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Wind Turbine Main Bearing Fault Prognosis Based Solely on SCADA Data

机译:风力涡轮机主要轴承故障预后仅基于SCADA数据

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摘要

As stated by the European Academy of Wind Energy (EAWE), the wind industry has identified main bearing failures as a critical issue in terms of increasing wind turbine reliability and availability. This is owing to major repairs with high replacement costs and long downtime periods associated with main bearing failures. Thus, the main bearing fault prognosis has become an economically relevant topic and is a technical challenge. In this work, a data-based methodology for fault prognosis is presented. The main contributions of this work are as follows: (i) Prognosis is achieved by using only supervisory control and data acquisition (SCADA) data, which is already available in all industrial-sized wind turbines; thus, no extra sensors that are designed for a specific purpose need to be installed. (ii) The proposed method only requires healthy data to be collected; thus, it can be applied to any wind farm even when no faulty data has been recorded. (iii) The proposed algorithm works under different and varying operating and environmental conditions. (iv) The validity and performance of the established methodology is demonstrated on a real underproduction wind farm consisting of 12 wind turbines. The obtained results show that advanced prognostic systems based solely on SCADA data can predict failures several months prior to their occurrence and allow wind turbine operators to plan their operations.
机译:正如欧洲风能学院(EAWE)所示,风力行业已将主要轴承故障确定为越来越多的风力涡轮机可靠性和可用性的关键问题。这是由于具有高替代成本和与主要轴承故障相关的长期停机期的主要修复。因此,主要轴承故障预后已成为一个经济相关的主题,是技术挑战。在这项工作中,提出了一种基于数据的故障预后方法。这项工作的主要贡献如下:(i)通过仅使用监督控制和数据收购(SCADA)数据来实现预后,这些数据已经在所有工业大小的风力涡轮机中提供;因此,不需要安装用于特定目的的额外传感器。 (ii)该方法只需要收集健康数据;因此,即使没有记录故障数据,它也可以应用于任何风电场。 (iii)所提出的算法在不同和不同的运营和环境条件下工作。 (iv)在由12个风力涡轮机组成的真正的储量风电场上证明了既定方法的有效性和性能。所获得的结果表明,完全基于SCADA数据的先进预后系统可以在其发生前几个月预测失败,并允许风力涡轮机运营商计划其运营。

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