A Learning Based Approach for Uncertainty Analysis in Numerical Weather Prediction Models
Azam Moosavi, Vishwas Rao, Adrian Sandu

TL;DR
This paper employs machine learning to analyze and reduce uncertainty in numerical weather prediction models by estimating errors and identifying influential physical processes affecting forecast accuracy.
Contribution
It introduces a novel approach using machine learning to quantify model errors and determine key physical processes impacting forecast uncertainty in weather models.
Findings
Machine learning effectively estimates systematic forecast errors.
Identification of physical processes most affecting precipitation forecast accuracy.
Potential for improving weather prediction reliability.
Abstract
Complex numerical weather prediction models incorporate a variety of physical processes, each described by multiple alternative physical schemes with specific parameters. The selection of the physical schemes and the choice of the corresponding physical parameters during model configuration can significantly impact the accuracy of model forecasts. There is no combination of physical schemes that works best for all times, at all locations, and under all conditions. It is therefore of considerable interest to understand the interplay between the choice of physics and the accuracy of the resulting forecasts under different conditions. This paper demonstrates the use of machine learning techniques to study the uncertainty in numerical weather prediction models due to the interaction of multiple physical processes. The first problem addressed herein is the estimation of systematic model…
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