A data-driven approach for identification and compensation of wind turbine inherent yaw misalignment

Yunong Bao, Qinmin Yang, Siliang Li, Kuangwei Miao, Youxian Sun
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引用次数: 3

Abstract

The yaw control system plays a significant role in the power generation performance of wind turbines. As one of the main components applied on controlling the wind turbine nacelle position in parallel with the inflow wind, it directly determines the maximum available wind energy to capture. However, the inherent misalignments on yaw error caused by improper calibration of the wind vanes during wind turbine installation, are usually severe and impact on the performance of yaw control strategies. In this study, a data-driven inherent misalignment identification and compensation scheme for yaw error is proposed. The real-time data from turbines are collected and a power generation curve is located for each yaw error interval. Subsequently, multiple power curves are evaluated via output performance indicator analysis for determining the actual inherent misalignment value. The entire system is implemented and testified with the SCADA data collected from real wind turbines.
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风力机固有偏航失调辨识与补偿的数据驱动方法
偏航控制系统对风力发电机组的发电性能起着至关重要的作用。作为控制风力机机舱位置与入风平行的主要部件之一,它直接决定了可捕获的最大风能。然而,在风力发电机组安装过程中,由于风叶标定不当导致的偏航误差固有失调往往十分严重,影响了偏航控制策略的性能。本文提出了一种数据驱动的偏航误差固有失调识别与补偿方案。采集了各水轮机的实时数据,并绘制了各偏航误差区间的发电曲线。随后,通过输出性能指标分析对多个功率曲线进行评估,以确定实际的固有偏差值。整个系统通过实际风力发电机组的SCADA数据进行了实现和验证。
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