Prototype of a Warn-on-Forecast System for Smoke (WoFS-Smoke)

Author:

Jones Thomas123,Ahmadov Ravan45,James Eric45,Pereira Gabriel6,Freitas Saulo7,Grell Georg5

Affiliation:

1. a Cooperative Institute for Severe and High-Impact Weather Research and Operations, University of Oklahoma, Norman, Oklahoma

2. b NOAA/National Severe Storms Laboratory, Norman, Oklahoma

3. c School of Meteorology, University of Oklahoma, Norman, Oklahoma

4. d Cooperative Institute for Research in Environmental Sciences, University of Colorado, Boulder, Colorado

5. e NOAA/OAR/Global Systems Laboratory, Boulder, Colorado

6. f Federal University of São João del-Rei, São João del-Rei, Brazil

7. g USRA/GESTAR and NASA Goddard Space Flight Center, Greenbelt, Maryland

Abstract

Abstract This research begins the process of creating an ensemble-based forecast system for smoke aerosols generated from wildfires using a modified version of the National Severe Storms Laboratory (NSSL) Warn-on-Forecast System (WoFS). The existing WoFS has proven effective in generating short-term (0–3 h) probabilistic forecasts of high-impact weather events such as storm rotation, hail, severe winds, and heavy rainfall. However, it does not include any information on large smoke plumes generated from wildfires that impact air quality and the surrounding environment. The prototype WoFS-Smoke system is based on the deterministic High-Resolution Rapid Refresh-Smoke (HRRR-Smoke) model. HRRR-Smoke runs over a continental United States (CONUS) domain with a 3-km horizontal grid spacing, with hourly forecasts out to 48 h. The smoke plume injection algorithm in HRRR-Smoke is integrated into the WoFS forming WOFS-Smoke so that the advantages of the rapidly cycling, ensemble-based WoFS can be used to generate short-term (0–3 h) probabilistic forecasts of smoke. WoFS-Smoke forecasts from three wildfire cases during 2020 show that the system generates a realistic representation of wildfire smoke when compared against satellite observations. Comparison of smoke forecasts with radar data show that forecast smoke reaches higher levels than radar-detected debris, but exceptions to this are noted. The radiative effect of smoke on surface temperature forecasts is evident, which reduces forecast errors compared to experiments that do not include smoke.

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference73 articles.

1. Using VIIRS Fire Radiative Power data to simulate biomass burning emissions, plume rise and smoke transport in a real-time air quality modeling system;Ahmadov, R.,2017

2. Development of the High-Resolution Rapid Refresh Ensemble (HRRRE);Alexander, C. R.,2018

3. Spatially and temporally varying adaptive covariance inflation for ensemble filters;Anderson, J. L.,2009

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5. A North American hourly assimilation and model forecast cycle: The Rapid Refresh;Benjamin, S. G.,2016

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