Uncertainties in the observational reference: implications in skill assessment and model ranking of seasonal predictions
Ramon, J; Lledó, L; Ferro, CAT; et al.Doblas-Reyes, FJ
Date: 2023
Article
Journal
Quarterly Journal of the Royal Meteorological Society
Publisher
Wiley / Royal Meteorological Society
Abstract
The probabilistic skill of seasonal prediction systems is often inferred using reanalysis data,
assuming these benchmark observations to be error-free. However, an increasing number of studies
report non-negligible levels of uncertainty affecting reanalysis observations, especially when it comes
to variables like precipitation or ...
The probabilistic skill of seasonal prediction systems is often inferred using reanalysis data,
assuming these benchmark observations to be error-free. However, an increasing number of studies
report non-negligible levels of uncertainty affecting reanalysis observations, especially when it comes
to variables like precipitation or wind speed. We consider different possibilities to account for such
error in forecast quality assessment, either exploiting the newly produced ensemble reanalyses (e.g.
ERA5-EDA) or applying methodologies that use scores that take observational uncertainty into
account. We illustrate the benefits of employing ensemble reanalyses over traditional reanalyses,
and show how the true skill can be approximated, whatever the observational reference. We
ultimately emphasise the perils and quantify the error committed when the observational reference,
either reanalysis or point dataset, is selected arbitrarily for verifying a seasonal prediction system.
Mathematics and Statistics
Faculty of Environment, Science and Economy
Item views 0
Full item downloads 0