2022
DOI: 10.5194/wes-2022-31
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Observer-based power forecast of individual and aggregated offshore wind turbines

Abstract: Abstract. Due to the increasing share of wind energy in the power system, minute-scale wind power forecasts have gained importance. Remote sensing-based approaches have proven to be a promising alternative to statistical methods and thus need to be further developed towards an operational use, aiming to increase their forecast availability and skill. Therefore, the contribution of this paper is to extend lidar-based forecasts to a methodology for observer-based probabilistic power forecasts of individual wind … Show more

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(5 citation statements)
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“…The weighting method shows an improved skill compared to the OF, while the binary method shows scores similar to the OF, outperforming it in few cases. Similar as observed in previous work persistence outperforms the OF during stable stratification [6,10]. For most turbines, the skill of the binary approach is lower than that of persistence but higher than that of the OF.…”
Section: Hybrid Methods Combining the Observer-based Forecast And Per...supporting
confidence: 88%
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“…The weighting method shows an improved skill compared to the OF, while the binary method shows scores similar to the OF, outperforming it in few cases. Similar as observed in previous work persistence outperforms the OF during stable stratification [6,10]. For most turbines, the skill of the binary approach is lower than that of persistence but higher than that of the OF.…”
Section: Hybrid Methods Combining the Observer-based Forecast And Per...supporting
confidence: 88%
“…Here, we additionally propagated high-frequency wind speed and wind direction information obtained from GT I's wind turbine operational data as suggested by [9]. Wind vectors based on SCADA data were weighted according to their age and bias-corrected to account for wake effects [10]. Lidar and SCADA contributions were resampled to the same number of wind vectors and weighted equally.…”
Section: Methodsmentioning
confidence: 99%
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