Potential of 4d-VAR for exigent forecasting of severe weather
Ross N. Hoffman, John M. Henderson, Thomas Nehrkorn

TL;DR
This paper explores the use of 4d-VAR data assimilation technique for exigent forecasting of severe weather, aiming to improve early warnings and risk assessment of high-impact weather events.
Contribution
It demonstrates how 4d-VAR can be adapted for exigent forecasting by optimizing a damage proxy, providing a new approach to predict worst-case weather scenarios.
Findings
Prototype application to Hurricane Andrew case study
Development of specialized cost function for damage maximization
Potential to improve high-impact weather event forecasting
Abstract
Severe storms, tropical cyclones, and associated tornadoes, floods, lightning, and microbursts threaten life and property. Reliable, precise, and accurate alerts of these phenomena can trigger defensive actions and preparations. However, these crucial weather phenomena are difficult to forecast. The objective of this paper is to demonstrate the potential of 4d-VAR (four dimensional variational data assimilation) for exigent forecasting (XF) of severe storm precursors and to thereby characterize the probability of a worst-case scenario. 4d-VAR is designed to adjust the initial conditions (IC) of a numerical weather prediction model consistent with the uncertainty of the prior estimate of the IC while at the same time minimizing the misfit to available observations. For XF the same approach is taken but instead of fitting observations, a measure of damage or loss or an equivalent proxy is…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Climate variability and models · Wind and Air Flow Studies
