Fault diagnosis for rolling bearings based on generalised dispersive mode decomposition and accugram

Xianyou Zhong, Liu He, Gang Wan, Yang Zhao
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Abstract

Bearing fault diagnosis helps to ensure the safe operation of electromechanical equipment and reduce unnecessary losses due to downtime. The interference of noise in the signal poses a challenge in the effective identification of rolling bearing faults. To address the above problems, this paper proposes a rolling bearing fault diagnosis (RBFD) method based on generalised dispersive mode decomposition (GDMD) and an accugram. Firstly, the bearing signal is decomposed using GDMD and the optimal number of decomposition modes is chosen using a new index based on the correlation coefficient and accuracy. According to the number of determined decomposition modes, the fault signal is reconstructed. Then, the centre frequency and bandwidth of the resonant frequency are determined using an accugram. Finally, the fault signal is filtered and analysed using a square envelope spectrum to achieve rolling bearing fault diagnosis. Experimental signal analysis verifies the effectiveness and feasibility of the method. The method is applied to the early fault diagnosis of rolling bearings and compared with kurtogram and accugram results. The results show that the approach can not only effectively avoid the interference of external impacts but it can also correctly recognise the fault characteristic frequency band.
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基于广义分散模式分解和 accugram 的滚动轴承故障诊断技术
轴承故障诊断有助于确保机电设备的安全运行,减少因停机造成的不必要损失。信号中的噪声干扰给有效识别滚动轴承故障带来了挑战。针对上述问题,本文提出了一种基于广义色散模态分解(GDMD)和增量谱的滚动轴承故障诊断(RBFD)方法。首先,使用 GDMD 对轴承信号进行分解,并使用基于相关系数和准确度的新指标选择最佳分解模式数。根据确定的分解模式数重建故障信号。然后,使用 Accugram 确定共振频率的中心频率和带宽。最后,利用方包络谱对故障信号进行滤波和分析,从而实现滚动轴承故障诊断。实验信号分析验证了该方法的有效性和可行性。该方法被应用于滚动轴承的早期故障诊断,并与库尔特图和增量谱结果进行了比较。结果表明,该方法不仅能有效避免外部冲击的干扰,还能正确识别故障特征频带。
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