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Storm-scale Vortex Detection and Diagnosis. Real-Time Mining of Integrated Weather Information Meeting 20 September 2002 gstumpf@ou.edu. INTRODUCTION. The WSR-88D system has two independent algorithms for detecting rotation in severe thunderstorms:
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Storm-scale Vortex Detection and Diagnosis Real-Time Mining of Integrated Weather Information Meeting 20 September 2002 gstumpf@ou.edu
INTRODUCTION • The WSR-88D system has two independent algorithms for detecting rotation in severe thunderstorms: • Mesocyclone Detection Algorithm (MDA; Fall 2003) • Tornado Detection Algorithm (TDA; current). • Current NWS requirements include goals toward improving the probability of detection, false alarm rate, and lead time for tornado warnings.
INTRODUCTION • This talk focuses initially on our reasons for changing automated vortex detection techniques. • Description of current techniques • Examples of why a change is needed • NSSL’s proposed solution is a Vortex Detection and Diagnosis Algorithm (VDDA).
OLD RADAR PARADIGM • Early studies (1970s, 1980s) used the only available Doppler radar data at the time (mostly Central Oklahoma). • Mesocyclones and Tornado Vortex Signatures (TVS) are rotating columns of air in thunderstorms with specific spatial and strength criteria. • How do we define a “mesocyclone” or “TVS”? What is operationally-significant?
WSR-88D NETWORK COMPLETED • We have gathered a plethora of storm data from around the country. • Not all storms are like those observed in Central Oklahoma in the 70s and 80s. • Many storm and storm-scale vortex types can be associated with tornadoes • Field projects (e.g., VORTEX) have observed interesting new things too.
NEW ALGORITHMS DEVELOPED IN THEMID 1990s • On the radar, a “Big/strong vortex” does not always = “Tornado”, and vice versa. • The future algorithm should detect many storm-scale vortices of many sizes and strengths (including those < 1 km). • Decision makers and future algorithms should integrate all available information.
Mesocyclone Detection Algorithm • Designed to detect storm-scale (1-10 km diameter) 3D vortices. • High POD • Can track and trend incipient vortices through maturity, on to demise for complete time history. • Next, the NSSL MDA diagnoses and classifies the vortices. • To determine which are operationally significant. • Includes probabilistic output from Neural Networks.
Mesocyclone Detection Algorithm • Detects 2D features by searching for azimuthal shear “cores” • Ranks 2D features based on vortex strength thresholds • Vertically-associates 2D feature centroids to produce 3D detections. • Time-associates 3D centroids to produce 4D tracks, trends, and extrapolates for forecasts. • Classifies 4D detections as “mesocyclones” based on thresholds for base, depth, and strength.
Reflectivity Storm-relative Velocity 330o 330o Mesocyclone Mesocyclone 100 km 100 km 99.75 -4.5 -20.0 -20.5 22.0 21.5 19.5 17.5 99.50 -9.0 -22.0 -22.5 23.0 23.5 22.5 20.0 99.25 -12.0 -22.0 -25.5 24.0 24.5 24.0 20.5 99.00 -20.5 -25.0 -26.5 26.0 27.0 27.0 21.0 Shear Segments 98.75 -15.0 -25.0 -27.0 24.5 28.0 28.5 20.5 Range (km) 98.50 -7.5 -18.5 -23.5 21.5 29.5 30.5 21.0 98.25 -8.5 -19.5 -23.5 19.5 28.0 29.0 20.5 98.00 -5.5 -19.5 -23.0 14.5 27.5 28.5 20.0 97.75 -5.5 -11.0 -20.5 15.5 26.5 27.5 20.0 329.5o 330.5o 331.5o 332.5o 333.5o 334.5o 335.5o Azimuth
o 2.4 o Storm cloud 1.5 o 0.5 WSR-88D Mesocyclone or TVS Cloud base Vertical Association
Time Association Search Radii current detections a b c “first guess” previous position
Time Association Search Radii Associated current position previous position
Time Association Search Radii Associated current position 5-min Forecast position previous position
Tornado (TVS) Detection Algorithm • Very similar techniques to those used by MDA for 2D, 3D, and 4D detection and classification. • The main differences: • 2D feature detection based on gate-to-gate azimuthal shear • Choice of classification thresholds designed for stronger and more intense vortices
TVS Reflectivity Storm-relative Velocity 330o 330o TVS 100 km 100 km 99.75 -4.5 -20.0 -20.5 22.0 21.5 19.5 17.5 99.50 -9.0 -22.0 -22.5 23.0 23.5 22.5 20.0 99.25 -12.0 -22.0 -25.5 24.0 24.5 24.0 20.5 99.00 -20.5 -25.0 -26.5 26.0 27.0 27.0 21.0 Shear Segments 98.75 -15.0 -25.0 -27.0 24.5 28.0 28.5 20.5 Range (km) 98.50 -7.5 -18.5 -23.5 21.5 29.5 30.5 21.0 98.25 -8.5 -19.5 -23.5 19.5 28.0 29.0 20.5 98.00 -5.5 -19.5 -23.0 14.5 27.5 28.5 20.0 97.75 -5.5 -11.0 -20.5 15.5 26.5 27.5 20.0 329.5o 330.5o 331.5o 332.5o 333.5o 334.5o 335.5o Azimuth
MDA/TDA Limitations • Operates using single-radar radial velocity data. • Volume scan output 5-6 minutes older than first elevation scan (nearest surface). Reduces lead-time. • Very sensitive to artifacts in radar data • Dealiasing errors within storm and non-storm echo (anomalous propagation, ground clutter, chaff, clear air return, first trip “ring”) • Beam broadening, cone-of-silence, radar horizon • Vortex radius to beam width ratio, beam center offsets.
MDA/TDA Limitations • Reflectivity data used crudely to filter velocities associated with non-storm echo (single 0 dBZ threshold). • Heuristic threshold-based rules. • Azimuthal shear is associated with rotation, but also associated with boundaries (aligned parallel to radar radials) and other phenomenon.
THEVDDA • The next-generation Vortex Detection and Diagnosis Algorithm (VDDA) will be designed detect a broader spectrum of storm-scale vortices (including TVSs as well - merging MDA and TDA). • The VDDA will integrate new ideas learned from the new radar data, and data from radar reflectivity and other sensors (e.g. near-storm environment, satellites, etc.).
VDDA Considerations • Current algorithm paradigms are that a TVS is a gate-to-gate signature, and that a mesocyclone is not. • These assumptions do not hold true, especially at near and far ranges. • A “mesocyclone” at far ranges can exhibit gate-to-gate shear. • A tornado (or tornado cyclone) at near ranges can be sampled across more than two adjacent radar azimuths.
VDDA Considerations • The radar characteristics of the signature are a function of : • Vortex core radius to beamwidth ratio (i.e., distance and diameter of vortex). • Rotational Velocity • Offset between the radar beam centroid and the vortex centroid.
VDDA Considerations • Observational studies have shown that a variety of vortex scales (~0 to 10 km) can be associated with tornadoes, tornado cyclones, and mesocyclones. • Not all tornadoes are associated with the classic definition of a supercell • Supercells with small horizontal dimensions (mini-supercell). • Supercells with small vertical dimensions (low-topped supercells). • Tropical-cyclone mesocyclones (TC-mesos). • Bow echo tornadoes (along the leading edge).
F1 Colorado Mini-supercell F4 Oklahoma Supercell F1 Phoenix Mini-MINI-supercells Tornado location All at same Zoom factor!
Low-topped mini-supercells KLWX Sterling VA 30 April 1994
Not all mini-supercells are low-topped! Cone of Silence KPUX Pueblo 22 June 1995
Tropical Cyclone Mesos (low-topped and mini) KMLB Melbourne FL 11 Nov 94 T.C. Josephine
Here’s a TC-meso that is low-topped, but NOT mini! KEVX Eglin FL 4 Oct 1995 Hurricane Opal
Leading-edge tornadoes (shallow, short-lived) KLSX St. Louis 15 April 1994
Leading-edge tornadoes (shallow, short-lived) KLSX St. Louis 15 April 1994
VDDA feature extraction and forecasting • Develop new 2D and 3D vortex feature extractor utilizing testing on analytically-modeled vortices (with sampling limitations), boundaries, etc. • Least-squares shear derivatives (LLSD) • Statistics-based image processing (K-means) • Advanced motion estimation
LLSD • A linear least-squares fit of radial velocity bins in the neighborhood of a gate. • The number of data bins in the neighborhood depends on the range from the radar. • A “constant” kernel size means more data bins at close ranges with polar grids. • Fit to a linear combination of azimuth and range • Coefficient for azimuth is an estimate of azimuthal shear or rotation • Coefficient for range is an estimate of the radial shear or divergence/convergence.
Mesocyclone Convergence Radial Shear (LLSD) Simulated WSR-88D Velocity Azimuthal Shear (LLSD) CyclonicShear Divergence Anticyclonic Shear Linear Least Squares Derivative (simulated data)
Convergence Cyclonic Shear Divergence Linear Least Squares Derivative (actual data) Radial Shear (LLSD) Actual WSR-88D Velocity Azimuthal Shear (LLSD) Anticyclonic Shear Meso TVS
Simulated radial velocity data of a variety of phenomenon • Follows the method of Wood and Brown (1997). • Simulate symmetric vortices of varying strength, size, and radar sampling: • Varying Ranges: 2 to 200 km • Varying Rotational Velocities: 5 to 50 m/s • Varying Diameters: 0.25 to 6 km • Varying Beam/Vortex center offsets: 0.5o to +0.5o • Other “special” simulations: • Mesocyclones with rear-flank downdrafts. • Mesocyclones with embedded TVS. • Straight gust front boundaries
Storm-relative velocity Pure Rankine Vortex (Meso) Meso with Rear- Flank Downdraft Meso with embedded TVS Straight Gust Front
1 SRV with NSSL MDA 2D features Pure Rankine Vortex (Meso) Meso with Rear- Flank Downdraft Meso with embedded TVS Straight Gust Front
Azimuthal and Radial shear Pure Rankine Vortex (Meso) Meso with Rear- Flank Downdraft Meso with embedded TVS Straight Gust Front
Z X VDDA feature extraction and forecasting • Combine rotation and divergence fields from multiple radars into 3D mosaicked grid. • Rapidly-updating grid provides greater lead time. • Use multi-scale statistical texturing techniques (e.g., Kmeans) to extract 2D and 3D “cores” of rotation.
1 km x 1° grid Z X VDDA feature extraction and forecasting
VDDA feature extraction and forecasting • Diagnose properties of the rotation cores to determine probability that they are associated with severe weather or tornadoes. • Instead of centroid extrapolation, use statistical motion estimator to forecast vortex locations, could provide more lead time.
Multiple-source integration • Use information from multiple-radar reflectivity data (vertical profiles or VIL), near-storm environment, and IR satellite to filter out non-storm echo prior to rotation core extraction (instead of just 0 dBZ thresholds). • Integrate information from BWER, hook echo ID, boundary ID (which also uses LLSD), total lightning data (CG and IC), and near-storm environment data for vortex diagnoses (e.g., Neural Networks). LLSD Convergence
Current VDDA Work • Testing process to compute LLSD at different scales. • Simulated vortices with random noise (1000 trials), and various vortex diameters. • Compared to azimuthal shear.