ESSIC/CISESS Scientist and University of Maryland Professor, Dr. Jonathan Poterjoy, has a new article published in the June issue of the Monthly Weather Review on some of the specialized data assimilation he has been working on with AOML and EMC.
Data assimilation for atmospheric models is the process of using incomplete and error-prone environmental measurements to provide a holistic picture of natural systems. Numerical predictions of Earth’s atmosphere are used to represent known physical processes governing the evolution of atmospheric flow, clever statistical methods to construct a complete model-representation of the true atmosphere from incomplete measurements along with assumptions of the shape of error distributions for variables that are input into models for generating predictions. This undertaking was further complicated by the need to consider how an error in one variable (e.g., temperature in Washington DC) is related to all other variables that characterize Earth’s atmosphere (e.g., wind, moisture, and pressure across the planet).
In this article, Poterjoy examines the fidelity of error assumptions made by regional weather prediction systems using a novel technique that avoids common approximations. This study used a month-long period and extensive forecast region that captured numerous high-impact tropical cyclones from the 2017 hurricane season (see figure), including Hurricanes Harvey and Maria. Findings reveal practical and measured improvements in operational prediction that can be achieved by simply adopting a more sophisticated specification of uncertainty than is currently used at environmental prediction centers worldwide. The findings of this study motivate further research on new methods of performing data assimilation for atmospheric models.
To access the article, click here: “Implications of Multivariate Non-Gaussian Data Assimilation for Multiscale Weather Prediction”.