Quantitative Characterization of Hyper-Local Atmospheric Greenhouse Gas Sources
- Univ. of Utah, Salt Lake City, UT (United States)
Atmospheric greenhouse gas (GHG) emissions are often characterized using stationary, tower-based sensors. Ground based sensors reside in the turbulent boundary layer and are subject to intense concentration impulses from hyper-local (<100m) point sources of emissions. These high frequency spikes are often filtered out in broader emission flux studies, losing valuable information about how hyper-local sources influence receptors. In this study, we investigated how empirical atmospheric data can be used to locate and quantify a concurrently measured hyper-local point source in a dense urban setting. An eddy covariance style tower and a low-cost sensor tower were deployed in various locations around an urban, hyper-local CO2/CH4 emissions source (a continuously measured restaurant exhaust vent). A model using different processing and statistical techniques was built to examine the most effective procedures for source isolation, directional location, and emission quantification. Using excess concentrations above a minimum baseline, we identify the source using bivariate polar plots and quantify the relationship between source size, receptor distance, and statistical proxies. Furthermore, we find that varying statistical thresholds allows for identification of less influential sources which are drowned out by larger or closer sources. Finally, we show that large sources can be effectively characterized using low-cost sensors, a valuable outcome informing how networks for monitoring larger areas could be implemented. This work may provide a basis for source identification and monitoring protocols for networks that feature sensors influenced by hyper-local point sources, subject to site-specific assumptions.
- Research Organization:
- Univ. of Utah, Salt Lake City, UT (United States)
- Sponsoring Organization:
- USDOE Office of Fossil Energy and Carbon Management (FECM)
- DOE Contract Number:
- FC26-05NT42591
- OSTI ID:
- 1989851
- Report Number(s):
- DOE-UU-FC26-05NT42591-1
- Resource Relation:
- Related Information: Meyer, A.G., & McPherson, B.J. (2020). Utah Hyper-Local Greenhouse Gas Source. NETL Energy Data eXchange. DOI: 10.18141/1771863. https://edx.netl.doe.gov/dataset/utah-hyper-local-urban-greenhouse-gas-source.
- Country of Publication:
- United States
- Language:
- English
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