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Model-free power optimization of wind farm based on Nelder-Mead method

Model-free power optimization of wind farm based on Nelder-Mead method
Model-free power optimization of wind farm based on Nelder-Mead method
Wake effects generated by wind turbines causes the strong wake interactions among turbines and thus significantly lowers the power output of wind farm. However, it is generally difficult to model the interactions between turbines due to its complexity. To mitigate the wake interactions and thus improve the power output of wind farm, this paper proposes a model-free optimization scheme. The power optimization problem of wind farm is divided into several optimization sub-problems according to the power efficiencies of wind farm under different wind directions. Each optimization sub-problem is solved approximately by developed power optimization algorithm based on Nelder-Mead method. Simulation results show that the proposed scheme can quickly and effectively improve the power output of wind farm in complex wind condition without modeling the wake interactions among the turbines.
Model-free, Nelder-Mead method, Power optimization, Wake interactions, Wind farm
166-171
IEEE
Xu, Zhiwei
1ba6215e-297a-4fe8-85b3-4ee57bd3d9b6
Geng, Hua
bbcc992a-2be9-4c3d-a903-3a53eab2c4bd
Chu, Bing
555a86a5-0198-4242-8525-3492349d4f0f
Xu, Zhiwei
1ba6215e-297a-4fe8-85b3-4ee57bd3d9b6
Geng, Hua
bbcc992a-2be9-4c3d-a903-3a53eab2c4bd
Chu, Bing
555a86a5-0198-4242-8525-3492349d4f0f

Xu, Zhiwei, Geng, Hua and Chu, Bing (2020) Model-free power optimization of wind farm based on Nelder-Mead method. In 2020 2nd International Conference on Smart Power and Internet Energy Systems, SPIES 2020. IEEE. pp. 166-171 . (doi:10.1109/SPIES48661.2020.9243030).

Record type: Conference or Workshop Item (Paper)

Abstract

Wake effects generated by wind turbines causes the strong wake interactions among turbines and thus significantly lowers the power output of wind farm. However, it is generally difficult to model the interactions between turbines due to its complexity. To mitigate the wake interactions and thus improve the power output of wind farm, this paper proposes a model-free optimization scheme. The power optimization problem of wind farm is divided into several optimization sub-problems according to the power efficiencies of wind farm under different wind directions. Each optimization sub-problem is solved approximately by developed power optimization algorithm based on Nelder-Mead method. Simulation results show that the proposed scheme can quickly and effectively improve the power output of wind farm in complex wind condition without modeling the wake interactions among the turbines.

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More information

Published date: 18 September 2020
Additional Information: Publisher Copyright: © 2020 IEEE.
Venue - Dates: 2nd International Conference on Smart Power and Internet Energy Systems, SPIES 2020, , Bangkok, Thailand, 2020-09-15 - 2020-09-18
Keywords: Model-free, Nelder-Mead method, Power optimization, Wake interactions, Wind farm

Identifiers

Local EPrints ID: 472515
URI: http://eprints.soton.ac.uk/id/eprint/472515
PURE UUID: de1448bd-32f8-4e26-acaa-afd4dc3ab41a
ORCID for Bing Chu: ORCID iD orcid.org/0000-0002-2711-8717

Catalogue record

Date deposited: 07 Dec 2022 17:45
Last modified: 17 Mar 2024 03:28

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Contributors

Author: Zhiwei Xu
Author: Hua Geng
Author: Bing Chu ORCID iD

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