Quasi-Operational Testing of Real-Time Storm-Longevity Prediction via Machine Learning

Author:

McGovern Amy1,Karstens Christopher D.2,Smith Travis3,Lagerquist Ryan4

Affiliation:

1. University of Oklahoma, Norman, Oklahoma

2. National Oceanic and Atmospheric Administration, National Weather Service, Storm Prediction Center, Norman, Oklahoma

3. Cooperative Institute for Mesoscale Meteorological Studies, National Severe Storms Laboratory, and University of Oklahoma, Norman, Oklahoma

4. University of Oklahoma, and Cooperative Institute for Mesoscale Meteorological Studies, Norman, Oklahoma

Abstract

Abstract Real-time prediction of storm longevity is a critical challenge for National Weather Service (NWS) forecasters. These predictions can guide forecasters when they issue warnings and implicitly inform them about the potential severity of a storm. This paper presents a machine-learning (ML) system that was used for real-time prediction of storm longevity in the Probabilistic Hazard Information (PHI) tool, making it a Research-to-Operations (R2O) project. Currently, PHI provides forecasters with real-time storm variables and severity predictions from the ProbSevere system, but these predictions do not include storm longevity. We specifically designed our system to be tested in PHI during the 2016 and 2017 Hazardous Weather Testbed (HWT) experiments, which are a quasi-operational naturalistic environment. We considered three ML methods that have proven in prior work to be strong predictors for many weather prediction tasks: elastic nets, random forests, and gradient-boosted regression trees. We present experiments comparing the three ML methods with different types of input data, discuss trade-offs between forecast quality and requirements for real-time deployment, and present both subjective (human-based) and objective evaluation of real-time deployment in the HWT. Results demonstrate that the ML system has lower error than human forecasters, which suggests that it could be used to guide future storm-based warnings, enabling forecasters to focus on other aspects of the warning system.

Funder

National Oceanic and Atmospheric Administration

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference57 articles.

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