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Condition Monitoring for Wind Turbine Pitch System Using Multi-parameter Health Indicator

机译:使用多参数健康指标的风力发电机变桨系统状态监测

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As one of the critical components of wind turbines, pitch system suffers the highest failure rate and downtime. Thus, it is particularly important to improve the reliability and reduce the operation and maintenance (O&M) costs of pitch system. With the development of condition monitoring (CM) technology, the condition based maintenance is often employed to reduce the O&M costs of wind turbines. This paper proposed a data-driven CM approach to identify the abnormal condition of pitch system, using supervisory control and data acquisition (SCADA) data. The result of the proposed approach could be useful for wind farm operators to improve their maintenance strategy. Firstly, the Relief algorithm is used to select the appropriated parameters as the health indicator for evaluating the condition of pitch system. Meanwhile, the correlation between the selected parameters is considered to remove the redundant variables. With the selected parameters as the model output and environment variables as the model input, then the random forest regression based model is established by only using the historical healthy SCADA data. Eventually, the distance calculated based on the residual errors between model output and monitored value is used to identify the abnormal condition of pitch system specifically. Several case studies have been analyzed to validate the feasibility of the proposed method. The results indicate that the proposed method can detect the pitch system faults earlier than the SCADA alarm system. It is applicable for the on-line CM of pitch system because of simplicity and low cost.
机译:变桨系统作为风力涡轮机的关键组件之一,具有最高的故障率和停机时间。因此,提高变桨系统的可靠性并降低其运行和维护(O&M)成本尤为重要。随着状态监测(CM)技术的发展,通常采用基于状态的维护来降低风机的运维成本。本文提出了一种基于数据驱动的CM方法,利用监督控制和数据采集(SCADA)数据来识别变桨系统的异常状况。拟议方法的结果可能对风电场运营商改善其维护策略很有用。首先,使用救济算法选择合适的参数作为健康指标,以评估音调系统的状态。同时,考虑所选参数之间的相关性以去除冗余变量。将所选参数作为模型输出,将环境变量作为模型输入,然后仅使用历史健康SCADA数据建立基于随机森林回归的模型。最终,基于模型输出和监视值之间的残差计算出的距离专门用于识别变桨系统的异常情况。分析了几个案例研究,以验证该方法的可行性。结果表明,所提出的方法能够比SCADA报警系统更早地检测到俯仰系统故障。由于简单,成本低,适用于变桨系统的在线CM。

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