A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures

The United States Air Force’s 45th Weather Squadron provides wind warnings, including those for downbursts, at the Cape Canaveral Air Force Station and Kennedy Space Center (CCAFS/KSC). This study aims to provide a Random Forest model that classifies thunderstorms’ downburst and...

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Main Authors: Bruno L. Medina, Lawrence D. Carey, Corey G. Amiot, Retha M. Mecikalski, William P. Roeder, Todd M. McNamara, Richard J. Blakeslee
Format: Article
Language:English
Published: MDPI AG 2019-04-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/7/826
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spelling doaj-0aa69f440b6e411eab6e19ca51c8b7032020-11-25T01:56:26ZengMDPI AGRemote Sensing2072-42922019-04-0111782610.3390/rs11070826rs11070826A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar SignaturesBruno L. Medina0Lawrence D. Carey1Corey G. Amiot2Retha M. Mecikalski3William P. Roeder4Todd M. McNamara5Richard J. Blakeslee6Department of Atmospheric Science, The University of Alabama in Huntsville, Huntsville, AL 35899, USADepartment of Atmospheric Science, The University of Alabama in Huntsville, Huntsville, AL 35899, USADepartment of Atmospheric Science, The University of Alabama in Huntsville, Huntsville, AL 35899, USADepartment of Atmospheric Science, The University of Alabama in Huntsville, Huntsville, AL 35899, USA45th Weather Squadron, Patrick Air Force Base, FL 32925, USA45th Weather Squadron, Patrick Air Force Base, FL 32925, USANASA Marshall Space Flight Center, Huntsville, AL 35805, USAThe United States Air Force’s 45th Weather Squadron provides wind warnings, including those for downbursts, at the Cape Canaveral Air Force Station and Kennedy Space Center (CCAFS/KSC). This study aims to provide a Random Forest model that classifies thunderstorms’ downburst and null events using a 35-knot wind threshold to separate these two categories. The downburst occurrence was assessed using a dense network of wind observations around CCAFS/KSC. Eight dual-polarization radar signatures that are hypothesized to have physical implications for downbursts at the surface were automatically calculated for 209 storms and ingested into the Random Forest model. The Random Forest model predicted null events more correctly than downburst events, with a True Skill Statistic of 0.40. Strong downburst events were better classified than those with weaker wind magnitudes. The most important radar signatures were found to be the maximum vertically integrated ice and the peak reflectivity. The Random Forest model presented a more reliable performance than an automated prediction method based on thresholds of single radar signatures. Based on these results, the Random Forest method is suggested for continued operational development and testing.https://www.mdpi.com/2072-4292/11/7/826downburstsdual-polarization radarRandom Foreststatistical learning
collection DOAJ
language English
format Article
sources DOAJ
author Bruno L. Medina
Lawrence D. Carey
Corey G. Amiot
Retha M. Mecikalski
William P. Roeder
Todd M. McNamara
Richard J. Blakeslee
spellingShingle Bruno L. Medina
Lawrence D. Carey
Corey G. Amiot
Retha M. Mecikalski
William P. Roeder
Todd M. McNamara
Richard J. Blakeslee
A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures
Remote Sensing
downbursts
dual-polarization radar
Random Forest
statistical learning
author_facet Bruno L. Medina
Lawrence D. Carey
Corey G. Amiot
Retha M. Mecikalski
William P. Roeder
Todd M. McNamara
Richard J. Blakeslee
author_sort Bruno L. Medina
title A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures
title_short A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures
title_full A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures
title_fullStr A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures
title_full_unstemmed A Random Forest Method to Forecast Downbursts Based on Dual-Polarization Radar Signatures
title_sort random forest method to forecast downbursts based on dual-polarization radar signatures
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-04-01
description The United States Air Force’s 45th Weather Squadron provides wind warnings, including those for downbursts, at the Cape Canaveral Air Force Station and Kennedy Space Center (CCAFS/KSC). This study aims to provide a Random Forest model that classifies thunderstorms’ downburst and null events using a 35-knot wind threshold to separate these two categories. The downburst occurrence was assessed using a dense network of wind observations around CCAFS/KSC. Eight dual-polarization radar signatures that are hypothesized to have physical implications for downbursts at the surface were automatically calculated for 209 storms and ingested into the Random Forest model. The Random Forest model predicted null events more correctly than downburst events, with a True Skill Statistic of 0.40. Strong downburst events were better classified than those with weaker wind magnitudes. The most important radar signatures were found to be the maximum vertically integrated ice and the peak reflectivity. The Random Forest model presented a more reliable performance than an automated prediction method based on thresholds of single radar signatures. Based on these results, the Random Forest method is suggested for continued operational development and testing.
topic downbursts
dual-polarization radar
Random Forest
statistical learning
url https://www.mdpi.com/2072-4292/11/7/826
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