Analysis of mesoscale forecasts using ensemble methods
Markus Gross

TL;DR
This paper introduces a computationally efficient ensemble method for mesoscale weather forecasts that assesses forecast confidence and probabilities using diagnostics like confidence intervals, extrema detection, and observation constraints.
Contribution
It presents a novel ensemble approach that requires less computation and provides probabilistic diagnostics for mesoscale forecasts, enhancing decision-making confidence.
Findings
Diagnostics depend on ensemble size and domain
Confidence intervals effectively represent forecast uncertainty
Observation constraints improve ensemble reliability
Abstract
Mesoscale forecasts are now routinely performed as elements of operational forecasts and their outputs do appear convincing. However, despite their realistic appearance at times the comparison to observations is less favorable. At the grid scale these forecasts often do not compare well with observations. This is partly due to the chaotic system underlying the weather. Another key problem is that it is impossible to evaluate the risk of making decisions based on these forecasts because they do not provide a measure of confidence. Ensembles provide this information in the ensemble spread and quartiles. However, running global ensembles at the meso or sub mesoscale involves substantial computational resources. National centers do run such ensembles, but the subject of this publication is a method which requires significantly less computation. The ensemble enhanced mesoscale system…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Climate variability and models · Atmospheric and Environmental Gas Dynamics
