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Time-frequency analysis based on Vold-Kalman filter and higher order energy separation for fault diagnosis of wind turbine planetary gearbox under nonstationary conditions

机译:基于Vold-Kalman滤波器和高阶能量分离的时频分析在非平稳工况下的风力发电机行星齿轮箱故障诊断

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Planetary gearbox fault diagnosis under nonstationary conditions is important for many engineering applications in general and for wind turbines in particular because of their time-varying operating conditions. This paper focuses on the identification of time-varying characteristic frequencies from complex nonstationary vibration signals for fault diagnosis of wind turbines under nonstationary conditions. We propose a time frequency analysis method based on the Vold-Kalman filter and higher order energy separation (HOES) to extract fault symptoms. The Vold-Kalman filter is improved such that it is encoders/tachometers-free. It can decompose an arbitrarily complex signal into mono-components without resorting to speed inputs, thus satisfying the mono-component requirement by the HOES algorithm. The HOES is then used to accurately estimate the instantaneous frequency because of its high adaptability to local signal changes. The derived time frequency distribution features fine resolution without cross-term interferences and thus facilitates extracting time-varying frequency components from highly complex and nonstationary signals. The method is illustrated and validated by analyzing simulated and experimental signals of a planetary gearbox in a wind turbine test rig under nonstationary running conditions. The results have shown that the method is effective in detecting both distributed (wear on every tooth) and localized (chipping on one tooth) gear faults. (C) 2015 Elsevier Ltd. All rights reserved.
机译:非稳态条件下的行星齿轮箱故障诊断对于一般的许多工程应用,特别是对于风力涡轮机而言,由于其时变的运行条件而非常重要。本文着重从复杂的非平稳振动信号中识别随时间变化的特征频率,以用于非平稳工况下的风机故障诊断。我们提出了一种基于Vold-Kalman滤波器和高阶能量分离(HOES)的时频分析方法,以提取故障症状。改进了Vold-Kalman滤波器,使其无需编码器/转速表。它可以将任意复杂的信号分解为单分量,而无需借助速度输入,从而满足了HOES算法对单分量的要求。由于其对局部信号变化的高度适应性,因此HOES随后可用于准确估计瞬时频率。导出的时间频率分布具有高分辨率,而没有交叉项干扰,因此有助于从高度复杂且不稳定的信号中提取随时间变化的频率分量。通过在非平稳运行条件下分析风力涡轮机试验台中行星齿轮箱的模拟和实验信号来说明和验证该方法。结果表明,该方法可以有效地检测出分布式(每个齿上的磨损)和局部(一个齿上的碎裂)齿轮故障。 (C)2015 Elsevier Ltd.保留所有权利。

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