Reducing the uncertainty in estimating soil microbial-derived carbon storage

Details

Serval ID
serval:BIB_77A4046F982C
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Reducing the uncertainty in estimating soil microbial-derived carbon storage
Journal
Proceedings of the National Academy of Sciences
Author(s)
Hu Han, Qian Chao, Xue Ke, Jörgensen Rainer Georg, Keiluweit Marco, Liang Chao, Zhu Xuefeng, Chen Ji, Sun Yishen, Ni Haowei, Ding Jixian, Huang Weigen, Mao Jingdong, Tan Rong-Xi, Zhou Jizhong, Crowther Thomas W., Zhou Zhi-Hua, Zhang Jiabao, Liang Yuting
ISSN
0027-8424
1091-6490
ISSN-L
0027-8424
Publication state
Published
Issued date
27/08/2024
Peer-reviewed
Oui
Volume
121
Number
35
Language
english
Abstract
Soil organic carbon (SOC) is the largest carbon pool in terrestrial ecosystems and plays a crucial role in mitigating climate change and enhancing soil productivity. Microbial-derived carbon (MDC) is the main component of the persistent SOC pool. However, current formulas used to estimate the proportional contribution of MDC are plagued by uncertainties due to limited sample sizes and the neglect of bacterial group composition effects. Here, we compiled the comprehensive global dataset and employed machine learning approaches to refine our quantitative understanding of MDC contributions to total carbon storage. Our efforts resulted in a reduction in the relative standard errors in prevailing estimations by an average of 71% and minimized the effect of global variations in bacterial group compositions on estimating MDC. Our estimation indicates that MDC contributes approximately 758 Pg, representing approximately 40% of the global soil carbon stock. Our study updated the formulas of MDC estimation with improving the accuracy and preserving simplicity and practicality. Given the unique biochemistry and functioning of the MDC pool, our study has direct implications for modeling efforts and predicting the land-atmosphere carbon balance under current and future climate scenarios.
Pubmed
Create date
30/08/2024 14:23
Last modification date
05/10/2024 6:02
Usage data