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Real-time Relocation of Floating Offshore Wind Turbines for Power Maximization Using Distributed Economic Model Predictive Control

机译:利用分布式经济模型预测控制实时重新定位电力最大化电力最大化

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This paper provides a summary of research on power maximization in floating offshore wind farms. The wind farm control mechanism involves real-time relocation of floating platforms for the purpose of reducing wake overlap along the rotors of downstream machines. Platform displacement is achieved in a passive manner by using aerodynamic forces acting on turbine rotors. The simulation tool and distributed economic model predictive control (DEMPC) scheme used in the investigation are briefly introduced. Additionally, the use of feed-forward neural networks to estimate floating platform dynamics during the optimization process is described. Preliminary simulation results are then presented to demonstrate the effectiveness of the control approach and to gain insight into relevant challenges. For a floating wind farm consisting of three 5 MW turbines aligned with the free stream wind, the DEMPC algorithm yields a 20.2 % increase in energy production relative to traditional greedy operation over the course of a 3,600 sec simulation. The prediction uncertainty of neural networks is also shown to strongly influence controller behaviour.
机译:本文介绍了浮动海上风电场在浮动电力最大化研究综述。风电场控制机制涉及浮动平台的实时重新定位,以减少下游机器转子的唤醒重叠。通过使用在涡轮机转子上作用的空气动力力来实现平台位移。简要介绍了调查中使用的仿真工具和分布式经济模型预测控制(DEMPC)方案。另外,描述了在优化过程中使用前锋神经网络来估计浮动平台动态。然后提出了初步仿真结果以证明对照方法的有效性,并深入了解相关挑战。对于由三个5 MW涡轮机组成的浮动风电场,DEMPC算法在3,600秒模拟的过程中产生了相对于传统贪婪操作的能源产生增加了20.2%。神经网络的预测不确定性也被认为强烈影响控制器行为。

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