Verification against in-situ observations for Data-Driven Weather Prediction
Vivek Ramavajjala, Peetak P. Mitra

TL;DR
This paper introduces a new in-situ observation dataset from NOAA MADIS to evaluate data-driven weather prediction models in real-world operational settings, addressing the gap between simulation and actual performance.
Contribution
It provides a comprehensive, quality-controlled in-situ dataset for benchmarking DDWPs, enabling more realistic validation and comparison of weather prediction models.
Findings
Dataset facilitates real-world model validation
Highlights discrepancies between simulation and operational performance
Encourages development of more accurate, unbiased DDWPs
Abstract
Data-driven weather prediction models (DDWPs) have made rapid strides in recent years, demonstrating an ability to approximate Numerical Weather Prediction (NWP) models to a high degree of accuracy. The fast, accurate, and low-cost DDWP forecasts make their use in operational forecasting an attractive proposition, however, there remains work to be done in rigorously evaluating DDWPs in a true operational setting. Typically trained and evaluated using ERA5 reanalysis data, DDWPs have been tested only in a simulation, which cannot represent the real world with complete accuracy even if it is of a very high quality. The safe use of DDWPs in operational forecasting requires more thorough "real-world" verification, as well as a careful examination of how DDWPs are currently trained and evaluated. It is worth asking, for instance, how well do the reanalysis datasets, used for training,…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Climate variability and models · Hydrological Forecasting Using AI
