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Probabilistic analysis of gear flank micro-pitting risk in wind turbine gearbox using supervisory control and data acquisition data

机译:利用监督控制和数据采集数据对风机齿轮箱齿轮齿侧微点蚀风险进行概率分析

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摘要

This study investigates the probabilistic risk of gear tooth flank micro-pitting in wind turbine (WT) gearboxes and shows how relatively slow rate of supervisory control and data acquisition (SCADA) data, recorded during operation, can be used to analyse the onset of gear surface damage. Field measured time series of SCADA signals, including wind speed, generator power and rotational speed, were used to obtain the statistical variation of gear shaft torque and rotational speed. From the SCADA data obtained over a 2.2 year period random number datasets of smaller sizes were selected. Based on these random number datasets the effect of gear shaft torque and rotational speed variations on the probabilistic risk of gear micro-pitting was investigated. Determinations of the gear tooth flank contact stress and lubricant film thickness were based on the technical report of gear micro-pitting, ISO/TR 15144-1 (2010). The study has shown that the considered pinion gear is subjected to high load conditions resulting in high contact stresses. The variation of rotational speed causes greater sliding between the gear teeth. The results of specific lubricant film thicknesses have shown that there is considerable risk of gear micro-pitting under the operational conditions recorded from the SCADA field data.
机译:这项研究调查了风力涡轮机(WT)齿轮箱中齿轮齿侧面微蚀的概率风险,并显示了如何在运行过程中记录相对缓慢的监督控制和数据采集(SCADA)数据来分析齿轮起爆表面损坏。现场测得的SCADA信号的时间序列,包括风速,发电机功率和转速,用于获得齿轮轴转矩和转速的统计变化。从2.2年中获得的SCADA数据中,选择较小规模的随机数数据集。基于这些随机数数据集,研究了齿轮轴扭矩和转速变化对齿轮微点蚀概率风险的影响。齿轮齿面接触应力和润滑剂膜厚度的确定基于齿轮微点蚀技术报告,ISO / TR 15144-1(2010)。研究表明,所考虑的小齿轮在高负载条件下会导致较高的接触应力。转速的变化导致齿轮齿之间更大的滑动。特定润滑膜厚度的结果表明,在从SCADA现场数据记录的运行条件下,齿轮微点蚀的风险很大。

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