Four Methods for LIDAR Retrieval of Microscale Wind Fields

This paper evaluates four wind retrieval methods for micro-scale meteorology applications with volume and time resolution in the order of 30m<sup>3</sup> and 5 s. Wind field vectors are estimated using sequential time-lapse volume images of aerosol density fluctuations. S...

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Main Authors: Thomas Naini, Allen Q. Howard
Format: Article
Language:English
Published: MDPI AG 2012-08-01
Series:Remote Sensing
Subjects:
3D
Online Access:http://www.mdpi.com/2072-4292/4/8/2329
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spelling doaj-cb560749911c4bd99e468c72fc3481652020-11-24T21:14:37ZengMDPI AGRemote Sensing2072-42922012-08-01482329235510.3390/rs4082329Four Methods for LIDAR Retrieval of Microscale Wind FieldsThomas NainiAllen Q. HowardThis paper evaluates four wind retrieval methods for micro-scale meteorology applications with volume and time resolution in the order of 30m<sup>3</sup> and 5 s. Wind field vectors are estimated using sequential time-lapse volume images of aerosol density fluctuations. Suitably designed mono-static scanning backscatter LIDAR systems, which are sensitive to atmospheric density aerosol fluctuations, are expected to be ideal for this purpose. An important application is wind farm siting and evaluation. In this case, it is necessary to look at the complicated region between the earth’s surface and the boundary layer, where wind can be turbulent and fractal scaling from millimeter to kilometer. The methods are demonstrated using first a simple randomized moving hard target, and then with a physics based stochastic space-time dynamic turbulence model. In the latter case the actual vector wind field is known, allowing complete space-time error analysis. Two of the methods, the semblance method and the spatio-temporal method, are found to be most suitable for wind field estimation.http://www.mdpi.com/2072-4292/4/8/2329LIDAR3Dvector wind fieldsspatio-temporal and semblance methodsfluid flow modelsretrievals
collection DOAJ
language English
format Article
sources DOAJ
author Thomas Naini
Allen Q. Howard
spellingShingle Thomas Naini
Allen Q. Howard
Four Methods for LIDAR Retrieval of Microscale Wind Fields
Remote Sensing
LIDAR
3D
vector wind fields
spatio-temporal and semblance methods
fluid flow models
retrievals
author_facet Thomas Naini
Allen Q. Howard
author_sort Thomas Naini
title Four Methods for LIDAR Retrieval of Microscale Wind Fields
title_short Four Methods for LIDAR Retrieval of Microscale Wind Fields
title_full Four Methods for LIDAR Retrieval of Microscale Wind Fields
title_fullStr Four Methods for LIDAR Retrieval of Microscale Wind Fields
title_full_unstemmed Four Methods for LIDAR Retrieval of Microscale Wind Fields
title_sort four methods for lidar retrieval of microscale wind fields
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2012-08-01
description This paper evaluates four wind retrieval methods for micro-scale meteorology applications with volume and time resolution in the order of 30m<sup>3</sup> and 5 s. Wind field vectors are estimated using sequential time-lapse volume images of aerosol density fluctuations. Suitably designed mono-static scanning backscatter LIDAR systems, which are sensitive to atmospheric density aerosol fluctuations, are expected to be ideal for this purpose. An important application is wind farm siting and evaluation. In this case, it is necessary to look at the complicated region between the earth’s surface and the boundary layer, where wind can be turbulent and fractal scaling from millimeter to kilometer. The methods are demonstrated using first a simple randomized moving hard target, and then with a physics based stochastic space-time dynamic turbulence model. In the latter case the actual vector wind field is known, allowing complete space-time error analysis. Two of the methods, the semblance method and the spatio-temporal method, are found to be most suitable for wind field estimation.
topic LIDAR
3D
vector wind fields
spatio-temporal and semblance methods
fluid flow models
retrievals
url http://www.mdpi.com/2072-4292/4/8/2329
work_keys_str_mv AT thomasnaini fourmethodsforlidarretrievalofmicroscalewindfields
AT allenqhoward fourmethodsforlidarretrievalofmicroscalewindfields
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