We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Next-Day Prediction of Tornadoes Using Convection-Allowing Models with 1-km Horizontal Grid Spacing.
- Authors
Sobash, Ryan A.; Schwartz, Craig S.; Romine, Glen S.; Weisman, Morris L.
- Abstract
Explicit attributes of convective storms within convection-allowing model (CAM) forecasts are routinely used as surrogates for convective weather hazards. The ability of 3- and 1-km horizontal grid spacing CAM forecasts to anticipate tornadoes using surrogates was examined for 497 severe weather events. Five diagnostics were used as tornado surrogates, including 0–1 km above ground level (AGL) updraft helicity (UH01), 2–5 km AGL UH (UH25), 0–3 km AGL UH (UH03), and 500 m and 1 km AGL relative vorticity. Next-day surrogate severe probability forecasts (SSPFs) for tornadoes were produced by thresholding the diagnostics and smoothing the resulting binary field. SSPFs were verified against SPC tornado reports and NWS tornado warnings. The 1-km SSPFs were more skillful than 3-km SSPFs across all diagnostics with statistically significant differences in skill that were largest on the mesoscale. UH01 outperformed the other four diagnostics, in part because UH01 best represented regional variations in observed tornado report totals. Filtering forecasts based on the significant tornado parameter benefited the 3-km SSPFs much more than the 1-km SSPFs, with filtered 3-km SSPFs having similar skill to the filtered 1-km SSPFs. SSPFs verified with a combination of tornado warnings and reports were more skillful than when verified against reports alone, indicating that CAMs can better predict intense low-level rotation events than tornadoes. When verifying all severe hazards, UH25 SSPFs were more skillful than UH01 SSPFs; UH01 and UH25 appear to be the most useful pair for anticipating tornadoes and the combined severe threat on a given forecast day.
- Subjects
TORNADOES; WEATHER hazards; SEVERE storms; CYCLOGENESIS; WARNINGS; VORTEX motion; WEATHER forecasting
- Publication
Weather & Forecasting, 2019, Vol 34, Issue 4, p1117
- ISSN
0882-8156
- Publication type
Article
- DOI
10.1175/WAF-D-19-0044.1