Article ID Journal Published Year Pages File Type
301050 Renewable Energy 2012 10 Pages PDF
Abstract

An anticipatory control scheme for optimizing power and vibration of wind turbines is introduced. Two models optimizing the power generation and mitigating vibration of a wind turbine are developed using data collected from a large wind farm. To model the wind turbine vibration, two parameters, drive-train and tower acceleration, are introduced. The two parameters are measured with accelerometers. Data-mining algorithms are applied to establish models for estimating drive-train and tower acceleration parameters. The prediction accuracy of the data-driven models is examined in order to address their feasibility for an anticipatory control scheme. An optimization control model is established by integrating the data-driven models in the presence of constraints. A particle swarm optimization algorithm is applied to optimize the model.

► An anticipatory control scheme for optimizing power and vibration of wind turbines is introduced. ► Data-mining algorithms are applied to estimate drive-train and tower acceleration parameters. ► A model is established by integrating the data-driven models in the presence of constraints. ► Prediction accuracy of the data-driven models is examined.

Related Topics
Physical Sciences and Engineering Energy Renewable Energy, Sustainability and the Environment
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