Storm-Based Probabilistic Hail Forecasting with Machine Learning Applied to Convection-Allowing EnsemblesSource: Weather and Forecasting:;2017:;volume( 032 ):;issue: 005::page 1819Author:Gagne, David John;McGovern, Amy;Haupt, Sue Ellen;Sobash, Ryan A.;Williams, John K.;Xue, Ming
DOI: 10.1175/WAF-D-17-0010.1Publisher: American Meteorological Society
Abstract: AbstractForecasting severe hail accurately requires predicting how well atmospheric conditions support the development of thunderstorms, the growth of large hail, and the minimal loss of hail mass to melting before reaching the surface. Existing hail forecasting techniques incorporate information about these processes from proximity soundings and numerical weather prediction models, but they make many simplifying assumptions, are sensitive to differences in numerical model configuration, and are often not calibrated to observations. In this paper a storm-based probabilistic machine learning hail forecasting method is developed to overcome the deficiencies of existing methods. An object identification and tracking algorithm locates potential hailstorms in convection-allowing model output and gridded radar data. Forecast storms are matched with observed storms to determine hail occurrence and the parameters of the radar-estimated hail size distribution. The database of forecast storms contains information about storm properties and the conditions of the prestorm environment. Machine learning models are used to synthesize that information to predict the probability of a storm producing hail and the radar-estimated hail size distribution parameters for each forecast storm. Forecasts from the machine learning models are produced using two convection-allowing ensemble systems and the results are compared to other hail forecasting methods. The machine learning forecasts have a higher critical success index (CSI) at most probability thresholds and greater reliability for predicting both severe and significant hail.
|
Collections
Show full item record
contributor author | Gagne, David John;McGovern, Amy;Haupt, Sue Ellen;Sobash, Ryan A.;Williams, John K.;Xue, Ming | |
date accessioned | 2018-01-03T11:03:19Z | |
date available | 2018-01-03T11:03:19Z | |
date copyright | 8/11/2017 12:00:00 AM | |
date issued | 2017 | |
identifier other | waf-d-17-0010.1.pdf | |
identifier uri | http://138.201.223.254:8080/yetl1/handle/yetl/4246647 | |
description abstract | AbstractForecasting severe hail accurately requires predicting how well atmospheric conditions support the development of thunderstorms, the growth of large hail, and the minimal loss of hail mass to melting before reaching the surface. Existing hail forecasting techniques incorporate information about these processes from proximity soundings and numerical weather prediction models, but they make many simplifying assumptions, are sensitive to differences in numerical model configuration, and are often not calibrated to observations. In this paper a storm-based probabilistic machine learning hail forecasting method is developed to overcome the deficiencies of existing methods. An object identification and tracking algorithm locates potential hailstorms in convection-allowing model output and gridded radar data. Forecast storms are matched with observed storms to determine hail occurrence and the parameters of the radar-estimated hail size distribution. The database of forecast storms contains information about storm properties and the conditions of the prestorm environment. Machine learning models are used to synthesize that information to predict the probability of a storm producing hail and the radar-estimated hail size distribution parameters for each forecast storm. Forecasts from the machine learning models are produced using two convection-allowing ensemble systems and the results are compared to other hail forecasting methods. The machine learning forecasts have a higher critical success index (CSI) at most probability thresholds and greater reliability for predicting both severe and significant hail. | |
publisher | American Meteorological Society | |
title | Storm-Based Probabilistic Hail Forecasting with Machine Learning Applied to Convection-Allowing Ensembles | |
type | Journal Paper | |
journal volume | 32 | |
journal issue | 5 | |
journal title | Weather and Forecasting | |
identifier doi | 10.1175/WAF-D-17-0010.1 | |
journal fristpage | 1819 | |
journal lastpage | 1840 | |
tree | Weather and Forecasting:;2017:;volume( 032 ):;issue: 005 | |
contenttype | Fulltext |