journal article Open Access Nov 03, 2025

Building-resolving simulations of anthropogenic and biospheric CO 2 in the city of Zurich with GRAMM/GRAL

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Abstract
Abstract. Urban areas are significant contributors to global CO2 emissions, requiring detailed monitoring to support climate neutrality goals. This study presents a high-resolution modeling framework using GRAMM/GRAL, adapted for simulating atmospheric CO2 concentrations from anthropogenic and biospheric sources and sinks in Zurich, Switzerland. The framework resolves atmospheric concentrations at the building scale, and it employs a detailed inventory of anthropogenic emissions as well as biospheric fluxes, which were calculated using the Vegetation Photosynthesis and Respiration Model (VPRM). Instead of simulating the full dynamics of meteorology and atmospheric transport, the dispersion of CO2 is precomputed for more than 1000 static weather situations, from which the best match is selected for any point in time based on the simulated and measured meteorology in and around the city. In this way, time series over multiple years can be produced with minimal computational cost. Measurements from a dense network of mid-cost CO2 sensors are used to validate the model, demonstrating its capability to capture spatial and temporal CO2 variability. Applications to other cities are discussed, emphasizing the need for high-quality input data and tailored solutions for diverse urban environments. The work contributes to advancing urban CO2 monitoring strategies and their integration with policy frameworks.
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Published
Nov 03, 2025
Vol/Issue
25(21)
Pages
14387-14410
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Funding
Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung Award: IZSEZ0_22553
Horizon 2020 Award: 101037319
Cite This Article
Dominik Brunner, Ivo Suter, Leonie Bernet, et al. (2025). Building-resolving simulations of anthropogenic and biospheric CO 2 in the city of Zurich with GRAMM/GRAL. Atmospheric Chemistry and Physics, 25(21), 14387-14410. https://doi.org/10.5194/acp-25-14387-2025