宽转速范围航发主轴轴承振动数据集

Aero Engine Rolling Bearing vibration data set with wide speed range

  • 摘要: 轴承故障诊断是航空发动机预测与健康管理的重要研究内容,该领域的信号处理算法和深度学习模型都依赖于数据集,然而已公开的数据集一般覆盖的转速范围窄、转速间隔大、载荷单一、缺少复合故障数据,难以支撑故障诊断方法向实用化发展。本文公开了一个宽转速范围的航发主轴轴承振动数据集,该数据集除提供单一故障数据外,也提供了多种轴承复合故障数据,覆盖了不同载荷下宽转速范围的多通道轴承振动信号。数据集很好地支撑了经典故障诊断算法的研究,同时由于数据覆盖的转速范围大,转速采样率高,因此更有利于训练深度学习故障诊断模型。

     

    Abstract: Bearing fault diagnosis is an important research topic in aviation engine prediction and health management. Signal processing algorithms and deep learning models in this field rely on datasets. However, publicly available datasets generally cover narrow speed ranges, large speed intervals, single loads, and a lack of composite fault data, making it difficult to support the practical development of fault diagnosis methods. This article discloses a vibration dataset of aircraft main shaft bearings with a wide speed range. In addition to providing single fault data, this dataset also provides multiple composite bearing fault data, covering multi-channel bearing vibration signals with a wide speed range under different loads. The dataset well supports the research of classic fault diagnosis algorithms, and due to the large speed range covered by the data and high-speed sampling rate, it is more conducive to training deep learning fault diagnosis models.

     

/

返回文章
返回