High-resolution weather maps are fundamental components of early warning systems, since they
enable the (near) real-time tracking of extreme weather events. In this context, crowd-sourced weather networks
producing low-fidelity observations are often the only type of data available at local (e.g. neighborhood) scales.
In this work, we demonstrate that we can provide such maps by combining high-fidelity official weather data with
low-fidelity crowd-sourced weather data and high-resolution covariate information. Because the crowd-sourced
data contains significant bias and noise, we develop an approach to include a bias budget and noise budget in
the multi-fidelity Bayesian spatial data analysis. The weights of the different components of these bias and noise
budgets are tuned to the data set. We apply this approach to 24 hours of weather data in the Netherlands, for a
day that had a “code orange” (i.e. “be prepared for extreme weather with high risk of impact”) weather warning
for heavy precipitation. From our analysis, we see a significant – qualitative and quantitative – synergy effect
when introducing low-fidelity data and high-resolution covariate information.
Jouke H. S. de Baar, Irene Garcia-Marti, Gerard van der Schrier. Spatial regression of multi-fidelity meteorological observations using a proxy-based measurement error model
Journal: Advances in Science & Research, Year: 2023, doi: https://doi.org/10.5194/asr-20-49-2023