基于周期平稳分析的风电齿轮箱振动状态监测

Alexandre Mauricio, Junyu Qi, K. Gryllias
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引用次数: 4

摘要

在过去的几十年里,风能行业经历了巨大的增长。截至2016年底,全球风电总装机容量达到486790兆瓦,比上年增长12.5%。如今,风力涡轮机制造商倾向于采用新的商业模式,提出全面的健康监测服务和解决方案,使用定期检查,甚至在每个单元中嵌入传感器和健康监测系统。定期计划或永久监测确保持续发电并降低维护成本,在必要时促使采取具体措施。风力发电机传动系统的核心通常是一个复杂的行星齿轮箱。通常导致机械故障的主要齿轮箱部件之一是滚动轴承。与其他激励源(如齿轮)相比,早期轴承损坏的故障迹象通常较弱。为了准确、早期地检测轴承故障,人们提出了大量的信号处理方法,包括频谱分析、同步平均和包络。包络分析是基于信号的包络提取,在由轴承故障引起的冲击激发的频带周围滤波后。Kurtogram作为一种自动选择滤波带的方法已经被提出并广泛应用,另一方面在离群值中是敏感的。最近,一个新兴的兴趣集中在将旋转机械信号建模为周期平稳,这是一类特殊的非平稳随机过程。循环谱相关和循环谱相干已经被提出作为滚动轴承状态监测的有力工具,利用它们的循环平稳行为。本文介绍了一种基于循环谱相干性沿包含诊断信息的频带积分的新型诊断工具。提出了一种特殊的方法来自动选择滤波带,使相应的故障指标最大化。使用国家可再生能源实验室(NREL)风力涡轮机齿轮箱振动状态监测基准数据集验证了该方法的有效性,该数据集包括具有不同诊断复杂性水平的各种故障。
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Vibration Based Condition Monitoring of Wind Turbine Gearboxes Based on Cyclostationary Analysis
Wind industry experiences a tremendous growth during the last few decades. As of the end of 2016, the worldwide total installed electricity generation capacity from wind power amounted to 486,790 MW, presenting an increase of 12.5% compared to the previous year. Nowadays wind turbine manufacturers tend to adopt new business models proposing total health monitoring services and solutions, using regular inspections or even embedding sensors and health monitoring systems within each unit. Regularly planned or permanent monitoring ensures a continuous power generation and reduce maintenance costs, prompting specific actions when necessary. The core of wind turbine drivetrain is usually a complicated planetary gearbox. One of the main gearbox components which are commonly responsible for the machinery breakdowns are rolling element bearings. The failure signs of an early bearing damage are usually weak compared to other sources of excitation (e.g. gears). Focusing towards the accurate and early bearing fault detection, a plethora of signal processing methods have been proposed including spectral analysis, synchronous averaging and enveloping. Envelope analysis is based on the extraction of the envelope of the signal, after filtering around a frequency band excited by impacts due to the bearing faults. Kurtogram has been proposed and widely used as an automatic methodology for the selection of the filtering band, being on the other hand sensible in outliers. Recently an emerging interest has been focused on modelling rotating machinery signals as cyclostationary, which is a particular class of non-stationary stochastic processes. Cyclic Spectral Correlation and Cyclic Spectral Coherence have been presented as powerful tools for condition monitoring of rolling element bearings, exploiting their cyclostationary behaviour. In this work a new diagnostic tool is introduced based on the integration of the Cyclic Spectral Coherence along a frequency band that contains the diagnostic information. A special procedure is proposed in order to automatically select the filtering band, maximizing the corresponding fault indicators. The effectiveness of the methodology is validated using the National Renewable Energy Laboratory (NREL) wind turbine gearbox vibration condition monitoring benchmarking dataset which includes various faults with different levels of diagnostic complexity.
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