Systematic assessment of the effects of space averaging and time averaging on weather forecast skill
Ying Li, Samuel N. Stechmann

TL;DR
This study systematically evaluates how spatial and temporal averaging affect weather forecast skill using operational data, revealing that averaging's effectiveness varies geographically and is often less impactful than expected.
Contribution
It provides the first comprehensive analysis of averaging effects on forecast skill across multiple variables, locations, and lead times using modern operational data.
Findings
Time averaging is most effective near coastlines for temperature.
Spatial averaging shows no clear pattern for precipitation.
Time averaging often yields minimal improvements in forecast skill.
Abstract
Intuitively, one would expect a more skillful forecast if predicting weather averaged over one week instead of the weather averaged over one day, and similarly for different spatial averaging areas. However, there are few systematic studies of averaging and forecast skill with modern forecasts, and it is therefore not clear how much improvement in forecast performance is produced via averaging. Here we present a direct investigation of averaging effects, based on data from operational numerical weather forecasts. Data is analyzed for precipitation and surface temperature, for lead times of roughly 1 to 7 days, and for time- and space-averaging diameters of 1 to 7 days and 100 to 4500 km, respectively. For different geographic locations, the effects of time- or space-averaging can be different, and while no clear geographical pattern is seen for precipitation, a clear spatial pattern is…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Climate variability and models
