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Dive into the research topics where Travis M. Smith is active.

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Featured researches published by Travis M. Smith.


Weather and Forecasting | 2007

The Warning Decision Support System–Integrated Information

Valliappa Lakshmanan; Travis M. Smith; Gregory J. Stumpf; Kurt Hondl

Abstract The Warning Decision Support System–Integrated Information (WDSS-II) is the second generation of a system of tools for the analysis, diagnosis, and visualization of remotely sensed weather data. WDSS-II provides a number of automated algorithms that operate on data from multiple radars to provide information with a greater temporal resolution and better spatial coverage than their currently operational counterparts. The individual automated algorithms that have been developed using the WDSS-II infrastructure together yield a forecasting and analysis system providing real-time products useful in severe weather nowcasting. The purposes of the individual algorithms and their relationships to each other are described, as is the method of dissemination of the created products.


Journal of Applied Meteorology and Climatology | 2007

An Automated Technique to Quality Control Radar Reflectivity Data

Valliappa Lakshmanan; Angela Fritz; Travis M. Smith; Kurt Hondl; Gregory J. Stumpf

Abstract Echoes in radar reflectivity data do not always correspond to precipitating particles. Echoes on radar may result from biological targets such as insects, birds, or wind-borne particles; from anomalous propagation or ground clutter; or from test and interference patterns that inadvertently seep into the final products. Although weather forecasters can usually identify and account for the presence of such contamination, automated weather-radar algorithms are drastically affected. Several horizontal and vertical features have been proposed to discriminate between precipitation echoes and echoes that do not correspond to precipitation. None of these features by themselves can discriminate between precipitating and nonprecipitating areas. In this paper, a neural network is used to combine the individual features, some of which have already been proposed in the literature and some of which are introduced in this paper, into a single discriminator that can distinguish between “good” and “bad” echoes (i...


Weather and Forecasting | 2006

A Real-Time, Three-Dimensional, Rapidly Updating, Heterogeneous Radar Merger Technique for Reflectivity, Velocity, and Derived Products

Valliappa Lakshmanan; Travis M. Smith; Kurt Hondl; Gregory J. Stumpf; Arthur Witt

With the advent of real-time streaming data from various radar networks, including most Weather Surveillance Radars-1988 Doppler and several Terminal Doppler Weather Radars, it is now possible to combine data in real time to form 3D multiple-radar grids. Herein, a technique for taking the base radar data (reflectivity and radial velocity) and derived products from multiple radars and combining them in real time into a rapidly updating 3D merged grid is described. An estimate of that radar product combined from all the different radars can be extracted from the 3D grid at any time. This is accomplished through a formulation that accounts for the varying radar beam geometry with range, vertical gaps between radar scans, the lack of time synchronization between radars, storm movement, varying beam resolutions between different types of radars, beam blockage due to terrain, differing radar calibration, and inaccurate time stamps on radar data. Techniques for merging scalar products like reflectivity, and innovative, real-time techniques for combining velocity and velocity-derived products are demonstrated. Precomputation techniques that can be utilized to perform the merger in real time and derived products that can be computed from these three-dimensional merger grids are described.


Weather and Forecasting | 2008

Rapid Sampling of Severe Storms by the National Weather Radar Testbed Phased Array Radar

Pamela L. Heinselman; David Priegnitz; Kevin L. Manross; Travis M. Smith; Richard Adams

Abstract A key advantage of the National Weather Radar Testbed Phased Array Radar (PAR) is the capability to adaptively scan storms at higher temporal resolution than is possible with the Weather Surveillance Radar-1988 Doppler (WSR-88D): 1 min or less versus 4.1 min, respectively. High temporal resolution volumetric radar data are a necessity for rapid identification and confirmation of weather phenomena that can develop within minutes. The purpose of this paper is to demonstrate the PAR’s ability to collect rapid-scan volumetric data that provide more detailed depictions of quickly evolving storm structures than the WSR-88D. Scientific advantages of higher temporal resolution PAR data are examined for three convective storms that occurred during the spring and summer of 2006, including a reintensifying supercell, a microburst, and a hailstorm. The analysis of the reintensifying supercell (58-s updates) illustrates the capability to diagnose the detailed evolution of developing and/or intensifying areas ...


Bulletin of the American Meteorological Society | 2009

THE SEVERE HAZARDS ANALYSIS AND VERIFICATION EXPERIMENT

Kiel L. Ortega; Travis M. Smith; Kevin L. Manross; Kevin Scharfenberg; Arthur Witt; Angelyn G. Kolodziej; Jonathan J. Gourley

During the springs and summers of 2006 through 2008, scientists from the National Severe Storms Laboratory and students from the University of Oklahoma have conducted an enhanced severe-storm verification effort. The primary goal for the Severe Hazards Analysis and Verification Experiment (SHAVE) was the remote collection of high spatial and temporal resolution hail, wind (or wind damage), and flash-flooding reports from severe thunderstorms. This dataset has a much higher temporal and spatial resolution than the traditional storm reports collected by the National Weather Service and published in Storm Data (tens of square kilometers and 1–5 min versus thousands of square kilometers and 30–60 min) and also includes reports of nonsevere storms that are not included in Storm Data. The high resolution of the dataset makes it useful for validating high-resolution, gridded warning guidance applications. SHAVE is unique not only for the type of data collected and the resolution of that data but also for how the...


Weather and Forecasting | 2012

An Objective High-Resolution Hail Climatology of the Contiguous United States

John L. Cintineo; Travis M. Smith; Valliappa Lakshmanan; Harold E. Brooks; Kiel L. Ortega

AbstractThe threat of damaging hail from severe thunderstorms affects many communities and industries on a yearly basis, with annual economic losses in excess of


Weather and Forecasting | 2010

An Objective Method of Evaluating and Devising Storm-Tracking Algorithms

Valliappa Lakshmanan; Travis M. Smith

1 billion (U.S. dollars). Past hail climatology has typically relied on the National Oceanic and Atmospheric Administration/National Climatic Data Center’s (NOAA/NCDC) Storm Data publication, which has numerous reporting biases and nonmeteorological artifacts. This research seeks to quantify the spatial and temporal characteristics of contiguous United States (CONUS) hail fall, derived from multiradar multisensor (MRMS) algorithms for several years during the Next-Generation Weather Radar (NEXRAD) era, leveraging the Multiyear Reanalysis of Remotely Sensed Storms (MYRORSS) dataset at NOAA’s National Severe Storms Laboratory (NSSL). The primary MRMS product used in this study is the maximum expected size of hail (MESH). The preliminary climatology includes 42 months of quality controlled and reprocessed MESH grids, which spans the warm seasons fo...


Weather and Forecasting | 2013

Tornado Pathlength Forecasts from 2010 to 2011 Using Ensemble Updraft Helicity

Adam J. Clark; Jidong Gao; Patrick T. Marsh; Travis M. Smith; John S. Kain; James Correia; Ming Xue; Fanyou Kong

Abstract Although storm-tracking algorithms are a key ingredient of nowcasting systems, evaluation of storm-tracking algorithms has been indirect, labor intensive, or nonspecific. A set of easily computable bulk statistics that can be used to directly evaluate the performance of tracking algorithms on specific characteristics is introduced. These statistics are used to evaluate five widely used storm-tracking algorithms on a diverse set of radar reflectivity data cases. Based on this objective evaluation, a storm-tracking algorithm is devised that performs consistently and better than any of the previously suggested techniques.


Journal of Atmospheric and Oceanic Technology | 2009

Data Mining Storm Attributes from Spatial Grids

Valliappa Lakshmanan; Travis M. Smith

AbstractExamining forecasts from the Storm Scale Ensemble Forecast (SSEF) system run by the Center for Analysis and Prediction of Storms for the 2010 NOAA/Hazardous Weather Testbed Spring Forecasting Experiment, recent research diagnosed a strong relationship between the cumulative pathlengths of simulated rotating storms (measured using a three-dimensional object identification algorithm applied to forecast updraft helicity) and the cumulative pathlengths of tornadoes. This paper updates those results by including data from the 2011 SSEF system, and illustrates forecast examples from three major 2011 tornado outbreaks—16 and 27 April, and 24 May—as well as two forecast failure cases from June 2010. Finally, analysis updraft helicity (UH) from 27 April 2011 is computed using a three-dimensional variational data assimilation system to obtain 1.25-km grid-spacing analyses at 5-min intervals and compared to forecast UH from individual SSEF members.


Bulletin of the American Meteorological Society | 2013

The Emergence of Weather-Related Test Beds Linking Research and Forecasting Operations

F. Martin Ralph; Janet M. Intrieri; David Andra; Robert Atlas; Sid Boukabara; David R. Bright; Paula Davidson; Bruce Entwistle; John Gaynor; Steve Goodman; Jiann-Gwo Jiing; Amy Harless; Jin Huang; Gary J. Jedlovec; John S. Kain; Steven E. Koch; Bill Kuo; Jason J. Levit; Shirley T. Murillo; Lars Peter Riishojgaard; Timothy Schneider; Russell S. Schneider; Travis M. Smith; Steven J. Weiss

Abstract A technique to identify storms and capture scalar features within the geographic and temporal extent of the identified storms is described. The identification technique relies on clustering grid points in an observation field to find self-similar and spatially coherent clusters that meet the traditional understanding of what storms are. From these storms, geometric, spatial, and temporal features can be extracted. These scalar features can then be data mined to answer many types of research questions in an objective, data-driven manner. This is illustrated by using the technique to answer questions of forecaster skill and lightning predictability.

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Jidong Gao

University of Oklahoma

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Kurt Hondl

University of Oklahoma

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David J. Stensrud

National Oceanic and Atmospheric Administration

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Christopher D. Karstens

National Oceanic and Atmospheric Administration

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Kimberly L. Elmore

National Oceanic and Atmospheric Administration

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Kristin M. Kuhlman

National Oceanic and Atmospheric Administration

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