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An encoder information-based anomaly detection method for planetary gearbox diagnosis

机译:基于编码器信息的行星齿轮箱诊断的异常检测方法

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摘要

To keep the reliability of the planetary gearbox, anomaly detection has been widely investigated for its health monitoring. To this end, a novel approach is presented in this paper to extract fault features based on the merits of built-in encoder signals. Considering that collected encoder data is accumulated in angular positions, instantaneous angular acceleration (IAA) is firstly calculated to highlight the characteristic components. And then time synchronization average (TSA) is applied on an estimated multi-period for denoising, which improves the robustness of the TSA to the feature attenuation effect caused by the round-off error of the basic period. In this paper, we explore the distinguishing properties of regular components and the fault anomaly to impose different restraints on them, which is embodied as a periodicity-enhanced model of robust principle analysis. And objective features are further separated by solving this optimization model. The validation analysis of the proposed framework is applied on both the simulation and experimental cases. The results show that the proposed method is of good performance to deal with encoder signals from the planetary gearbox for fault diagnosis.
机译:为了保持行星齿轮箱的可靠性,对其健康监测得到了广泛研究的异常检测。为此,本文提出了一种新的方法,以基于内置编码器信号的优点提取故障特征。考虑到收集的编码器数据在角位置累积,首先计算瞬时角速度加速度(IAA)以突出显示特性组件。然后,时间同步平均值(TSA)应用于估计的多个时段以进行去噪,这改善了TSA对基本时期的圆周误差引起的特征衰减效果的鲁棒性。在本文中,我们探讨了常规组件和故障异常的区别特性,以对它们强加不同的限制,这被体现为周期性增强的鲁棒原理分析模型。通过解决该优化模型,进一步分离了客观特征。拟议框架的验证分析适用于模拟和实验案例。结果表明,该方法具有良好的性能,可处理来自行星齿轮箱的编码器信号进行故障诊断。

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