The tornado probability algorithm: A probabilistic machine learning tornadic circulation detection algorithm

A new probabilistic tornado detection algorithm was developed to potentially replace the operational tornado detection algorithm (TDA) for the WSR-88D radar network. The tornado probability algorithm (TORP) uses a random forest machine learning technique to estimate a probability of tornado occurrence based on single-radar data, and is trained on 166 145 data points derived from 0.58-tilt radar data and storm reports from 2011 to 2016, of which 10.4% are tornadic. A variety of performance evaluation metrics show a generally good model performance for discriminating between tornadic and nontornadic points. When using a 50% probability threshold to decide whether the model is predicting a tornado or not, the probability of detection and false alarm ratio are 57% and 50%, respectively, showing high skill by several metrics and vastly outperforming the TDA. The model weaknesses include false alarms associated with poor-quality radial velocity data and greatly reduced performance when used in the western United States. Overall, TORP can provide real-time guidance for tornado warning decisions, which can increase forecaster confidence and encourage swift decision-making. It has the ability to condense a multitude of radar data into a concise object-based information readout that can be displayed in visualization software used by the National Weather Service, core partners, and researchers.

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Author Sandmæl, Thea N.
Smith, Brandon R.
Reinhart, Anthony E.
Schick, Isaiah M.
Ake, Marcus C.
Madden, Jonathan G.
Steeves, Rebecca B.
Williams, Skylar S.
Elmore, Kimberly L.
Meyer, Tiffany C.
Publisher UCAR/NCAR - Library
Publication Date 2023-03-01T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2023-08-18T18:28:18.912932
Metadata Record Identifier edu.ucar.opensky::articles:26211
Metadata Language eng; USA
Suggested Citation Sandmæl, Thea N., Smith, Brandon R., Reinhart, Anthony E., Schick, Isaiah M., Ake, Marcus C., Madden, Jonathan G., Steeves, Rebecca B., Williams, Skylar S., Elmore, Kimberly L., Meyer, Tiffany C.. (2023). The tornado probability algorithm: A probabilistic machine learning tornadic circulation detection algorithm. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d7k93chx. Accessed 19 June 2025.

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