农场研究对于验证基于过程的气候智能型农业模型的重要性。

IF 3.9 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Carbon Balance and Management Pub Date : 2024-05-29 DOI:10.1186/s13021-024-00260-6
Elizabeth Ellis, Keith Paustian
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引用次数: 0

摘要

气候智能型农业可用于建立土壤碳储量、减少农业温室气体(GHG)排放并提高农艺对气候压力的适应能力。美国最近宣布承诺将农业部门作为整体气候减缓战略的一部分,随之而来的是对农业温室气体通量测量和建模的强大、科学有效工具的需求。如果要使农业对气候减缓做出重大贡献,就应鼓励在尽可能多的土地上采用相关做法,并准确量化减缓效益。基于过程的模型是以数量有限的长期农业实验数据为参数的,可能无法完全反映工作农场的结果。使用各种气候智能管理系统对商业农场的 SOC 储量和温室气体排放进行时空替代、配对研究和长期监测,可以验证长期农业试验的结果,并为基于过程的模型改进提供数据。在此,我们将介绍一个项目,该项目与美国中西部的商业生产者合作,在田间尺度上直接测量其农场的土壤有机碳(SOC)储量并建立模型。我们介绍了这项研究以及遇到的几个意想不到的挑战,以促进进一步的农场数据收集和农场 SOC 储量测量安全数据库的建立。
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Importance of on-farm research for validating process-based models of climate-smart agriculture

Climate-smart agriculture can be used to build soil carbon stocks, decrease agricultural greenhouse gas (GHG) emissions, and increase agronomic resilience to climate pressures. The US recently declared its commitment to include the agricultural sector as part of an overall climate-mitigation strategy, and with this comes the need for robust, scientifically valid tools for agricultural GHG flux measurements and modeling. If agriculture is to contribute significantly to climate mitigation, practice adoption should be incentivized on as much land area as possible and mitigation benefits should be accurately quantified. Process-based models are parameterized on data from a limited number of long-term agricultural experiments, which may not fully reflect outcomes on working farms. Space-for-time substitution, paired studies, and long-term monitoring of SOC stocks and GHG emissions on commercial farms using a variety of climate-smart management systems can validate findings from long-term agricultural experiments and provide data for process-based model improvements. Here, we describe a project that worked collaboratively with commercial producers in the Midwest to directly measure and model the soil organic carbon (SOC) stocks of their farms at the field scale. We describe this study, and several unexpected challenges encountered, to facilitate further on-farm data collection and the creation of a secure database of on-farm SOC stock measurements.

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来源期刊
Carbon Balance and Management
Carbon Balance and Management Environmental Science-Management, Monitoring, Policy and Law
CiteScore
7.60
自引率
0.00%
发文量
17
审稿时长
14 weeks
期刊介绍: Carbon Balance and Management is an open access, peer-reviewed online journal that encompasses all aspects of research aimed at developing a comprehensive policy relevant to the understanding of the global carbon cycle. The global carbon cycle involves important couplings between climate, atmospheric CO2 and the terrestrial and oceanic biospheres. The current transformation of the carbon cycle due to changes in climate and atmospheric composition is widely recognized as potentially dangerous for the biosphere and for the well-being of humankind, and therefore monitoring, understanding and predicting the evolution of the carbon cycle in the context of the whole biosphere (both terrestrial and marine) is a challenge to the scientific community. This demands interdisciplinary research and new approaches for studying geographical and temporal distributions of carbon pools and fluxes, control and feedback mechanisms of the carbon-climate system, points of intervention and windows of opportunity for managing the carbon-climate-human system. Carbon Balance and Management is a medium for researchers in the field to convey the results of their research across disciplinary boundaries. Through this dissemination of research, the journal aims to support the work of the Intergovernmental Panel for Climate Change (IPCC) and to provide governmental and non-governmental organizations with instantaneous access to continually emerging knowledge, including paradigm shifts and consensual views.
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