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Knowledge-guided machine learning can improve carbon cycle quantification in agroecosystems

Authors :
Licheng Liu
Wang Zhou
Kaiyu Guan
Bin Peng
Shaoming Xu
Jinyun Tang
Qing Zhu
Jessica Till
Xiaowei Jia
Chongya Jiang
Sheng Wang
Ziqi Qin
Hui Kong
Robert Grant
Symon Mezbahuddin
Vipin Kumar
Zhenong Jin
Source :
Nature Communications, Vol 15, Iss 1, Pp 1-15 (2024)
Publication Year :
2024
Publisher :
Nature Portfolio, 2024.

Abstract

Abstract Accurate and cost-effective quantification of the carbon cycle for agroecosystems at decision-relevant scales is critical to mitigating climate change and ensuring sustainable food production. However, conventional process-based or data-driven modeling approaches alone have large prediction uncertainties due to the complex biogeochemical processes to model and the lack of observations to constrain many key state and flux variables. Here we propose a Knowledge-Guided Machine Learning (KGML) framework that addresses the above challenges by integrating knowledge embedded in a process-based model, high-resolution remote sensing observations, and machine learning (ML) techniques. Using the U.S. Corn Belt as a testbed, we demonstrate that KGML can outperform conventional process-based and black-box ML models in quantifying carbon cycle dynamics. Our high-resolution approach quantitatively reveals 86% more spatial detail of soil organic carbon changes than conventional coarse-resolution approaches. Moreover, we outline a protocol for improving KGML via various paths, which can be generalized to develop hybrid models to better predict complex earth system dynamics.

Subjects

Subjects :
Science

Details

Language :
English
ISSN :
20411723
Volume :
15
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Nature Communications
Publication Type :
Academic Journal
Accession number :
edsdoj.70387f3b5cc147cd85f84700d859db7f
Document Type :
article
Full Text :
https://doi.org/10.1038/s41467-023-43860-5