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Application of a Data-Driven Fuzzy Control Design to a Wind Turbine Benchmark Model

机译:数据驱动的模糊控制设计在风力发电机基准模型中的应用

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In general, the modelling of wind turbines is a challenging task, since they are complex dynamic systems, whose aerodynamics are nonlinear and unsteady. Accurate models should contain many degrees of freedom, and their control algorithm design must account for these complexities. However, these algorithms must capture the most important turbine dynamics without being too complex and unwieldy, mainly when they have to be implemented in real-time applications. The first contribution of this work consists of providing an application example of the design and testing through simulations, of a data-driven fuzzy wind turbine control. In particular, the strategy is based on fuzzy modelling and identification approaches to model-based control design. Fuzzy modelling and identification can represent an alternative for developing experimental models of complex systems, directly derived directly from measured input-output data without detailed system assumptions. Regarding the controller design, this paper suggests again a fuzzy control approach for the adjustment of both the wind turbine blade pitch angle and the generator torque. The effectiveness of the proposed strategies is assessed on the data sequences acquired from the considered wind turbine benchmark. Several experiments provide the evidence of the advantages of the proposed regulator with respect to different control methods.
机译:通常,对风力涡轮机进行建模是一项艰巨的任务,因为它们是复杂的动态系统,其空气动力学是非线性且不稳定的。准确的模型应包含许多自由度,并且其控制算法设计必须考虑这些复杂性。但是,这些算法必须捕捉最重要的涡轮动力学,而又不要太复杂和笨拙,主要是在必须在实时应用中实现它们时。这项工作的第一个贡献是提供了数据驱动的模糊风力涡轮机控制的设计和通过仿真进行测试的应用示例。尤其是,该策略基于模糊建模和基于模型的控制设计的识别方法。模糊建模和识别可以代表开发复杂系统实验模型的替代方法,该模型可以直接从测量的输入-输出数据直接得出,而无需详细的系统假设。关于控制器的设计,本文再次提出了一种模糊控制方法,用于调节风力发电机叶片的桨距角和发电机转矩。根据从考虑的风机基准获得的数据序列,评估了所提出策略的有效性。若干实验提供了所提出的调节器相对于不同控制方法的优点的证据。

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