Data-driven repetitive control: Wind tunnel experiments under turbulent conditions
Data-driven repetitive control: Wind tunnel experiments under turbulent conditions
A commonly applied method to reduce the cost of wind energy, is alleviating the periodic loads on turbine blades using Individual Pitch Control (IPC). In this paper, a data-driven IPC methodology called Subspace Predictive Repetitive Control (SPRC) is employed. The effectiveness of SPRC will be demonstrated on a scaled 2-bladed wind turbine. An open-jet wind tunnel with an innovative active grid is employed to generate reproducible turbulent wind conditions. A significant load reduction with limited actuator duty is achieved even under these high turbulent conditions. Furthermore, it will be demonstrated that SPRC is able to adapt to changing operating conditions.
Lars Kr?ger、Jan-Willem van Wingerden、Gert G¨1lker、Joeri Frederik
10.1016/j.conengprac.2018.08.011
风能、风力机械自动化技术、自动化技术设备
Lars Kr?ger,Jan-Willem van Wingerden,Gert G¨1lker,Joeri Frederik.Data-driven repetitive control: Wind tunnel experiments under turbulent conditions[EB/OL].(2018-09-12)[2025-06-30].https://arxiv.org/abs/1809.04296.点此复制
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