Location: Pasture Systems & Watershed Management Research
Title: Modeling N2O emissions with remotely sensed variables using machine learningAuthor
![]() |
Adler, Paul |
![]() |
NGUYEN, HAI - Pennsylvania State University |
![]() |
RAU, BENJAMIN - Us Forest Service (FS) |
![]() |
Dell, Curtis |
|
Submitted to: Environmental Research Communications
Publication Type: Peer Reviewed Journal Publication Acceptance Date: 8/16/2024 Publication Date: 9/10/2024 Citation: Adler, P.R., Nguyen, H., Rau, B.M., Dell, C.J. 2024. Modeling N2O emissions with remotely sensed variables using machine learning. Environmental Research Communications. 6(9). Article 091004. https://doi.org/10.1088/2515-7620/ad707c. DOI: https://doi.org/10.1088/2515-7620/ad707c Interpretive Summary: Nitrous oxide is the largest greenhouse gas source from crop production and difficult to characterize at the farm level. We compared two sources of data to develop machine learning models to characterize soil N2O emissions, intensive site measurements with remotely available data. We found that the machine learning model built on remotely sensed variables performed as well as when direct site level measurements were available. This finding supports the potential of using remotely sensed data to build machine learning models to characterize soil N2O emissions without the need for intensive soil measurements for farm level assessments. Technical Abstract: Nitrous oxide is the largest source of greenhouse gas emissions from crop production. There is significant interest in targeting marginal lands for growing biomass crops, however little information is available on how this will affect N2O emissions from these crops. Furthermore, to characterize N2O emission at the farm level to quantify mitigation using measurements is time intensive, costly, and impractical. We selected a highly diverse watershed varying in soil texture and topography to compare two approaches for modeling soil N2O emissions using machine learning, intensive measurements of soil environment and climate variables, with the other only using remotely sensed variables. We confirmed that soil nitrogen was the most important variable followed by soil environment as influence by soil characteristic, topography, and climate. We also found that the machine learning model built on remotely sensed variables performed as well as when direct site level measurements were available. This finding supports the potential of using remotely sensed data to build machine learning models to characterize soil N2O emissions without the need for intensive soil measurements for entity level assessments. |
