Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.

Wetlands, as an important global carbon reservoir, contribute significantly to the terrestrial carbon cycle. However, the high spatial heterogeneity of wetland ecosystems poses a considerable challenge to accurate estimation and mapping of soil organic carbon (SOC). In this study, we focused on Caoh...

Full description

Saved in:
Bibliographic Details
Main Authors: Ximei Wen, Wenmin Luo, Xiuyuan Yang, Fupeng Li, Zhenming Zhang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0328246
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849687236764762112
author Ximei Wen
Wenmin Luo
Xiuyuan Yang
Fupeng Li
Zhenming Zhang
author_facet Ximei Wen
Wenmin Luo
Xiuyuan Yang
Fupeng Li
Zhenming Zhang
author_sort Ximei Wen
collection DOAJ
description Wetlands, as an important global carbon reservoir, contribute significantly to the terrestrial carbon cycle. However, the high spatial heterogeneity of wetland ecosystems poses a considerable challenge to accurate estimation and mapping of soil organic carbon (SOC). In this study, we focused on Caohai Wetland in Guizhou Province, China, a typical plateau freshwater wetland, to evaluate the spatial variability of SOC across five land use types. A total of 122 surface soil samples were collected, and SOC content was analyzed using three Kriging interpolation methods-Ordinary Kriging (OK), Simple Kriging (SK), and Universal Kriging (UK)-in combination with four semi-variogram models (Gaussian, Hole effect, J-Bessel, and K-Bessel). The results indicated that SOC distribution varied significantly among different soil types. The spatial variability was highest in swamp and grassland soils and lowest in agricultural and forest soils. Among the semi-variogram models, the J-Bessel model showed the best performance in capturing local variation patterns. OK and SK yielded lower RMSE values (2.41) and higher R² (0.913 and 0.911, respectively) than UK (RMSE = 2.80; R² = 0.863). Principal component analysis revealed that SOC was positively correlated with total nitrogen, available nitrogen, Cd, Zn, DDT, and OCPs, and negatively correlated with pH. The cumulative variance explained by the two principal components was 81.3%. These findings demonstrate that Bessel-type models combined with Ordinary or Simple Kriging provide superior prediction accuracy in highly heterogeneous wetland soils. The methodology offers a scientific basis for SOC spatial modeling and targeted soil carbon management strategies in plateau wetland ecosystems.
format Article
id doaj-art-3cdeba10ec164a9ea0a76e6d4273a628
institution DOAJ
issn 1932-6203
language English
publishDate 2025-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj-art-3cdeba10ec164a9ea0a76e6d4273a6282025-08-20T03:22:22ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01207e032824610.1371/journal.pone.0328246Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.Ximei WenWenmin LuoXiuyuan YangFupeng LiZhenming ZhangWetlands, as an important global carbon reservoir, contribute significantly to the terrestrial carbon cycle. However, the high spatial heterogeneity of wetland ecosystems poses a considerable challenge to accurate estimation and mapping of soil organic carbon (SOC). In this study, we focused on Caohai Wetland in Guizhou Province, China, a typical plateau freshwater wetland, to evaluate the spatial variability of SOC across five land use types. A total of 122 surface soil samples were collected, and SOC content was analyzed using three Kriging interpolation methods-Ordinary Kriging (OK), Simple Kriging (SK), and Universal Kriging (UK)-in combination with four semi-variogram models (Gaussian, Hole effect, J-Bessel, and K-Bessel). The results indicated that SOC distribution varied significantly among different soil types. The spatial variability was highest in swamp and grassland soils and lowest in agricultural and forest soils. Among the semi-variogram models, the J-Bessel model showed the best performance in capturing local variation patterns. OK and SK yielded lower RMSE values (2.41) and higher R² (0.913 and 0.911, respectively) than UK (RMSE = 2.80; R² = 0.863). Principal component analysis revealed that SOC was positively correlated with total nitrogen, available nitrogen, Cd, Zn, DDT, and OCPs, and negatively correlated with pH. The cumulative variance explained by the two principal components was 81.3%. These findings demonstrate that Bessel-type models combined with Ordinary or Simple Kriging provide superior prediction accuracy in highly heterogeneous wetland soils. The methodology offers a scientific basis for SOC spatial modeling and targeted soil carbon management strategies in plateau wetland ecosystems.https://doi.org/10.1371/journal.pone.0328246
spellingShingle Ximei Wen
Wenmin Luo
Xiuyuan Yang
Fupeng Li
Zhenming Zhang
Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.
PLoS ONE
title Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.
title_full Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.
title_fullStr Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.
title_full_unstemmed Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.
title_short Comparative analysis of soil organic carbon across different land types in plateau wetlands using Kriging interpolation based on spatial heterogeneity.
title_sort comparative analysis of soil organic carbon across different land types in plateau wetlands using kriging interpolation based on spatial heterogeneity
url https://doi.org/10.1371/journal.pone.0328246
work_keys_str_mv AT ximeiwen comparativeanalysisofsoilorganiccarbonacrossdifferentlandtypesinplateauwetlandsusingkriginginterpolationbasedonspatialheterogeneity
AT wenminluo comparativeanalysisofsoilorganiccarbonacrossdifferentlandtypesinplateauwetlandsusingkriginginterpolationbasedonspatialheterogeneity
AT xiuyuanyang comparativeanalysisofsoilorganiccarbonacrossdifferentlandtypesinplateauwetlandsusingkriginginterpolationbasedonspatialheterogeneity
AT fupengli comparativeanalysisofsoilorganiccarbonacrossdifferentlandtypesinplateauwetlandsusingkriginginterpolationbasedonspatialheterogeneity
AT zhenmingzhang comparativeanalysisofsoilorganiccarbonacrossdifferentlandtypesinplateauwetlandsusingkriginginterpolationbasedonspatialheterogeneity