High-Resolution rapid refresh model data analytics for wildland fire weather assessment

Update Item Information
Publication Type dissertation
School or College College of Mines & Earth Sciences
Department Atmospheric Sciences
Author Blaylock, Brian Kenneth
Title High-Resolution rapid refresh model data analytics for wildland fire weather assessment
Date 2019
Description Threats associated with wildland fires are exacerbated by weather conditions conducive to rapid fire spread, such as strong winds, high temperatures, and low humidity. Incident Meteorologists rely on a variety of in situ and remote observations as well as numerical weather prediction model output to assess the potential influence atmospheric conditions will have on the fires. With the accelerating accumulation of available meteorological data, efficient computational solutions are needed to process, archive, and analyze the massive datasets in ways useful to Incident Meteorologists. This work demonstrates how object-based storage technology can be used to efficiently archive multiple years of the High-Resolution Rapid Refresh (HRRR) model output-a convection-allowing operational forecast system that produces 0-18 h forecasts. The archive developed for this work now supports air quality and wildland fire research activities at the University of Utah and hundreds of other researchers. The historical HRRR model output was used to provide information on model behavior and skill that may be of great value to Incident Meteorologists. An extensive set of empirical cumulative distributions for near-surface variables based on 3 years of model analyses was efficiently computed on the Open Science Grid-a high-throughput computing resource. The cumulative distributions are used to evaluate techniques that may be appropriate to discriminate between typical and atypical atmospheric conditions in a historical context for situational awareness of hazardous weather conditions like iv strong winds. Also, the skill of HRRR model lightning forecasts-which are important to firefighting operations because of the potential for convective outflows-was evaluated by comparing forecasted lightning threat with lightning observations from the Geostationary Lightning Mapper. Based on the fractions skill score, HRRR lightning forecast skill decreases rapidly after the first 2 hours of model integration with better skill for longer lead times in the afternoon and evening hours in the western and central United States. With case studies of recent wildland fires, this dissertation illustrates how historical model data and objective evaluation of lightning forecast performance can help Incident Meteorologists identify hazardous weather conditions and interpret deterministic lightning forecasts from the HRRR model.
Type Text
Publisher University of Utah
Dissertation Name Doctor of Philosophy
Language eng
Rights Management (c) Brian Kenneth Blaylock
Format Medium application/pdf
ARK ark:/87278/s63ns79g
Setname ir_etd
ID 1724231
Reference URL https://collections.lib.utah.edu/ark:/87278/s63ns79g
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