Estimates of Gradients in Radar Moments Using a Linear Least Squares Derivative TechniqueSource: Weather and Forecasting:;2019:;volume 034:;issue 002::page 415Author:Mahalik, Matthew C.
,
Smith, Brandon R.
,
Elmore, Kimberly L.
,
Kingfield, Darrel M.
,
Ortega, Kiel L.
,
Smith, Travis M.
DOI: 10.1175/WAF-D-18-0095.1Publisher: American Meteorological Society
Abstract: AbstractThe local, linear, least squares derivative (LLSD) approach to radar analysis is a method of quantifying gradients in radar data by fitting a least squares plane to a neighborhood of range bins and finding its slope. When applied to radial velocity fields, for example, LLSD yields part of the azimuthal (rotational) and radial (divergent) components of horizontal shear, which, under certain geometric assumptions, estimate one-half of the two-dimensional vertical vorticity and horizontal divergence equations, respectively. Recent advances in computational capacity as well as increased usage of LLSD products by the meteorological community have motivated an overhaul of the LLSD methodology?s application to radar data. This paper documents the mathematical foundation of the updated LLSD approach, including a complete derivation of its equation set, discussion of its limitations, and considerations for other types of implementation. In addition, updated azimuthal shear calculations are validated against theoretical vorticity using simulated circulations. Applications to nontraditional radar data and new applications to nonvelocity radar data including reflectivity at horizontal polarization, spectrum width, and polarimetric moments are also explored. These LLSD gradient calculations may be leveraged to identify and interrogate a wide variety of severe weather phenomena, either directly by operational forecasters or indirectly as part of future automated algorithms.
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contributor author | Mahalik, Matthew C. | |
contributor author | Smith, Brandon R. | |
contributor author | Elmore, Kimberly L. | |
contributor author | Kingfield, Darrel M. | |
contributor author | Ortega, Kiel L. | |
contributor author | Smith, Travis M. | |
date accessioned | 2019-10-05T06:44:25Z | |
date available | 2019-10-05T06:44:25Z | |
date copyright | 2/7/2019 12:00:00 AM | |
date issued | 2019 | |
identifier other | WAF-D-18-0095.1.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4263273 | |
description abstract | AbstractThe local, linear, least squares derivative (LLSD) approach to radar analysis is a method of quantifying gradients in radar data by fitting a least squares plane to a neighborhood of range bins and finding its slope. When applied to radial velocity fields, for example, LLSD yields part of the azimuthal (rotational) and radial (divergent) components of horizontal shear, which, under certain geometric assumptions, estimate one-half of the two-dimensional vertical vorticity and horizontal divergence equations, respectively. Recent advances in computational capacity as well as increased usage of LLSD products by the meteorological community have motivated an overhaul of the LLSD methodology?s application to radar data. This paper documents the mathematical foundation of the updated LLSD approach, including a complete derivation of its equation set, discussion of its limitations, and considerations for other types of implementation. In addition, updated azimuthal shear calculations are validated against theoretical vorticity using simulated circulations. Applications to nontraditional radar data and new applications to nonvelocity radar data including reflectivity at horizontal polarization, spectrum width, and polarimetric moments are also explored. These LLSD gradient calculations may be leveraged to identify and interrogate a wide variety of severe weather phenomena, either directly by operational forecasters or indirectly as part of future automated algorithms. | |
publisher | American Meteorological Society | |
title | Estimates of Gradients in Radar Moments Using a Linear Least Squares Derivative Technique | |
type | Journal Paper | |
journal volume | 34 | |
journal issue | 2 | |
journal title | Weather and Forecasting | |
identifier doi | 10.1175/WAF-D-18-0095.1 | |
journal fristpage | 415 | |
journal lastpage | 434 | |
tree | Weather and Forecasting:;2019:;volume 034:;issue 002 | |
contenttype | Fulltext |