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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Related Dataset #1 : NOAA Next Generation Radar (NEXRAD) Level II Base Data

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Publication Date 2023-03-01T00:00:00
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Metadata Date 2025-07-11T15:54:06.346113
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Suggested Citation . (2023). The tornado probability algorithm: A probabilistic machine learning tornadic circulation detection algorithm. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7k93chx. Accessed 01 January 2026.

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