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Wind turbine pitch system condition monitoring based on performance curves in multiple states

机译:基于多状态性能曲线的风力发电机变桨系统状态监测

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The pitch system playing a key role to capture wind energy is one of the most critical components of wind turbines (WTs). Meanwhile, it suffers the highest failure rate and major downtime. Improving the capacity of pitch system condition monitoring technique can effectively reduce operation and maintenance (O&M) costs. Supervisory control and data acquisition (SCADA) data including comprehensive signal information from most subassemblies have been widely applied to condition monitoring and fault diagnosis of WTs. However, because of the complex operational condition of WTs, SCADA data become more complicated to study. This paper proposes a condition monitoring method of pitch system in multiple states based on blade angle-rotor speed-wind speed curve. In order to make the performance curve easier to explain, SCADA data are divided into nine parts according to the operational condition of WTs. Gaussian mixture model clustering, mean Euclidean distance and line fitting are applied to detect anomalies in three main states. Four faults in three categories have been study to demonstrate the feasibility of proposed method. It has been shown that the proposed condition monitoring method can not only simplify performance curves, but also detect pitch system faults effectively.
机译:变桨系统在捕获风能中起着关键作用,是风力涡轮机(WTs)的最关键组件之一。同时,它遭受最高的故障率和严重的停机时间。改进变桨系统状态监测技术的能力可以有效降低运维成本。包括来自大多数子组件的全面信号信息在内的监督控制和数据采集(SCADA)数据已被广泛应用于WT的状态监视和故障诊断。然而,由于WT的复杂的操作条件,SCADA数据的研究变得更加复杂。提出了一种基于叶片角-转子速度-风速曲线的变桨状态多状态监测方法。为了使性能曲线更容易解释,根据WT的工作情况将SCADA数据分为九部分。采用高斯混合模型聚类,平均欧氏距离和线拟合来检测三种主要状态的异常。研究了三个类别的四个故障,以证明所提出方法的可行性。结果表明,所提出的状态监测方法不仅可以简化性能曲线,而且可以有效地检测变桨系统的故障。

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