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A surrogate model approach for associating wind farm load variations with turbine failures

机译:一种替代模型方法,用于将风电场负荷变化与汽轮机故障相关联

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In order to ensure structural reliability, wind turbine design is typically based on the assumption of gradual degradation of material properties (fatigue loading). Nevertheless, the relation between the wake-induced load exposure of turbines and the reliability of their major components has not been sufficiently well defined and demonstrated. This study suggests a methodology that makes it possible to correlate loads with reliability of turbines in wind farms in a computationally efficient way by combining physical modeling with machine learning. It can be used for estimating the current health state of a turbine and enables a more precise prediction of the “load budget”, i.e.,?the effect of load-induced degradation and faults on the operating costs of wind farms. The suggested approach is demonstrated on an offshore wind farm for comparing performance, loads and lifetime estimations against recorded main bearing failures from maintenance reports. The validation of the estimated power against the 10 min supervisory control and data acquisition (SCADA) power signals shows that the surrogate model is able to capture the power performance relatively well with a 1.5 % average error in the prediction of the annual energy production?(AEP). It is found that turbines positioned at the border of the wind farm with a higher expected AEP are estimated to experience earlier main bearing failures. However, a clear connection between the load estimations and failure observations could not be confirmed in this study. Finally, the analysis stresses that more failure data are required in future work to enable statistically significant associations of the observed main bearing lifetimes with load exposures across the wind farm and to validate and generalize the suggested approach and its associated findings.
机译:为了确保结构可靠性,风力涡轮机设计通常基于材料特性逐渐降解的假设(疲劳负载)。然而,涡轮机的唤醒诱导负载暴露与主要部件可靠性之间的关系并未充分明确和证明。本研究表明一种方法,使得可以通过与机器学习的物理建模相结合,以计算有效的方式将负载与风电场中的涡轮机的可靠性相关联。它可用于估计涡轮机的当前健康状态,并能够更精确地预测“负载预算”,即载荷引起的降解和故障对风电场的运营成本的影响。在海上风电场上证明了建议的方法,用于比较来自维护报告的录制主轴承故障的性能,载荷和寿命估计。估算估计功率对10分钟监控和数据采集(SCADA)的电力信号表明,代理模型能够相对较好地捕获功率性能,在年度能源生产中预测的1.5%的平均误差?( AEP)。结果发现,涡轮机定位在风电场边界处具有较高预期的AEP,估计更早的主轴承故障。然而,在本研究中无法确认负载估计和失败观测之间的明确连接。最后,分析强调,在未来的工作中需要更多的故障数据来实现观察到的主要轴承寿命的统计上显着的关联,以及在风电场上的负载曝光,并验证和概括建议的方法及其相关发现。

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