Fault Diagnosis and Life Prediction of Wind Turbine Based on Site Monitoring Data

Tian Shuangshu, Qian Zheng, Chen Ni-ya, Zhou Jiwei
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引用次数: 2

Abstract

With the rapid increasing of total install capacity and operating time of wind turbine, the fatigue failures and the maintenance quantity are dramatically increased. It is urgently required to analyze the wind turbine condition timely and accurately to improve the reliability and reduce the maintenance frequency. So the research on reliability and residual lifetime predictive is proposed. At first, through SCADA system, the raw data is transmitted to the state database, on which the site monitoring data is analyzed, and some key parameters and the basic characteristics of site data are extracted. And then, the fault diagnosis of certain part of wind turbine is progressed by integrating possible site data characteristics. Since the fault of certain part is possibly induced by another part, the fault causal network is constructed in order to analyze the interaction of different part of wind turbine. The Fault Tree and Parsimonious Covering Theory are utilized to establish the fault causal network. After that, the Risk Priority Number Theory is utilized to assess the risk of different analysis conclusions obtained by the causal network. Finally, the possible residual life of wind turbine is studied by using accumulation theory and life prediction methods. The reliability of wind turbine could be improved by using the presented method. The rational arrangement of maintenance schedule and economy of management costs will also be improved.
基于现场监测数据的风电机组故障诊断与寿命预测
随着风电机组总装机容量和运行时间的迅速增加,风电机组的疲劳故障和维修数量急剧增加。及时准确地分析风力发电机组的运行状况,提高可靠性,降低检修频率是迫切需要的。因此提出了对可靠性和剩余寿命预测的研究。首先,通过SCADA系统将原始数据传输到状态数据库,在状态数据库上对现场监测数据进行分析,提取现场数据的一些关键参数和基本特征。然后,通过整合可能的现场数据特征,对某部分风力发电机组进行故障诊断。由于某一部件的故障可能由另一部件引起,为了分析风力机各部件之间的相互作用,构建了故障因果网络。利用故障树理论和简约覆盖理论建立了故障因果网络。然后利用风险优先数论对因果网络得到的不同分析结论进行风险评估。最后,运用累积理论和寿命预测方法对风力机的可能剩余寿命进行了研究。该方法可提高风力发电机组的可靠性。维修计划的合理安排和管理费用的经济性也将得到提高。
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