Comparative study of clustering methods for wake effect analysis in wind farm
Wind energy poses challenges such as the reduction of the wind speed due to wake effect by other turbines. To increase wind farm efficiency, analyzing the parameters which have influence on the wake effect is very important. In this study clustering methods were applied on the wake effects in wind w...
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Elsevier Ltd
2016
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2-s2.0-84960437463 Al-Shammari E.T.; Shamshirband S.; Petković D.; Zalnezhad E.; Yee P.L.; Taher R.S.; Žojbašić Ž. Comparative study of clustering methods for wake effect analysis in wind farm 2016 Energy 95 10.1016/j.energy.2015.11.064 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84960437463&doi=10.1016%2fj.energy.2015.11.064&partnerID=40&md5=4b4642166a842af5cab5540f26d6aa87 Wind energy poses challenges such as the reduction of the wind speed due to wake effect by other turbines. To increase wind farm efficiency, analyzing the parameters which have influence on the wake effect is very important. In this study clustering methods were applied on the wake effects in wind warm to separate district levels of the wake effects. To capture the patterns of the wake effects the PCA (principal component analysis) was applied. Afterwards, cluster analysis was used to analyze the clusters. FCM (Fuzzy c-means), K-mean, and K-medoids were used as the clustering algorithms. The main goal was to segment the wake effect levels in the wind farms. Ten different wake effect clusters were observed according to results. In other words the wake effect has 10 levels of influence on the wind farm energy production. Results show that the K-medoids method was more accurate than FCM and K-mean approach. K-medoid RMSE (root means square error) was 0.240 while the FCM and K-mean RMSEs were 0.320 and 1.509 respectively. The results can be used for wake effect levels segmentation in wind farms. © 2015 Elsevier Ltd. Elsevier Ltd 3605442 English Article |
author |
Al-Shammari E.T.; Shamshirband S.; Petković D.; Zalnezhad E.; Yee P.L.; Taher R.S.; Žojbašić Ž. |
spellingShingle |
Al-Shammari E.T.; Shamshirband S.; Petković D.; Zalnezhad E.; Yee P.L.; Taher R.S.; Žojbašić Ž. Comparative study of clustering methods for wake effect analysis in wind farm |
author_facet |
Al-Shammari E.T.; Shamshirband S.; Petković D.; Zalnezhad E.; Yee P.L.; Taher R.S.; Žojbašić Ž. |
author_sort |
Al-Shammari E.T.; Shamshirband S.; Petković D.; Zalnezhad E.; Yee P.L.; Taher R.S.; Žojbašić Ž. |
title |
Comparative study of clustering methods for wake effect analysis in wind farm |
title_short |
Comparative study of clustering methods for wake effect analysis in wind farm |
title_full |
Comparative study of clustering methods for wake effect analysis in wind farm |
title_fullStr |
Comparative study of clustering methods for wake effect analysis in wind farm |
title_full_unstemmed |
Comparative study of clustering methods for wake effect analysis in wind farm |
title_sort |
Comparative study of clustering methods for wake effect analysis in wind farm |
publishDate |
2016 |
container_title |
Energy |
container_volume |
95 |
container_issue |
|
doi_str_mv |
10.1016/j.energy.2015.11.064 |
url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-84960437463&doi=10.1016%2fj.energy.2015.11.064&partnerID=40&md5=4b4642166a842af5cab5540f26d6aa87 |
description |
Wind energy poses challenges such as the reduction of the wind speed due to wake effect by other turbines. To increase wind farm efficiency, analyzing the parameters which have influence on the wake effect is very important. In this study clustering methods were applied on the wake effects in wind warm to separate district levels of the wake effects. To capture the patterns of the wake effects the PCA (principal component analysis) was applied. Afterwards, cluster analysis was used to analyze the clusters. FCM (Fuzzy c-means), K-mean, and K-medoids were used as the clustering algorithms. The main goal was to segment the wake effect levels in the wind farms. Ten different wake effect clusters were observed according to results. In other words the wake effect has 10 levels of influence on the wind farm energy production. Results show that the K-medoids method was more accurate than FCM and K-mean approach. K-medoid RMSE (root means square error) was 0.240 while the FCM and K-mean RMSEs were 0.320 and 1.509 respectively. The results can be used for wake effect levels segmentation in wind farms. © 2015 Elsevier Ltd. |
publisher |
Elsevier Ltd |
issn |
3605442 |
language |
English |
format |
Article |
accesstype |
|
record_format |
scopus |
collection |
Scopus |
_version_ |
1809677687404363776 |