A hierarchical data–driven wind farm power optimization approach using stochastic projected simplex method
A hierarchical data–driven wind farm power optimization approach using stochastic projected simplex method
In a wind farm, the interactions among the wind turbines through wakes can significantly reduce the power output of the wind farm. These together with the complex wind conditions make the power optimization problem of the wind farm very challenging. To address this problem, this article proposes a hierarchical data-driven power optimization scheme, which does not need a wake interaction model that can be rather difficult to develop due to the complex aerodynamics between the turbines. The proposed scheme consists of two steps: firstly the power optimization problem of the wind farm is divided into several optimization sub-problems to deal with the complex wind conditions based on the wind farm power efficiencies in different wind directions. Secondly, a data-driven stochastic projected simplex algorithm is developed to solve the power optimization sub-problems. The proposed algorithm can increase the power output of the wind farm by using measurement data only and has the ability to find the optimal solutions. Finally, simulation results show that the proposed scheme can efficiently improve the power output of the wind farm in different wind conditions compared with some benchmark methods.
Wind farm, data-driven, power optimization, stochastic projected simplex method, wake interaction
3560-3569
Xu, Zhiwei
1ba6215e-297a-4fe8-85b3-4ee57bd3d9b6
Geng, Hua
4de0000a-a809-4b66-81bb-ea0befdad671
Chu, Bing
555a86a5-0198-4242-8525-3492349d4f0f
July 2021
Xu, Zhiwei
1ba6215e-297a-4fe8-85b3-4ee57bd3d9b6
Geng, Hua
4de0000a-a809-4b66-81bb-ea0befdad671
Chu, Bing
555a86a5-0198-4242-8525-3492349d4f0f
Xu, Zhiwei, Geng, Hua and Chu, Bing
(2021)
A hierarchical data–driven wind farm power optimization approach using stochastic projected simplex method.
IEEE Transactions on Smart Grid, 12 (4), , [9323069].
(doi:10.1109/TSG.2021.3051773).
Abstract
In a wind farm, the interactions among the wind turbines through wakes can significantly reduce the power output of the wind farm. These together with the complex wind conditions make the power optimization problem of the wind farm very challenging. To address this problem, this article proposes a hierarchical data-driven power optimization scheme, which does not need a wake interaction model that can be rather difficult to develop due to the complex aerodynamics between the turbines. The proposed scheme consists of two steps: firstly the power optimization problem of the wind farm is divided into several optimization sub-problems to deal with the complex wind conditions based on the wind farm power efficiencies in different wind directions. Secondly, a data-driven stochastic projected simplex algorithm is developed to solve the power optimization sub-problems. The proposed algorithm can increase the power output of the wind farm by using measurement data only and has the ability to find the optimal solutions. Finally, simulation results show that the proposed scheme can efficiently improve the power output of the wind farm in different wind conditions compared with some benchmark methods.
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More information
Accepted/In Press date: 10 January 2021
e-pub ahead of print date: 14 January 2021
Published date: July 2021
Keywords:
Wind farm, data-driven, power optimization, stochastic projected simplex method, wake interaction
Identifiers
Local EPrints ID: 446424
URI: http://eprints.soton.ac.uk/id/eprint/446424
ISSN: 1949-3053
PURE UUID: ff20f7c5-105f-49e7-9e0a-fcdb9b8c5d12
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Date deposited: 22 Jan 2025 17:44
Last modified: 23 Jan 2025 05:01
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Contributors
Author:
Zhiwei Xu
Author:
Hua Geng
Author:
Bing Chu
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