon (SOC) is crucial not only for numerous soil functions and processes but also for addressing various environmental crises and challenges we face. Consequently, the demand for information on the spatiotemporal variability of SOC is increasing, posing new methodological challenges, such as the need for information on SOC and SOC changes with quantified uncertainty across a wide variety of spatial scales and temporal periods. Our objective was to present a methodology based on a combination of machine learning and space-time geostatistics to predict the spatiotemporal variability of SOC stock with quantified uncertainty at various spatial supports (i.e., point support, 1 x 1 km, 5 x 5 km, 10 x 10 km, 25 x 25 km, counties, and the entire country) for Hungary, between 1992 and 2016. The role of geostatistics is pivotal, as it accounts for the spatiotemporal correlation of the interpolation errors, which is essential for reliably quantifying the uncertainty associated with spatially aggregated SOC stock and SOC stock change predictions. Five times repeated 10-fold leave-location-out cross-validation was used to evaluate the point support predictions and uncertainty quantifications, yielding acceptable results for both SOC stock (ME = -0.897, RMSE = 19.358, MEC = 0.321, and G = 0.912) and SOC stock change (ME = 0.414, RMSE = 16.626, MEC = 0.160, and G = 0.952). We compiled a series of maps of SOC stock predictions between 1992 and 2016 for each support, along with the quantified uncertainty, which is unprecedented in Hungary. It was demonstrated that the larger the support, the smaller the prediction uncertainty, which facilitates the identification and delineation of larger areas with statistically significant SOC stock changes. Moreover, the methodology can overcome the limitations of recent approaches in the spatiotemporal modelling of SOC, allowing the prediction of SOC and SOC changes, with quantified uncertainty, for any year, time period, and spatial scale. This methodology is capable of meeting the current and anticipated demands for dynamic information on SOC at both national and international levels.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Estimating soil organic carbon stock change at multiple scales using machine learning and multivariate geostatistics
    Szatmari, Gabor
    Pasztor, Laszlo
    Heuvelink, Gerard B. M.
    GEODERMA, 2021, 403
  • [2] A space-time observation system for soil organic carbon
    Karunaratne, S. B.
    Bishop, T. F. A.
    Lessels, J. S.
    Baldock, J. A.
    Odeh, I. O. A.
    SOIL RESEARCH, 2015, 53 (06) : 647 - 661
  • [3] Machine learning in space and time for modelling soil organic carbon change
    Heuvelink, Gerard B. M.
    Angelini, Marcos E.
    Poggio, Laura
    Bai, Zhanguo
    Batjes, Niels H.
    van den Bosch, Rik
    Bossio, Deborah
    Estella, Sergio
    Lehmann, Johannes
    Olmedo, Guillermo F.
    Sanderman, Jonathan
    EUROPEAN JOURNAL OF SOIL SCIENCE, 2021, 72 (04) : 1607 - 1623
  • [4] 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
  • [5] Integration of a process-based model into the digital soil mapping improves the space-time soil organic carbon modelling in intensively human-impacted area
    Xie, Enze
    Zhang, Xiu
    Lu, Fangyi
    Peng, Yuxuan
    Chen, Jian
    Zhao, Yongcun
    GEODERMA, 2022, 409
  • [6] Modelling soil organic carbon stock change for estimating whole-farm greenhouse gas emissions
    Bolinder, M. A.
    VandenBygaart, A. J.
    Gregorich, E. G.
    Angers, D. A.
    Janzen, H. H.
    CANADIAN JOURNAL OF SOIL SCIENCE, 2006, 86 (03) : 419 - 429
  • [7] Modelling Soil Organic Carbon Changes on Arable Land under Climate Change - A Case Study Analysis of the Kocin Farm in Slovakia
    Balkovic, Juraj
    Schmid, Erwin
    Skalsky, Rastislav
    Novakova, Martina
    SOIL AND WATER RESEARCH, 2011, 6 (01) : 30 - 42
  • [8] Verifiable soil organic carbon modelling to facilitate regional reporting of cropland carbon change: A test case in the Czech Republic
    Balkovic, Juraj
    Madaras, Mikulas
    Skalsky, Rastislav
    Folberth, Christian
    Smatanova, Michaela
    Schmid, Erwin
    van der Velde, Marijn
    Kraxner, Florian
    Obersteiner, Michael
    JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2020, 274
  • [9] Uncertainty analysis of soil organic carbon stock change in Canadian cropland from 1991 to 2001
    VandenBygaart, AJ
    Gregorich, EG
    Angers, DA
    Stoklas, UF
    GLOBAL CHANGE BIOLOGY, 2004, 10 (06) : 983 - 994
  • [10] Effects of climate change and grazing on the soil organic carbon stock of alpine wetlands on the Tibetan Plateau from 2000 to 2018
    Jiang, Mengdi
    Li, Hailing
    Zhang, Wen
    Liu, Jianbao
    Zhang, Qing
    CATENA, 2024, 238