open access publication

Article, 2023

Implementation of a satellite-based tool for the quantification of CH4 emissions over Europe (AUMIA v1.0) – Part 1: forward modelling evaluation against near-surface and satellite data

Geoscientific Model Development, ISSN 1991-9603, 1991-959X, Volume 16, 21, Pages 6413-6431, 10.5194/gmd-16-6413-2023

Contributors

Vara-Vela, Angel Liduvino 0000-0002-4972-4486 (Corresponding author) [1] Karoff, Christoffer 0000-0003-2009-7965 [1] Benavente, Noelia Rojas 0000-0001-8431-6528 [2] Nascimento, Janaína P 0000-0002-1904-3751 [3] [4]

Affiliations

  1. [1] Aarhus University
  2. [NORA names: AU Aarhus University; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] Universidade de São Paulo
  4. [NORA names: Brazil; America, South];
  5. [3] Cooperative Institute for Research in Environmental Sciences
  6. [NORA names: United States; America, North; OECD];
  7. [4] Global Systems Laboratory
  8. [NORA names: United States; America, North; OECD]

Abstract

Abstract. Methane is the second-most important greenhouse gas after carbon dioxide and accounts for around 10 % of total European Union greenhouse gas emissions. Given that the atmospheric methane budget over a region depends on its terrestrial and aquatic methane sources, inverse modelling techniques appear as powerful tools for identifying critical areas that can later be submitted to emission mitigation strategies. In this regard, an inverse modelling system of methane emissions for Europe is being implemented based on the Weather Research and Forecasting (WRF) model: the Aarhus University Methane Inversion Algorithm (AUMIA) v1.0. The forward modelling component of AUMIA consists of the WRF model coupled to a multipurpose global database of methane anthropogenic emissions. To assure transport consistency during the inversion process, the backward modelling component will be based on the WRF model coupled to a Lagrangian particle dispersion module. A description of the modelling tools, input data sets, and 1-year forward modelling evaluation from 1 April 2018 to 31 March 2019 is provided in this paper. The a posteriori methane emission estimates, including a more focused inverse modelling for Denmark, will be provided in a second paper. A good general agreement is found between the modelling results and observations based on the TROPOspheric Monitoring Instrument (TROPOMI) onboard the Sentinel-5 Precursor satellite. Model–observation discrepancies for the summer peak season are in line with previous studies conducted over urban areas in central Europe, with relative differences between simulated concentrations and observational data in this study ranging from 1 % to 2 %. Domain-wide correlation coefficients and root-mean-square errors for summer months ranged from 0.4 to 0.5 and from 27 to 30 ppb, respectively. On the other hand, model–observation discrepancies for winter months show a significant overestimation of anthropogenic emissions over the study region, with relative differences ranging from 2 % to 3 %. Domain-wide correlation coefficients and root-mean-square errors in this case ranged from 0.1 to 0.4 and from 33 to 50 ppb, respectively, indicating that a more refined inverse analysis assessment will be required for this season. According to modelling results, the methane enhancement above the background concentrations came almost entirely from anthropogenic sources; however, these sources contributed with only up to 2 % to the methane total-column concentration. Contributions from natural sources (wetlands and termites) and biomass burning were not relevant during the study period. The results found in this study contribute with a new model evaluation of methane concentrations over Europe and demonstrate a huge potential for methane inverse modelling using improved TROPOMI products in large-scale applications.

Keywords

Aarhus, CH4 emissions, Central Europe, Denmark, Europe, European, Monitoring Instrument, Part 1, Sentinel-5 Precursor satellite, TROPOspheric Monitoring Instrument, Tropospheric Monitoring Instrument products, Weather Research and Forecasting, Weather Research and Forecasting model, algorithm, anthropogenic emissions, anthropogenic sources, area, assessment, atmospheric methane budget, background, background concentrations, biomass, biomass burning, budget, burn, carbon, carbon dioxide, cases, coefficient, components, concentration, consistency, contribution, correlation coefficient, critical areas, data, database, description, dioxide, discrepancy, dispersion module, emission, emission mitigation strategies, enhancement, error, evaluation, forecasting, gas, gas emissions, greenhouse, greenhouse gas emissions, greenhouse gases, identified critical areas, implementation, instrument, inverse model, inverse modeling system, inverse modeling technique, inversion, inversion algorithm, inversion process, methane, methane budget, methane concentration, methane emissions, methane enhancement, methane sources, mitigation strategies, model, model components, model evaluation, model results, model system, modeling techniques, modeling tools, model–observation discrepancy, modulation, months, natural sources, near-surface, observational data, observations, overestimation, parts, peak season, period, potential, process, production, quantification, quantification of CH4 emissions, region, results, root mean square error, satellite, satellite data, satellite-based tools, season, simulated concentrations, source, strategies, study, study period, study region, summer, summer months, summer peak season, system, technique, tools, transport, troposphere, urban areas, weather, winter, winter months

Funders

  • National Center for Atmospheric Research
  • Dutch Research Council
  • The Velux Foundations

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