Ni Yunfeng, Li Shuang, Guo Ping
Xi'an University Of Science And Technology, Xi'an, China.
Sci Rep. 2025 May 9;15(1):16185. doi: 10.1038/s41598-025-99346-5.
Bearing faults in rotating machinery can lead to significant economic losses due to downtime and pose serious safety risks. Accurate fault diagnosis is crucial for effective condition monitoring. Traditional methods for diagnosing bearing faults under noisy conditions often rely on complex data preprocessing and struggle to maintain accuracy in high-noise environments. To address this challenge, this paper proposes an end-to-end Discrete Wavelet Integrated Convolutional Residual Neural Network (DWCResNet) for bearing fault diagnosis. The model incorporates Discrete Wavelet Transform (DWT) layers to replace traditional downsampling operations in convolutional neural networks, decomposing input signals into low-frequency and high-frequency components to effectively remove high-frequency noise and extract fault features, thereby improving diagnostic performance. The cyclic learning rate strategy enhances training efficiency. Experiments conducted on the Case Western Reserve University (CWRU) and Paderborn University (PU) bearing datasets demonstrate that DWCResNet achieves higher diagnostic accuracy and noise robustness under various conditions, providing an efficient solution for bearing fault diagnosis in complex noisy environments.
旋转机械中的轴承故障会因停机导致重大经济损失,并带来严重的安全风险。准确的故障诊断对于有效的状态监测至关重要。传统的在噪声环境下诊断轴承故障的方法通常依赖于复杂的数据预处理,并且在高噪声环境中难以保持准确性。为应对这一挑战,本文提出了一种用于轴承故障诊断的端到端离散小波集成卷积残差神经网络(DWCResNet)。该模型结合离散小波变换(DWT)层来取代卷积神经网络中的传统下采样操作,将输入信号分解为低频和高频分量,以有效去除高频噪声并提取故障特征,从而提高诊断性能。循环学习率策略提高了训练效率。在凯斯西储大学(CWRU)和帕德博恩大学(PU)轴承数据集上进行的实验表明,DWCResNet在各种条件下都能实现更高的诊断准确性和噪声鲁棒性,为复杂噪声环境下的轴承故障诊断提供了一种有效的解决方案。