一种先进风力发电机控制器内部模型不确定性校正的学习算法:一种无需风速测量的方法

S. Mulders, L. Brandetti, F. Spagnolo, Y. Liu, P. Christensen, J. V. van Wingerden
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引用次数: 2

摘要

风力发电机部分负荷控制器已经从简单的静态非线性函数实现发展到更先进的动态控制器结构。这种动态控制方案有可能改善现实环境条件下的发电性能,并允许在负载和能量捕获之间进行更细致的权衡。控制结构一般由一个风速估计器(WSE)和一个旨在跟踪命令叶尖速比(TSR)参考的控制器组成。然而,在WSE-TSR跟踪方案中,其性能和闭环系统的稳定性高度依赖于内部模型的精度。因此,开发学习算法来校准内部模型是特别有趣的。以前的工作已经提出了这样的算法;然而,它们都依赖于可用的(转子有效)风速测量。本文首次提出了一种基于激励的学习算法,利用了WSE-TSR跟踪方案的闭环动态结构。该算法在不需要风速测量的情况下校准内部模型。分析和仿真结果表明,在理想常数和现实湍流条件下,所提出的算法以数量级误差的形式对模型的不确定性进行了校正。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A learning algorithm for the calibration of internal model uncertainties in advanced wind turbine controllers: A wind speed measurement-free approach
Wind turbine partial-load controllers have evolved from simple static nonlinear function implementations to more advanced dynamic controller structures. Such dynamic control schemes have the potential to improve power production performance in realistic environmental conditions and allow for a more granular trade-off between loads and energy capture. The control structure generally consists of a wind speed estimator (WSE) combined with a controller aiming to track the commanded tip-speed ratio (TSR) reference. The performance and resulting closed-loop system stability are however highly dependent on the accuracy of the internal model in the WSE-TSR tracking scheme. Therefore, developing learning algorithms to calibrate the internal model is of particular interest. Previous works have proposed such algorithms; however, they all rely on the availability of (rotor-effective) wind speed measurements. For the first time, this paper proposes an excitation-based learning algorithm that exploits the closed-loop dynamic structure of the WSE-TSR tracking scheme. This algorithm calibrates the internal model without the need for wind speed measurements. Analysis and simulations show that the proposed algorithm corrects for model uncertainties in the form of magnitude scaling errors under ideal constant and realistic turbulent wind conditions.
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