Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.

Accurately quantifying soil organic carbon (SOC) is considered fundamental to studying soil quality, modeling the global carbon cycle, and assessing global climate change. This study evaluated the uncertainties caused by up-scaling of soil properties from the county scale to the provincial scale and...

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Main Authors: Junjun Zhi, Changwei Jing, Shengpan Lin, Cao Zhang, Qiankun Liu, Stephen D DeGloria, Jiaping Wu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4026412?pdf=render
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spelling doaj-ebe50c2a2539470d84831461ac8068b32020-11-25T01:19:08ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0195e9775710.1371/journal.pone.0097757Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.Junjun ZhiChangwei JingShengpan LinCao ZhangQiankun LiuStephen D DeGloriaJiaping WuAccurately quantifying soil organic carbon (SOC) is considered fundamental to studying soil quality, modeling the global carbon cycle, and assessing global climate change. This study evaluated the uncertainties caused by up-scaling of soil properties from the county scale to the provincial scale and from lower-level classification of Soil Species to Soil Group, using four methods: the mean, median, Soil Profile Statistics (SPS), and pedological professional knowledge based (PKB) methods. For the SPS method, SOC stock is calculated at the county scale by multiplying the mean SOC density value of each soil type in a county by its corresponding area. For the mean or median method, SOC density value of each soil type is calculated using provincial arithmetic mean or median. For the PKB method, SOC density value of each soil type is calculated at the county scale considering soil parent materials and spatial locations of all soil profiles. A newly constructed 1∶50,000 soil survey geographic database of Zhejiang Province, China, was used for evaluation. Results indicated that with soil classification levels up-scaling from Soil Species to Soil Group, the variation of estimated SOC stocks among different soil classification levels was obviously lower than that among different methods. The difference in the estimated SOC stocks among the four methods was lowest at the Soil Species level. The differences in SOC stocks among the mean, median, and PKB methods for different Soil Groups resulted from the differences in the procedure of aggregating soil profile properties to represent the attributes of one soil type. Compared with the other three estimation methods (i.e., the SPS, mean and median methods), the PKB method holds significant promise for characterizing spatial differences in SOC distribution because spatial locations of all soil profiles are considered during the aggregation procedure.http://europepmc.org/articles/PMC4026412?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Junjun Zhi
Changwei Jing
Shengpan Lin
Cao Zhang
Qiankun Liu
Stephen D DeGloria
Jiaping Wu
spellingShingle Junjun Zhi
Changwei Jing
Shengpan Lin
Cao Zhang
Qiankun Liu
Stephen D DeGloria
Jiaping Wu
Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.
PLoS ONE
author_facet Junjun Zhi
Changwei Jing
Shengpan Lin
Cao Zhang
Qiankun Liu
Stephen D DeGloria
Jiaping Wu
author_sort Junjun Zhi
title Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.
title_short Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.
title_full Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.
title_fullStr Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.
title_full_unstemmed Estimating soil organic carbon stocks and spatial patterns with statistical and GIS-based methods.
title_sort estimating soil organic carbon stocks and spatial patterns with statistical and gis-based methods.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Accurately quantifying soil organic carbon (SOC) is considered fundamental to studying soil quality, modeling the global carbon cycle, and assessing global climate change. This study evaluated the uncertainties caused by up-scaling of soil properties from the county scale to the provincial scale and from lower-level classification of Soil Species to Soil Group, using four methods: the mean, median, Soil Profile Statistics (SPS), and pedological professional knowledge based (PKB) methods. For the SPS method, SOC stock is calculated at the county scale by multiplying the mean SOC density value of each soil type in a county by its corresponding area. For the mean or median method, SOC density value of each soil type is calculated using provincial arithmetic mean or median. For the PKB method, SOC density value of each soil type is calculated at the county scale considering soil parent materials and spatial locations of all soil profiles. A newly constructed 1∶50,000 soil survey geographic database of Zhejiang Province, China, was used for evaluation. Results indicated that with soil classification levels up-scaling from Soil Species to Soil Group, the variation of estimated SOC stocks among different soil classification levels was obviously lower than that among different methods. The difference in the estimated SOC stocks among the four methods was lowest at the Soil Species level. The differences in SOC stocks among the mean, median, and PKB methods for different Soil Groups resulted from the differences in the procedure of aggregating soil profile properties to represent the attributes of one soil type. Compared with the other three estimation methods (i.e., the SPS, mean and median methods), the PKB method holds significant promise for characterizing spatial differences in SOC distribution because spatial locations of all soil profiles are considered during the aggregation procedure.
url http://europepmc.org/articles/PMC4026412?pdf=render
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