2019
DOI: 10.1175/mwr-d-18-0266.1
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Explicit Ensemble Prediction of Hail in 19 May 2013 Oklahoma City Thunderstorms and Analysis of Hail Growth Processes with Several Multimoment Microphysics Schemes

Abstract: Hail forecast evaluations provide important insight into microphysical treatment of rimed ice. In this study we evaluate explicit 0–90-min EnKF-based storm-scale (500-m horizontal grid spacing) hail forecasts for a severe weather event that occurred in Oklahoma on 19 May 2013. Forecast ensembles are run using three different bulk microphysics (MP) schemes: the Milbrandt–Yau double-moment scheme (MY2), the Milbrandt–Yau triple-moment scheme (MY3), and the NSSL variable density-rimed ice double-moment scheme (NS… Show more

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Cited by 18 publications
(22 citation statements)
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References 86 publications
(96 reference statements)
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“…Gagne et al, ; Labriola et al, ). While not yet widely applied operationally, both approaches do appear to provide a reasonable predictions of hail size (Gagne et al, ; Jewell & Brimelow, ; Labriola et al, ). One example is the application of HAILCAST that has been implemented in high‐resolution WRF model output based on simulated storms (Adams‐Selin & Ziegler, ).…”
Section: Environmental Forecasting Parameters and Climatologymentioning
confidence: 99%
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“…Gagne et al, ; Labriola et al, ). While not yet widely applied operationally, both approaches do appear to provide a reasonable predictions of hail size (Gagne et al, ; Jewell & Brimelow, ; Labriola et al, ). One example is the application of HAILCAST that has been implemented in high‐resolution WRF model output based on simulated storms (Adams‐Selin & Ziegler, ).…”
Section: Environmental Forecasting Parameters and Climatologymentioning
confidence: 99%
“…Brimelow et al, ; Brimelow et al, ; Jewell & Brimelow, ), or alternatively using explicit microphysics to forecast graupel or hail size from simulated updrafts (e.g. Gagne et al, ; Labriola et al, ). While not yet widely applied operationally, both approaches do appear to provide a reasonable predictions of hail size (Gagne et al, ; Jewell & Brimelow, ; Labriola et al, ).…”
Section: Environmental Forecasting Parameters and Climatologymentioning
confidence: 99%
“…Hail size information can be extracted from the CAM predicted microphysical state variables. The Thompson hail size algorithm (Thompson et al 2018;Gagne et al 2019) uses hail PSDs predicted by MP schemes to approximate the maximum observable hail size at each grid point; variants of this method have been used to verify forecasts and understand process-level hail growth and decay processes (Milbrandt and Yau 2006a;Snook et al 2016;Labriola et al 2017Labriola et al ,2019Luo et al 2018). Surveys conducted during the SFE indicate that forecasters find the additional information provided by explicit hail size forecasts useful relative to surrogate fields (e.g., UH) (Gallo et al 2017).…”
Section: Introductionmentioning
confidence: 99%
“…The U.S. Next Generation Weather Radar (NEXRAD) system (Crum et al 1993) is an observational platform capable of capturing the evolution of severe hail within thunderstorms in three dimensions. Radar-derived hail products have been used to verify hail forecasts in several recent studies (e.g., Gagne et al 2015Gagne et al , 2017Snook et al 2016;Labriola et al 2017Labriola et al , 2019Luo et al 2017Luo et al , 2018 and are often used operationally to diagnose maximum hail size (Cintineo et al 2012). Radar-derived hail proxies, such as hydrometeor classification algorithm (HCA; Park et al 2009;Putnam et al 2017) output, are preferable to surface reports because they produce high-resolution surface hail size estimates that are not subject to population biases or gaps in data over rural areas (Cintineo et al 2012).…”
Section: Introductionmentioning
confidence: 99%
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