Abst'/> Multi-dimensional variational mode decomposition for bearing-crack detection in wind turbines with large driving-speed variations
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Multi-dimensional variational mode decomposition for bearing-crack detection in wind turbines with large driving-speed variations

机译:具有大驱动速度变化的风轮机轴承裂纹的多维变分模式分解

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摘要

AbstractMaintenance of wind turbines is recognized as one of the most important issues in wind energy sector. Bearing cracks are a dominant cause of wind-turbine gearbox failures, and gearboxes are the largest contributor to turbine downtime and costliest to repair. Because rolling bearings in wind-turbine gearboxes are often used in variable-speed and variable-load situations, early fault detection and diagnosis of bearings under these non-steady-state conditions are essential to prevent catastrophic failures and thus increase turbine availability and reduce the cost of wind energy. This work proposes a new method, namely, multi-dimensional variational decomposition (MDVD), for bearing-crack detection. In this method, variational mode decomposition (VMD) is incorporated into convolutive blind-source separation (BSS) to address the challenge of substantial driving-speed variations. One unique property of the proposed MDVD method is its ability to deal with multi-channel vibration signals with large speed/load fluctuations. Hence, MDVD does not impose any restrictions on the number of sensors and their installations (e.g., installation locations and directions) and thus overcomes the limitation of existing methods, which can only process a single sensor signal. An experimental validation of the proposed method was conducted using bearings with axial cracks in the outer race.HighlightsWe develop multi-dimensional variational decomposition for bearing-crack detection.This method tackles the challenge of large driving-speed variations in wind turbines.It incorporates variational mode decomposition into convolutive blind-source separation.Bearings with cracks in the outer race were used in an experiment to validate the method.
机译: 摘要 维护风力涡轮机被认为是风能领域最重要的问题之一。轴承裂纹是造成风力发电机齿轮箱故障的主要原因,而齿轮箱是导致涡轮机停机时间最大,维修成本最高的原因。由于风力涡轮机齿轮箱中的滚动轴承通常用于变速和可变负载情况下,因此在这些非稳态条件下对轴承进行早期故障检测和诊断对于防止灾难性故障并因此增加涡轮机的可用性并减少故障的发生至关重要。风能成本。这项工作提出了一种新的方法,即多维变分分解(MDVD),用于轴承裂纹的检测。在这种方法中,将变分模式分解(VMD)合并到卷积式盲源分离(BSS)中,以应对较大的驱动速度变化带来的挑战。所提出的MDVD方法的一个独特特性是它能够处理速度/负载波动较大的多通道振动信号。因此,MDVD对传感器及其安装的数量(例如,安装位置和方向)没有施加任何限制,因此克服了只能处理单个传感器信号的现有方法的限制。使用外圈中带有轴向裂纹的轴承进行了该方法的实验验证。 突出显示 < ce:para id =“ p0010” view =“ all”>我们开发了用于轴承裂纹检测的多维变分分解。 此方法解决了风力涡轮机中较大的驱动速度变化带来的挑战。 变分模式装饰 外圈带有裂纹的轴承用于实验中,以验证该方法。

著录项

  • 来源
    《Renewable energy》 |2018年第ptab期|55-73|共19页
  • 作者单位

    Department of Mechanical Engineering, Iowa State University,School of Mechatronic Engineering & Jiangsu Key Laboratory of Mine Mechanical and Electrical Equipment, China University of Mining & Technology;

    School of Mechatronic Engineering & Jiangsu Key Laboratory of Mine Mechanical and Electrical Equipment, China University of Mining & Technology,School of Mechanical and Manufacturing Engineering, UNSW Australia;

    NGC Transmission Equipment (America), Inc.;

    Department of Mechanical Engineering, Iowa State University,Department of Electrical and Computer Engineering, Iowa State University;

    School of Mechanical and Manufacturing Engineering, UNSW Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Wind turbines; Reliability and maintenance; Rolling bearings; Crack detection; Non-steady-state operation;

    机译:风力涡轮机;可靠性和维护;滚动轴承;裂纹检测;非稳态运行;
  • 入库时间 2022-08-18 00:24:45

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