Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach

Abstract The wind direction characteristics of different wind turbines (WTs) in different wind farms are diverse and some may have obvious differences. The WTs are prone to ‘over‐yaw’ and ‘under‐yaw’ conditions adopting constant yaw threshold and the same control strategy, which reduces the utilisat...

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Main Authors: Xinghui Dong, Yizhou Wang, Hui Wang, Lingxing Kong
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:IET Renewable Power Generation
Online Access:https://doi.org/10.1049/rpg2.12020
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spelling doaj-191770e8e6f548a4a905aa2da22c68f72021-08-02T08:30:20ZengWileyIET Renewable Power Generation1752-14161752-14242021-01-0115123725010.1049/rpg2.12020Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approachXinghui Dong0Yizhou Wang1Hui Wang2Lingxing Kong3School of Energy Power and Mechanical Engineering North China Electric Power University Beijing P.R. ChinaSchool of Energy Power and Mechanical Engineering North China Electric Power University Beijing P.R. ChinaSchool of Energy Power and Mechanical Engineering North China Electric Power University Beijing P.R. ChinaState Key Laboratory of Operation and Control of Renewable Energy & Storage Systems China Electric Power Research Institute Beijing P.R. ChinaAbstract The wind direction characteristics of different wind turbines (WTs) in different wind farms are diverse and some may have obvious differences. The WTs are prone to ‘over‐yaw’ and ‘under‐yaw’ conditions adopting constant yaw threshold and the same control strategy, which reduces the utilisation efficiency of wind energy. This study makes statistics on the variation characteristics of the WT historical wind direction record data, and obtains the maximum probability angle of wind direction change that is used as the control error angle of yaw start (CEAYS). Then, the wind direction value is monitored in real‐time, and the average wind direction change angle in the sliding window is calculated. When the deviation angle is larger than CEAYS, the characteristics of current wind direction are classified based on the clustering of historical wind direction, and a back‐propagation neural network is used to predict the deviation angle of future short‐term wind direction. The adaptive yaw strategy is constructed by CEAYS and deviation angle. The yaw calculation model is analysed and verified with the increase of power extraction and power consumption as the optimisation indexes. The calculation results show that each WT achieved an average 1% increase in power extraction.https://doi.org/10.1049/rpg2.12020
collection DOAJ
language English
format Article
sources DOAJ
author Xinghui Dong
Yizhou Wang
Hui Wang
Lingxing Kong
spellingShingle Xinghui Dong
Yizhou Wang
Hui Wang
Lingxing Kong
Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
IET Renewable Power Generation
author_facet Xinghui Dong
Yizhou Wang
Hui Wang
Lingxing Kong
author_sort Xinghui Dong
title Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
title_short Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
title_full Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
title_fullStr Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
title_full_unstemmed Optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
title_sort optimised yaw model for adaptive wind direction characteristic based on a data‐driven approach
publisher Wiley
series IET Renewable Power Generation
issn 1752-1416
1752-1424
publishDate 2021-01-01
description Abstract The wind direction characteristics of different wind turbines (WTs) in different wind farms are diverse and some may have obvious differences. The WTs are prone to ‘over‐yaw’ and ‘under‐yaw’ conditions adopting constant yaw threshold and the same control strategy, which reduces the utilisation efficiency of wind energy. This study makes statistics on the variation characteristics of the WT historical wind direction record data, and obtains the maximum probability angle of wind direction change that is used as the control error angle of yaw start (CEAYS). Then, the wind direction value is monitored in real‐time, and the average wind direction change angle in the sliding window is calculated. When the deviation angle is larger than CEAYS, the characteristics of current wind direction are classified based on the clustering of historical wind direction, and a back‐propagation neural network is used to predict the deviation angle of future short‐term wind direction. The adaptive yaw strategy is constructed by CEAYS and deviation angle. The yaw calculation model is analysed and verified with the increase of power extraction and power consumption as the optimisation indexes. The calculation results show that each WT achieved an average 1% increase in power extraction.
url https://doi.org/10.1049/rpg2.12020
work_keys_str_mv AT xinghuidong optimisedyawmodelforadaptivewinddirectioncharacteristicbasedonadatadrivenapproach
AT yizhouwang optimisedyawmodelforadaptivewinddirectioncharacteristicbasedonadatadrivenapproach
AT huiwang optimisedyawmodelforadaptivewinddirectioncharacteristicbasedonadatadrivenapproach
AT lingxingkong optimisedyawmodelforadaptivewinddirectioncharacteristicbasedonadatadrivenapproach
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