变风速/风向下多台风力机协同尾流控制研究

Bowen Zhang, Jian Xu, Wei Luo, Zhaohui Luo, Longyan Wang
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引用次数: 0

摘要

在风电场控制领域中,风力发电机组通常被控制为个体发电量最大,这种控制被称为贪心控制。然而,这种贪婪的控制方法会导致风电场总发电量的巨大损失,主要是由多台风力机之间的尾迹干扰造成的。为此,协同尾迹控制通过协调各单机在全局最优运行点上寻求最大总发电量,可以大大提高风电场的输出性能。本文研究了变风速/风向下两种不同的协同尾流控制策略,即瞬时控制和基于风间隔(WIB)的控制的有效性。这两种协同控制策略是基于对上游风电机组的功率降级操作实现的。以三台直列风力机为例,上游两台风力机的控制参数协同优化,下游第三台风力机在最大功率系数下运行。针对多台风机的尾流干扰,提出了计算效率快、精度高的人工神经网络尾流模型,并结合量化多台风机尾流效应所选择的最佳尾流叠加模型进行控制优化。通过与基线贪婪控制的比较,表明两种协同控制策略对提高风电场的发电量都是有效的。更具体地说,WIB控制可以将发电量保持在瞬时控制的同一水平,最大差值小于3%,同时在很大程度上降低了操作难度,极大地方便了其在更现实的复杂风况下的应用。
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Study of cooperative wake control for multiple wind turbines under variable wind speeds/directions
In the wind farm control field, wind turbines are normally manipulated to maximize the individual power production which is named the greedy control. However, this greedy control method can lead to massive losses of total wind farm power production, mainly caused by the wake interference between multiple wind turbines. To this end, the cooperative wake control, which seeks the maximum total power production by coordinating each individual wind turbine at the global optimum operation point, can greatly improve the wind farm output performance. In this paper, we investigate the effectiveness of two different cooperative wake control strategies, i.e., instantaneous control and wind-interval based (WIB) control under variable wind speeds/directions scenario. These two cooperative control strategies are achieved based on the power de-rating operation to the upstream wind turbines. Taking three in-line wind turbines as an example, the control parameters of the two upstream wind turbines are cooperatively optimized while the downstream third wind turbine operates at the maximum power coefficient. To account for the multiple wind turbines wake interference, an artificial neural network (ANN) wake model characterized by the fast computational efficiency and great accuracy, in combination with the best wake superposition model chosen to quantify multiple wake effect, is proposed for the control optimization. By comparing to the baseline greedy control, it shows that both cooperative control strategies are effective in improving the power production of the wind farm. More specifically, the WIB control can maintain the power production at the same level of instantaneous control with a maximum difference less than 3%, while it reduces the operating difficulty to a large extent which greatly facilitates its application under realistic more complex wind scenarios.
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来源期刊
CiteScore
3.30
自引率
5.90%
发文量
114
审稿时长
5.4 months
期刊介绍: The Journal of Power and Energy, Part A of the Proceedings of the Institution of Mechanical Engineers, is dedicated to publishing peer-reviewed papers of high scientific quality on all aspects of the technology of energy conversion systems.
期刊最新文献
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