Abst'/> Vibration-based bearing fault detection for operations and maintenance cost reduction in wind energy
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Vibration-based bearing fault detection for operations and maintenance cost reduction in wind energy

机译:基于振动的轴承故障检测可降低风能的运营和维护成本

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AbstractCritical mechanical faults in wind turbine systems lead to considerable downtime and repair costs. Improving the detection and diagnosis of such faults thus brings about significant cost reductions for operations and maintenance (O&M) and electricity production. One of the most common defects in drivetrains are rolling element bearing faults. Detecting the faults in their incipient phase can prevent a more catastrophic breakdown and save a company time and money. This paper focuses on separating the bearing fault signals from masking signals coming from drivetrain elements like gears or shafts. The separation is based on the assumption that signal components of gears or shafts are deterministic and appear as clear peaks in the frequency spectrum, whereas bearing signals are stochastic due to random jitter on their fundamental period and can be classified as cyclostationary. A technique that recently gained more attention for separating these two types of signals is the cepstral editing procedure and it is investigated further in this paper as an automated procedure. The performance of the developed methods is validated on experimental data from the National Renewable Energy Laboratory (NREL) in the context of the wind turbine gearbox condition monitoring round robin study.HighlightsVibration analysis of bearing faults in drivetrain wind turbine system.Discrete/random separation is an important preprocessing step.Editing of real cepstrum to reduce influence deterministic frequencies in envelope.Combining cepstrum editing with other methods is straightforward and flexible.Performance is validated on NREL data of pastwind turbine CM round robin study.
机译: 摘要 风力涡轮机系统中的严重机械故障会导致大量停机时间和维修成本。因此,改善对此类故障的检测和诊断可以显着降低运营和维护(O&M)以及电力生产的成本。动力传动系统中最常见的缺陷之一是滚动轴承故障。在初期阶段检测故障可以防止发生更大的灾难性故障,并节省公司的时间和金钱。本文着重于将轴承故障信号与来自传动系统元件(如齿轮或轴)的掩蔽信号分开。分离基于以下假设:齿轮或轴的信号分量是确定性的,并且在频谱中显示为清晰的峰值,而轴承信号由于其基本周期上的随机抖动而是随机的,可以归类为循环平稳。倒谱编辑过程是最近引起人们关注的分离这两种信号的一种技术,本文将其作为一种自动过程进行进一步研究。在风力涡轮机齿轮箱状态监测循环法研究的背景下,根据国家可再生能源实验室(NREL)的实验数据验证了所开发方法的性能。 突出显示 动力传动系统风力涡轮机系统中轴承故障的振动分析。 离散/随机分隔很重要 编辑实际倒谱以减少包络中影响确定性的频率。 < ce:label>• 将倒谱编辑与其他方法结合起来既简单又灵活。 对过去风力涡轮机CM循环研究。

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