Gå til innhold

Vitenskapelig artikkel

Intuitively tuned elastic bias correction of atmospheric inversion using Gaussian process prior: Application to accidental radioactive emissions

Antonie Brožová, Václav Šmídl, Ondřej Tichý, Nikolaos Evangeliou

Precise estimation of atmospheric pollutant releases is crucial for assessing the impact of environmental accidents. Atmospheric inversion typically relies on a linear model with a source–receptor sensitivity (SRS) matrix, which may contain significant errors or even completely fail to capture the real magnitude of the event. We propose a correction of the SRS matrix formulated as slight shifts in the observation locations, effectively warping the sensitivity field. To constrain these shifts and ensure data-driven corrections, we model them using a Gaussian process prior. This prior not only enforces smoothness and sparsity, but also enables posterior prediction of shifts at previously unseen locations. This key feature provides a mechanism for hyper-parameter tuning: the predicted shift field can be visualized on a map and assessed by an expert. We present a user-friendly framework that combines a Bayesian inversion model with correction and a tuning algorithm based on L-curve-like plots and the maps of predicted shifts. The proposed method is demonstrated on three case studies: the ETEX-I experiment, the 137Cs emissions during the 2020 Chernobyl wildfires, and the 106Ru release in 2017.

Publikasjonsdetaljer

Tidsskrift: Journal of Hazardous Materials, vol. 506, 2026

Internasjonalt standardnummer:
Skriv ut: 0304-3894
Online: 1873-3336

Vitenskapelig artikkel

År: 2026

Vitenskapelig verdi: Unassigned

Språk: Engelsk

This site is registered on wpml.org as a development site. Switch to a production site key to remove this banner.