4.7 Article

Enhanced monitoring of atmospheric methane from space over the Permian basin with hierarchical Bayesian inference

Journal

ENVIRONMENTAL RESEARCH LETTERS
Volume 17, Issue 6, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1748-9326/ac7062

Keywords

methane emissions; Bayesian inference; remote sensing; atmospheric chemistry; climate change

Funding

  1. Shell Research Ltd through the Cambridge Centre for Doctoral Training in Data Intensive Science [ST/P006787/1]

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Methane, a powerful greenhouse gas, has a higher radiative forcing and shorter atmospheric lifetime than carbon dioxide. By using a statistical model and nitrogen dioxide concentration data from TROPOMI, values of methane columns can be efficiently predicted, expanding the observation coverage and aiding in estimating methane emission rates.
Methane is a strong greenhouse gas, with a higher radiative forcing per unit mass and shorter atmospheric lifetime than carbon dioxide. The remote sensing of methane in regions of industrial activity is a key step toward the accurate monitoring of emissions that drive climate change. Whilst the TROPOspheric Monitoring Instrument (TROPOMI) on board the Sentinal-5P satellite is capable of providing daily global measurement of methane columns, data are often compromised by cloud cover. Here, we develop a statistical model which uses nitrogen dioxide concentration data from TROPOMI to efficiently predict values of methane columns, expanding the average daily spatial coverage of observations of the Permian basin from 16% to 88% in the year 2019. The addition of predicted methane abundances at locations where direct observations are not available will support inversion methods for estimating methane emission rates at shorter timescales than is currently possible.

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