School of Computer Science, Yangtze University, Jingzhou 430023, China.
Sensors (Basel). 2022 Feb 12;22(4):1410. doi: 10.3390/s22041410.
Bearings are widely used in various electrical and mechanical equipment. As their core components, failures often have serious consequences. At present, most parameter adjustment methods are still manual adjustments of parameters. This adjustment method is easily affected by prior knowledge, easily falls into the local optimal solution, cannot obtain the global optimal solution, and requires a lot of resources. Therefore, this paper proposes a new method for bearing fault diagnosis based on wavelet packet transform and convolutional neural network optimized by a simulated annealing algorithm. Firstly, the original bearing vibration signal is extracted by wavelet packet transform to obtain the spectrogram, and then the obtained spectrogram is sent to the convolutional neural network for parameter adjustment, and finally the simulated annealing algorithm is used to adjust the parameters. To verify the effectiveness of the method, the bearing database of Case Western Reserve University is used for testing, and the traditional intelligent bearing fault diagnosis methods are compared. The results show that the new method for bearing fault diagnosis proposed in this paper has a better and more reliable diagnosis effect than the existing machine learning and deep learning methods.
轴承广泛应用于各种电气和机械设备中。作为其核心部件,故障往往会产生严重后果。目前,大多数参数调整方法仍然是参数的手动调整。这种调整方法容易受到先验知识的影响,容易陷入局部最优解,无法获得全局最优解,并且需要大量资源。因此,本文提出了一种基于小波包变换和卷积神经网络的新的轴承故障诊断方法,该方法通过模拟退火算法进行优化。首先,通过小波包变换提取原始轴承振动信号以获得频谱图,然后将获得的频谱图发送到卷积神经网络进行参数调整,最后使用模拟退火算法调整参数。为了验证该方法的有效性,使用凯斯西储大学的轴承数据库进行测试,并与传统的智能轴承故障诊断方法进行了比较。结果表明,与现有的机器学习和深度学习方法相比,本文提出的新的轴承故障诊断方法具有更好、更可靠的诊断效果。