Atmospheric Methane Research problem statements are shared to build community and knowledge around key challenges to accelerate progress.
Submit a problem statementView all problem statementsThis problem statement was submitted to the first round of the Exploratory Grants for Atmospheric Methane Research funding opportunity, and isn't endorsed, edited, or corrected by Spark.
The role of natural methane (CH4) oxidation by microbes (i.e. methanotrophs) in upland soils, as the second-largest global sink after chemical sinks [1], remains critically under-appreciated despite its potential to influence the global CH4 budget significantly [2,3]. The current estimate of the global CH4 soil sink is ~30 TgCH4 yr-1 but with a huge uncertainty (7 to >100 TgCH4 yr-1) [1,4,5]. Soil amendment [6–10], still in its early stages and tested on a small scale, has the potential to enhance the global soil CH4 sink, which can be realized only with precise quantification of the sink's magnitude on a large scale and a thorough understanding of how CH4 oxidation are interconnected with climatic and soil environmental variations. Conventional approaches, such as the process-based (PB) models [11,12] or pure data-driven methods [13,14] are limited by underrepresented soil microbial processes or lack of big datasets for robust training. The growing field of knowledge-guided machine learning (KGML, or hybrid modeling) [15,16] provides a promising modeling framework that combines the advantages of process understanding, machine-learning (ML) models, and multi-scale datasets, and demonstrates the successes in physical [16–20] and biogeochemical modeling [21–24].
The guiding science question of this project is: (1) what are the driving factors to change current soil CH4 oxidation and (2) what is the future potential of soil microbial CH4 sink? The key challenge is estimating the global soil CH4 sink spatial and temporal variability with limited data [13,25]. This requires a comprehensive approach integrating the recent data, scientific knowledge of CH4 oxidation, and advanced modeling. Our team is playing a leading role in modeling CH4 biogeochemistry. Leveraging existing KGML frameworks [22,24], we aim to refine CH4 sink estimates, deepen the understanding of driving mechanisms, and explore future sink potentials under various scenarios, including changes in climate, CH4 concentrations and soil properties of pH, moisture (SM), organic carbon (SOC) and inorganic nitrogen (SIN) (Fig. 1). Previous studies show that these variables are controlling soil CH4 oxidation, with responses varying by ecosystem [5,14,26,27]. Success of this project will be measured through the KGML's predictive accuracy against historical data and its utility in guiding experimental soil amendments, as evidenced by model/data download metrics and experimental validation.
Leveraging advanced observations, process-based modeling, and cutting-edge machine learning, this project will provide a solution to enhance the global soil CH4 sink. By deepening our understanding of the mechanisms driving soil CH4 sinks and pinpointing potential hot moments and spots across future scenarios, we seek to pave the way for methanotrophy enhancement via soil amendments.
With KGML solution, we will develop a user-friendly web-app and Python library (Detailed in Section 2.2.3) to (1) facilitate quick access to KGML pre-simulated regional CH4 potentials under various climate and soil conditions, and (2) enable out-of-scenario simulations based on customized soil amendment plans.
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