Development of a pitch based wake optimisation control strategy to improve total farm power production

In this thesis, the effect of pitch based optimisation was explored for a 80 turbine wind farm. Using a modified Jensen wake model and the Particle Swarm Optimisation (PSO) model, a pitch optimisation strategy was created for the dominant turbulence and atmospheric condition for the wind farm. As th...

Full description

Bibliographic Details
Main Author: Tan, Jun Liang
Format: Others
Language:English
Published: Uppsala universitet, Institutionen för geovetenskaper 2016
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-304708
id ndltd-UPSALLA1-oai-DiVA.org-uu-304708
record_format oai_dc
spelling ndltd-UPSALLA1-oai-DiVA.org-uu-3047082019-10-17T22:12:26ZDevelopment of a pitch based wake optimisation control strategy to improve total farm power productionengTan, Jun LiangUppsala universitet, Institutionen för geovetenskaper2016Wake reductionEnergy optimisationJensen wake modelHeuristic OptimisationParticle Swarm OptimisationDeterministic Wake ModellingWind Turbine Control StrategyEnergy SystemsEnergisystemIn this thesis, the effect of pitch based optimisation was explored for a 80 turbine wind farm. Using a modified Jensen wake model and the Particle Swarm Optimisation (PSO) model, a pitch optimisation strategy was created for the dominant turbulence and atmospheric condition for the wind farm. As the wake model was based on the FLORIS model developed by P.M.O Gebraad et. al., the wake and power model was compared with the FLORIS model and a -0.090% difference was found. To determine the dynamic predictive capability of the wake model, measurement values across a 10 minute period for a 19 wind turbine array were used and the wake model under predicted the power production by 17.55%. Despite its poor dynamic predictive capability, the wake model was shown to accurately match the AEP production of the wind farm when compared to a CFD simulation done in FarmFlow and only gave a 3.10% over-prediction. When the optimisation model was applied with 150 iterations and particles, the AEP production of the wind farm increased by 0.1052%, proving that the pitch optimisation method works for the examined wind farm. When the iterations and particles used for the optimisation was increased to 250, the power improvement between optimised results improved by 0.1144% at a 222.5% increase in computational time, suggesting that the solution has yet to fully converge. While the solutions did not fully converge, they converged sufficiently and an increase in iterations gave diminishing results. From the results, the pitch optimisation model was found to give a significant increase in power production, especially in wake intensive wind directions. However, the dynamic predictive capabilities will have be improved upon before the control strategy can be applied to an operational wind farm. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-304708application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Wake reduction
Energy optimisation
Jensen wake model
Heuristic Optimisation
Particle Swarm Optimisation
Deterministic Wake Modelling
Wind Turbine Control Strategy
Energy Systems
Energisystem
spellingShingle Wake reduction
Energy optimisation
Jensen wake model
Heuristic Optimisation
Particle Swarm Optimisation
Deterministic Wake Modelling
Wind Turbine Control Strategy
Energy Systems
Energisystem
Tan, Jun Liang
Development of a pitch based wake optimisation control strategy to improve total farm power production
description In this thesis, the effect of pitch based optimisation was explored for a 80 turbine wind farm. Using a modified Jensen wake model and the Particle Swarm Optimisation (PSO) model, a pitch optimisation strategy was created for the dominant turbulence and atmospheric condition for the wind farm. As the wake model was based on the FLORIS model developed by P.M.O Gebraad et. al., the wake and power model was compared with the FLORIS model and a -0.090% difference was found. To determine the dynamic predictive capability of the wake model, measurement values across a 10 minute period for a 19 wind turbine array were used and the wake model under predicted the power production by 17.55%. Despite its poor dynamic predictive capability, the wake model was shown to accurately match the AEP production of the wind farm when compared to a CFD simulation done in FarmFlow and only gave a 3.10% over-prediction. When the optimisation model was applied with 150 iterations and particles, the AEP production of the wind farm increased by 0.1052%, proving that the pitch optimisation method works for the examined wind farm. When the iterations and particles used for the optimisation was increased to 250, the power improvement between optimised results improved by 0.1144% at a 222.5% increase in computational time, suggesting that the solution has yet to fully converge. While the solutions did not fully converge, they converged sufficiently and an increase in iterations gave diminishing results. From the results, the pitch optimisation model was found to give a significant increase in power production, especially in wake intensive wind directions. However, the dynamic predictive capabilities will have be improved upon before the control strategy can be applied to an operational wind farm.
author Tan, Jun Liang
author_facet Tan, Jun Liang
author_sort Tan, Jun Liang
title Development of a pitch based wake optimisation control strategy to improve total farm power production
title_short Development of a pitch based wake optimisation control strategy to improve total farm power production
title_full Development of a pitch based wake optimisation control strategy to improve total farm power production
title_fullStr Development of a pitch based wake optimisation control strategy to improve total farm power production
title_full_unstemmed Development of a pitch based wake optimisation control strategy to improve total farm power production
title_sort development of a pitch based wake optimisation control strategy to improve total farm power production
publisher Uppsala universitet, Institutionen för geovetenskaper
publishDate 2016
url http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-304708
work_keys_str_mv AT tanjunliang developmentofapitchbasedwakeoptimisationcontrolstrategytoimprovetotalfarmpowerproduction
_version_ 1719269881101156352