Turbulence characterization from a forward-looking nacelle lidar
We present two methods to characterize turbulence in the turbine inflow using radial velocity measurements from nacelle-mounted lidars. The first uses a model of the three-dimensional spectral velocity tensor combined with a model of the spatial radial velocity averaging of the lidars, and the se...
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doaj-c5af8223af6b42b2bf6e419da64b008e2020-11-25T00:21:40ZengCopernicus PublicationsWind Energy Science2366-74432366-74512017-03-01213315210.5194/wes-2-133-2017Turbulence characterization from a forward-looking nacelle lidarA. Peña0J. Mann1N. Dimitrov2DTU Wind Energy, Technical University of Denmark, Roskilde, DenmarkDTU Wind Energy, Technical University of Denmark, Roskilde, DenmarkDTU Wind Energy, Technical University of Denmark, Roskilde, DenmarkWe present two methods to characterize turbulence in the turbine inflow using radial velocity measurements from nacelle-mounted lidars. The first uses a model of the three-dimensional spectral velocity tensor combined with a model of the spatial radial velocity averaging of the lidars, and the second uses the ensemble-averaged Doppler radial velocity spectrum. With the former, filtered turbulence estimates can be predicted, whereas the latter model-free method allows us to estimate unfiltered turbulence measures. Two types of forward-looking nacelle lidars are investigated: a pulsed system that uses a five-beam configuration and a continuous-wave system that scans conically. For both types of lidars, we show how the radial velocity spectra of the lidar beams are influenced by turbulence characteristics, and how to extract the velocity-tensor parameters that are useful to predict the loads on a turbine. We also show how the velocity-component variances and co-variances can be estimated from the radial-velocity unfiltered variances of the lidar beams. We demonstrate the methods using measurements from an experiment conducted at the Nørrekær Enge wind farm in northern Denmark, where both types of lidars were installed on the nacelle of a wind turbine. Comparison of the lidar-based along-wind unfiltered variances with those from a cup anemometer installed on a meteorological mast close to the turbine shows a bias of just 2 %. The ratios of the unfiltered and filtered radial velocity variances of the lidar beams to the cup-anemometer variances are well predicted by the spectral model. However, other lidar-derived estimates of velocity-component variances and co-variances do not agree with those from a sonic anemometer on the mast, which we mostly attribute to the small cone angle of the lidar. The velocity-tensor parameters derived from sonic-anemometer velocity spectra and those derived from lidar radial velocity spectra agree well under both near-neutral atmospheric stability and high wind-speed conditions, with differences increasing with decreasing wind speed and increasing stability. We also partly attribute these differences to the lidar beam configuration.https://www.wind-energ-sci.net/2/133/2017/wes-2-133-2017.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
A. Peña J. Mann N. Dimitrov |
spellingShingle |
A. Peña J. Mann N. Dimitrov Turbulence characterization from a forward-looking nacelle lidar Wind Energy Science |
author_facet |
A. Peña J. Mann N. Dimitrov |
author_sort |
A. Peña |
title |
Turbulence characterization from a forward-looking nacelle lidar |
title_short |
Turbulence characterization from a forward-looking nacelle lidar |
title_full |
Turbulence characterization from a forward-looking nacelle lidar |
title_fullStr |
Turbulence characterization from a forward-looking nacelle lidar |
title_full_unstemmed |
Turbulence characterization from a forward-looking nacelle lidar |
title_sort |
turbulence characterization from a forward-looking nacelle lidar |
publisher |
Copernicus Publications |
series |
Wind Energy Science |
issn |
2366-7443 2366-7451 |
publishDate |
2017-03-01 |
description |
We present two methods to characterize turbulence in the turbine inflow using
radial velocity measurements from nacelle-mounted lidars. The first uses a
model of the three-dimensional spectral velocity tensor combined with a model
of the spatial radial velocity averaging of the lidars, and the second uses
the ensemble-averaged Doppler radial velocity spectrum. With the former,
filtered turbulence estimates can be predicted, whereas the latter model-free
method allows us to estimate unfiltered turbulence measures. Two types of
forward-looking nacelle lidars are investigated: a pulsed system that uses a
five-beam configuration and a continuous-wave system that scans conically. For
both types of lidars, we show how the radial velocity spectra of the lidar
beams are influenced by turbulence characteristics, and how to extract the
velocity-tensor parameters that are useful to predict the loads on a turbine.
We also show how the velocity-component variances and co-variances can be
estimated from the radial-velocity unfiltered variances of the lidar beams.
We demonstrate the methods using measurements from an experiment conducted at
the Nørrekær Enge wind farm in northern Denmark, where both types of
lidars were installed on the nacelle of a wind turbine. Comparison of the
lidar-based along-wind unfiltered variances with those from a cup anemometer
installed on a meteorological mast close to the turbine shows a bias of just
2 %. The ratios of the unfiltered and filtered radial velocity variances
of the lidar beams to the cup-anemometer variances are well predicted by the
spectral model. However, other lidar-derived estimates of velocity-component
variances and co-variances do not agree with those from a sonic anemometer on
the mast, which we mostly attribute to the small cone angle of the lidar. The
velocity-tensor parameters derived from sonic-anemometer velocity spectra and
those derived from lidar radial velocity spectra agree well under both
near-neutral atmospheric stability and high wind-speed conditions, with
differences increasing with decreasing wind speed and increasing stability.
We also partly attribute these differences to the lidar beam configuration. |
url |
https://www.wind-energ-sci.net/2/133/2017/wes-2-133-2017.pdf |
work_keys_str_mv |
AT apena turbulencecharacterizationfromaforwardlookingnacellelidar AT jmann turbulencecharacterizationfromaforwardlookingnacellelidar AT ndimitrov turbulencecharacterizationfromaforwardlookingnacellelidar |
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