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Control of wind turbine power and vibration with a data-driven approach

机译:通过数据驱动的方法控制风力发电机的功率和振动

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摘要

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.
机译:介绍了一种用于优化风力发电机功率和振动的预期控制方案。利用从大型风电场收集的数据,开发了两种优化风力发电机发电和减轻振动的模型。为了模拟风力发电机的振动,引入了两个参数,即传动系和塔架加速度。这两个参数是用加速度计测量的。应用数据挖掘算法来建立模型,以估计传动系统和塔架加速度参数。检查数据驱动模型的预测准确性,以解决其在预期控制方案中的可行性。通过在存在约束的情况下集成数据驱动模型来建立优化控制模型。应用粒子群优化算法对模型进行优化。

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