Zhang Xuqun, Ma Yumei, Pan Zhenkuan, Wang Guodong
College of Computer Science & Technology, Qingdao University, Qingdao 266071, China.
ISA Trans. 2024 May;148:279-284. doi: 10.1016/j.isatra.2024.03.020. Epub 2024 Mar 25.
Rolling bearings constitute one of the most vital components in mechanical equipment, monitoring and diagnosing the condition of rolling bearings is essential to ensure safe operation. In actual production, the collected fault signals typically contain noise and cannot be accurately identified. In the paper, stochastic resonance (SR) is introduced into a spiking neural network (SNN) as a feature enhancement method for fault signals with varying noise intensities, combining deep learning with SR to enhance classification accuracy. The output signal-to-noise ratio(SNR) can be enhanced with the SR effect when the noise-affected fault signal input into neurons. Validation of the method is carried out through experiments on the CWRU dataset, achieving classification accuracy of 99.9%. In high-noise environments, with SNR equal to -8 dB, SRDNs achieve over 92% accuracy, exhibiting better robustness and adaptability.
滚动轴承是机械设备中最重要的部件之一,监测和诊断滚动轴承的状态对于确保安全运行至关重要。在实际生产中,采集到的故障信号通常包含噪声,无法准确识别。本文将随机共振(SR)引入脉冲神经网络(SNN),作为一种针对不同噪声强度的故障信号的特征增强方法,将深度学习与随机共振相结合以提高分类准确率。当受噪声影响的故障信号输入到神经元时,随机共振效应可提高输出信噪比(SNR)。通过在CWRU数据集上进行实验对该方法进行验证,分类准确率达到99.9%。在信噪比等于-8 dB的高噪声环境中,随机共振深度神经网络(SRDNs)的准确率超过92%,表现出更好的鲁棒性和适应性。