Turbulence for different background conditions using fuzzy logic and clustering
Wind and turbulence estimated from MST radar observations in Kiruna, in Arctic Sweden are used to characterize turbulence in the free troposphere using data clustering and fuzzy logic. The root mean square velocity, ν<sub>fca</sub>, a diagnostic of turbulence is clustered in te...
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Copernicus Publications
2010-08-01
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Series: | Annales Geophysicae |
Online Access: | https://www.ann-geophys.net/28/1475/2010/angeo-28-1475-2010.pdf |
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doaj-ee1bff9bc123435dadf5e26cb12d20c92020-11-24T23:07:12ZengCopernicus PublicationsAnnales Geophysicae0992-76891432-05762010-08-01281475148110.5194/angeo-28-1475-2010Turbulence for different background conditions using fuzzy logic and clusteringK. Satheesan0S. Kirkwood1Swedish Institute of Space Physics, Kiruna, SwedenSwedish Institute of Space Physics, Kiruna, SwedenWind and turbulence estimated from MST radar observations in Kiruna, in Arctic Sweden are used to characterize turbulence in the free troposphere using data clustering and fuzzy logic. The root mean square velocity, ν<sub>fca</sub>, a diagnostic of turbulence is clustered in terms of hourly wind speed, direction, vertical wind speed, and altitude of the radar observations, which are the predictors. The predictors are graded over an interval of zero to one through an input membership function. Subtractive data clustering has been applied to classify ν<sub>fca</sub> depending on its homogeneity. Fuzzy rules are applied to the clustered dataset to establish a relationship between predictors and the predictant. The accuracy of the predicted turbulence shows that this method gives very good prediction of turbulence in the troposphere. Using this method, the behaviour of ν<sub>fca</sub> for different wind conditions at different altitudes is studied.https://www.ann-geophys.net/28/1475/2010/angeo-28-1475-2010.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
K. Satheesan S. Kirkwood |
spellingShingle |
K. Satheesan S. Kirkwood Turbulence for different background conditions using fuzzy logic and clustering Annales Geophysicae |
author_facet |
K. Satheesan S. Kirkwood |
author_sort |
K. Satheesan |
title |
Turbulence for different background conditions using fuzzy logic and clustering |
title_short |
Turbulence for different background conditions using fuzzy logic and clustering |
title_full |
Turbulence for different background conditions using fuzzy logic and clustering |
title_fullStr |
Turbulence for different background conditions using fuzzy logic and clustering |
title_full_unstemmed |
Turbulence for different background conditions using fuzzy logic and clustering |
title_sort |
turbulence for different background conditions using fuzzy logic and clustering |
publisher |
Copernicus Publications |
series |
Annales Geophysicae |
issn |
0992-7689 1432-0576 |
publishDate |
2010-08-01 |
description |
Wind and turbulence estimated from MST radar observations in Kiruna, in
Arctic Sweden are used to characterize turbulence in the free troposphere
using data clustering and fuzzy logic. The root mean square velocity,
ν<sub>fca</sub>, a diagnostic of turbulence is clustered in terms of hourly
wind speed, direction, vertical wind speed, and altitude of the radar
observations, which are the predictors. The predictors are graded over an
interval of zero to one through an input membership function. Subtractive
data clustering has been applied to classify ν<sub>fca</sub> depending on its
homogeneity. Fuzzy rules are applied to the clustered dataset to establish a
relationship between predictors and the predictant. The accuracy of the
predicted turbulence shows that this method gives very good prediction of
turbulence in the troposphere. Using this method, the behaviour of ν<sub>fca</sub> for different wind conditions at different altitudes is studied. |
url |
https://www.ann-geophys.net/28/1475/2010/angeo-28-1475-2010.pdf |
work_keys_str_mv |
AT ksatheesan turbulencefordifferentbackgroundconditionsusingfuzzylogicandclustering AT skirkwood turbulencefordifferentbackgroundconditionsusingfuzzylogicandclustering |
_version_ |
1725619523185278976 |