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Erschienen in: Earth Science Informatics 3/2022

19.05.2022 | Research Article

Prediction and analysis of the soil organic matter distribution with the spatiotemporal kriging method

verfasst von: Yong Yang, Hao Li, Shudan Deng, Xue Yang, Mingxia Wang, Wenfeng Tan, Zhengyu Wu, Qinglong Wang, Yuzhi Zhou

Erschienen in: Earth Science Informatics | Ausgabe 3/2022

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Abstract

For the monitoring of soil fertility and health, soil samples are collected continuously every year in specific regions in China. The high-precision spatiotemporal (ST) continuous distribution of soil properties, e.g., soil organic matter (SOM), must be obtained based on ST soil samples. A total 11,716 soil samples were collected in Zigui County, Hubei Province, China in 2006–2018. First, the experimental variograms of SOM for various spatial and temporal lags were calculated. Second, a hybrid theoretical model integrating variations at the spatial and temporal scales was constructed to model the ST variations in SOM data. Third, the ST ordinary kriging (STOK) method was employed to determine the ST SOM distribution in the study area from 2006 to 2018. Then, the results obtained by STOK were compared with those generated by spatial ordinary kriging (OK) using the soil samples collected in one year. Finally, the temporal trend and change of SOM were analyzed based on the obtained ST distribution data. The results showed that (1) the STOK method performed better than the OK method because the STOK results attained a higher estimation accuracy and a more stable estimation variance in the years with a limited number of soil samples; (2) from 2006 to 2018, the SOM showed significant downward and significant upward trends in 15.05% and 32.05% of the total regional area, respectively. However, compared in 2006, the SOM in 2018 showed significant decreases and increases in 37.2% and 44.57% of the study area, respectively.

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Literatur
Zurück zum Zitat Akita Y, Chen JC, Serre ML (2012) The moving-window Bayesian maximum entropy framework: estimation of PM2.5 yearly average concentration across the contiguous United States. J Expo Sci Env Epid 22:496–501CrossRef Akita Y, Chen JC, Serre ML (2012) The moving-window Bayesian maximum entropy framework: estimation of PM2.5 yearly average concentration across the contiguous United States. J Expo Sci Env Epid 22:496–501CrossRef
Zurück zum Zitat Christakos G (1992) Random field models in earth sciences. Academic, San Diego Christakos G (1992) Random field models in earth sciences. Academic, San Diego
Zurück zum Zitat Christakos G (2000) Modern spatiotemporal geostatistics. Oxford University Press, Oxford Christakos G (2000) Modern spatiotemporal geostatistics. Oxford University Press, Oxford
Zurück zum Zitat Christakos G, Bogaert P (1996) Spatiotemporal analysis of springwater ion processes derived from measurements at the Dyle Basin in Belgium. IEEE T Geosci Remote 34:626–642CrossRef Christakos G, Bogaert P (1996) Spatiotemporal analysis of springwater ion processes derived from measurements at the Dyle Basin in Belgium. IEEE T Geosci Remote 34:626–642CrossRef
Zurück zum Zitat Christakos G, Hristopulos DT (1998) Spatiotemporal environmental health modelling. Kluwer Academic Publishing, Boston Christakos G, Hristopulos DT (1998) Spatiotemporal environmental health modelling. Kluwer Academic Publishing, Boston
Zurück zum Zitat Cressie N, Huang HC (1999) Classes of nonseparable, spatio-temporal stationary covariance functions. J Am Stat Assoc 94:1330–1339CrossRef Cressie N, Huang HC (1999) Classes of nonseparable, spatio-temporal stationary covariance functions. J Am Stat Assoc 94:1330–1339CrossRef
Zurück zum Zitat Douaik A, Meirvenne MV, Tóth T (2005) Soil salinity mapping using spatiotemporal Kriging and Bayesian maximum entropy with interval soft data. Geoderma 128:234–248CrossRef Douaik A, Meirvenne MV, Tóth T (2005) Soil salinity mapping using spatiotemporal Kriging and Bayesian maximum entropy with interval soft data. Geoderma 128:234–248CrossRef
Zurück zum Zitat Follett RF, Stewart CE, Pruessner EG, Kimble JM (2015) Great plains climate and land-use effects on soil organic carbon. Soil Sci Soc Am J 79:261–271CrossRef Follett RF, Stewart CE, Pruessner EG, Kimble JM (2015) Great plains climate and land-use effects on soil organic carbon. Soil Sci Soc Am J 79:261–271CrossRef
Zurück zum Zitat Gneiting T (2002) Nonseparable, stationary covariance functions for space-time data. J Am Stat Assoc 97:590–600CrossRef Gneiting T (2002) Nonseparable, stationary covariance functions for space-time data. J Am Stat Assoc 97:590–600CrossRef
Zurück zum Zitat Hu W, Shen QS, Zhai XY, Du SL, Zhang XY (2021) Impact of environmental factors on the spatiotemporal variability of soil organic matter a case study in a typical small Mollisol watershed of Northeast China. J Soil Sediment 21:736–747CrossRef Hu W, Shen QS, Zhai XY, Du SL, Zhang XY (2021) Impact of environmental factors on the spatiotemporal variability of soil organic matter a case study in a typical small Mollisol watershed of Northeast China. J Soil Sediment 21:736–747CrossRef
Zurück zum Zitat Huang B, Sun WX, Zhao YC, Zhu J, Yang RQ, Zou Z, Ding F, Su JP (2007) Temporal and spatial variability of soil organic matter and total nitrogen in an agricultural ecosystem as affected by farming practices. Geoderma 139:336–345CrossRef Huang B, Sun WX, Zhao YC, Zhu J, Yang RQ, Zou Z, Ding F, Su JP (2007) Temporal and spatial variability of soil organic matter and total nitrogen in an agricultural ecosystem as affected by farming practices. Geoderma 139:336–345CrossRef
Zurück zum Zitat Jost G, Heuvelink GBM, Papritz A (2005) Analysing the space-time distribution of soil water storage of a forest ecosystem using spatio-temporal Kriging. Geoderma 128:258–273CrossRef Jost G, Heuvelink GBM, Papritz A (2005) Analysing the space-time distribution of soil water storage of a forest ecosystem using spatio-temporal Kriging. Geoderma 128:258–273CrossRef
Zurück zum Zitat Kolovos A, Christakos G, Hristopulos DT, Serre ML (2004) Methods for generating non-separable spatiotemporal covariance models with potential environmental application. Adv Water Resour 27:815–830CrossRef Kolovos A, Christakos G, Hristopulos DT, Serre ML (2004) Methods for generating non-separable spatiotemporal covariance models with potential environmental application. Adv Water Resour 27:815–830CrossRef
Zurück zum Zitat Kolovos A, Skupin A, Jerrett M, Christakos G (2010) Multi-perspective analysis and spatiotemporal mapping of air pollution monitoring data. Environ Sci Technol 44:6738–6744CrossRef Kolovos A, Skupin A, Jerrett M, Christakos G (2010) Multi-perspective analysis and spatiotemporal mapping of air pollution monitoring data. Environ Sci Technol 44:6738–6744CrossRef
Zurück zum Zitat Kyriakidis PC, Journel AG (1999) Geostatistical space-time models: A review. Math Geol 31:651–684CrossRef Kyriakidis PC, Journel AG (1999) Geostatistical space-time models: A review. Math Geol 31:651–684CrossRef
Zurück zum Zitat Liu HB, Li ST, Zhou YP (2020) Spatial-temporal variability of soil organic matter in urban fringe over 30 years: A case study in Northeast China. Int J Env Res Pub He 17:292CrossRef Liu HB, Li ST, Zhou YP (2020) Spatial-temporal variability of soil organic matter in urban fringe over 30 years: A case study in Northeast China. Int J Env Res Pub He 17:292CrossRef
Zurück zum Zitat Liu JL, Liu L, Ma XY, Fu Q, Wang HJ, Zhang ZH, Zhang LL, Yu P (2018) Spatial variability of soil salt in different soil layers at different scales. J Basic Sci Eng 26(2):305–312 (in Chinese with English abstract) Liu JL, Liu L, Ma XY, Fu Q, Wang HJ, Zhang ZH, Zhang LL, Yu P (2018) Spatial variability of soil salt in different soil layers at different scales. J Basic Sci Eng 26(2):305–312 (in Chinese with English abstract)
Zurück zum Zitat Liu WJ, Su YZ, Yang R, Yang Q, Fan GP (2011) Temporal and spatial variability of soil organic matter and total nitrogen in a typical oasis cropland ecosystem in arid region of Northwest China. Environ Earth Sci 64:2247–2227CrossRef Liu WJ, Su YZ, Yang R, Yang Q, Fan GP (2011) Temporal and spatial variability of soil organic matter and total nitrogen in a typical oasis cropland ecosystem in arid region of Northwest China. Environ Earth Sci 64:2247–2227CrossRef
Zurück zum Zitat Pang W, Christakos G, Wang JF (2009) Comparative spatiotemporal analysis of fine particulate matter pollution. Environmetrics 21:305–317CrossRef Pang W, Christakos G, Wang JF (2009) Comparative spatiotemporal analysis of fine particulate matter pollution. Environmetrics 21:305–317CrossRef
Zurück zum Zitat Porcu E, Mateu J, Saura F (2008) New classes of covariance and spectral density functions for spatio-temporal modeling. Stoch Enc Res Risk A 22:S65–S79CrossRef Porcu E, Mateu J, Saura F (2008) New classes of covariance and spectral density functions for spatio-temporal modeling. Stoch Enc Res Risk A 22:S65–S79CrossRef
Zurück zum Zitat Savelieva E, Demyanov V, Kanevski M, Serre ML, Christakos G (2005) BME-based uncertainty assessment of the Chernobyl fallout. Geoderma 128:312–324CrossRef Savelieva E, Demyanov V, Kanevski M, Serre ML, Christakos G (2005) BME-based uncertainty assessment of the Chernobyl fallout. Geoderma 128:312–324CrossRef
Zurück zum Zitat Scharlemann JPW, Tanner EVJ, Hiederer R, Kapos V (2014) Global soil carbon: understanding and managing the largest terrestrial carbon pool. Carbon Manag 5:81–91CrossRef Scharlemann JPW, Tanner EVJ, Hiederer R, Kapos V (2014) Global soil carbon: understanding and managing the largest terrestrial carbon pool. Carbon Manag 5:81–91CrossRef
Zurück zum Zitat Shao YC, Ma ZW, Wang JH, Bi J (2021) Estimating daily ground-level PM2.5 in China with random-forest-based spatiotemporal kriging. Sci Total Environ 740:139761CrossRef Shao YC, Ma ZW, Wang JH, Bi J (2021) Estimating daily ground-level PM2.5 in China with random-forest-based spatiotemporal kriging. Sci Total Environ 740:139761CrossRef
Zurück zum Zitat Snepvangers JJJC, Heuvelink GBM, Huisman JA (2003) Soil water content interpolation using spatio-temporal kriging with external drift. Geoderma 112:253–271CrossRef Snepvangers JJJC, Heuvelink GBM, Huisman JA (2003) Soil water content interpolation using spatio-temporal kriging with external drift. Geoderma 112:253–271CrossRef
Zurück zum Zitat Sun XL, Zhao YC, Wu YJ, Zhao MS, Wang HL, Zhang GL (2012) Spatio-temporal change of soil organic matter content of Jiangsu Province, China, based on digital soil maps. Soil Use Manage 28:318–328CrossRef Sun XL, Zhao YC, Wu YJ, Zhao MS, Wang HL, Zhang GL (2012) Spatio-temporal change of soil organic matter content of Jiangsu Province, China, based on digital soil maps. Soil Use Manage 28:318–328CrossRef
Zurück zum Zitat Vyas V, Christakos G (1997) Spatiotemporal analysis and mapping of sulfate deposition data over the conterminous USA. Atmos Environ 31:3623–3633CrossRef Vyas V, Christakos G (1997) Spatiotemporal analysis and mapping of sulfate deposition data over the conterminous USA. Atmos Environ 31:3623–3633CrossRef
Zurück zum Zitat Yang Y, Wu JP, Christakos G (2015) Prediction of soil heavy metal distribution using spatiotemporal kriging with trend model. Ecol Indic 56:125–133CrossRef Yang Y, Wu JP, Christakos G (2015) Prediction of soil heavy metal distribution using spatiotemporal kriging with trend model. Ecol Indic 56:125–133CrossRef
Zurück zum Zitat Yang X, Yang Y, Li K, Wu RJ (2020) Estimation and characterization of annual precipitation based on spatiotemporal kriging in the Huanghuaihai basin of China during 1956–2016. Stoch Enc Res Risk A 34:1407–1420CrossRef Yang X, Yang Y, Li K, Wu RJ (2020) Estimation and characterization of annual precipitation based on spatiotemporal kriging in the Huanghuaihai basin of China during 1956–2016. Stoch Enc Res Risk A 34:1407–1420CrossRef
Zurück zum Zitat Yang Y, Christakos G, Yang X, He JY (2018) Spatiotemporal characterization and mapping of PM2.5 concentrations in southern Jiangsu Province, China. Environ Pollut 234:794–803CrossRef Yang Y, Christakos G, Yang X, He JY (2018) Spatiotemporal characterization and mapping of PM2.5 concentrations in southern Jiangsu Province, China. Environ Pollut 234:794–803CrossRef
Zurück zum Zitat Yu HL, Chen JC, Christakos G, Jerrett M (2009) BME estimation of residential exposure to ambient PM10 and ozone at multiple time-scales. Environ Health Persp 117:537–544CrossRef Yu HL, Chen JC, Christakos G, Jerrett M (2009) BME estimation of residential exposure to ambient PM10 and ozone at multiple time-scales. Environ Health Persp 117:537–544CrossRef
Zurück zum Zitat Zhou YP, Zhang YC, Luo XY, Li BN, Li MJ, Zhang ZD, Zhang JJ (2019) Review on spatial variability of soil organic matter and its driving factors. Chin J Soil Sci 50:1492–1499 ((in Chinese with English abstract)) Zhou YP, Zhang YC, Luo XY, Li BN, Li MJ, Zhang ZD, Zhang JJ (2019) Review on spatial variability of soil organic matter and its driving factors. Chin J Soil Sci 50:1492–1499 ((in Chinese with English abstract))
Metadaten
Titel
Prediction and analysis of the soil organic matter distribution with the spatiotemporal kriging method
verfasst von
Yong Yang
Hao Li
Shudan Deng
Xue Yang
Mingxia Wang
Wenfeng Tan
Zhengyu Wu
Qinglong Wang
Yuzhi Zhou
Publikationsdatum
19.05.2022
Verlag
Springer Berlin Heidelberg
Erschienen in
Earth Science Informatics / Ausgabe 3/2022
Print ISSN: 1865-0473
Elektronische ISSN: 1865-0481
DOI
https://doi.org/10.1007/s12145-022-00815-6

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