Siddique Muhammad Farooq, Zaman Wasim, Ullah Saif, Umar Muhammad, Saleem Faisal, Shon Dongkoo, Yoon Tae Hyun, Yoo Dae-Seung, Kim Jong-Myon
Department of Electrical, Electronics and Computer Engineering, University of Ulsan, Ulsan 44610, Republic of Korea.
Electronics and Telecommunications Research Institute (ETRI), Daejeon 34129, Republic of Korea.
Sensors (Basel). 2024 Nov 15;24(22):7303. doi: 10.3390/s24227303.
Accurate and reliable bearing-fault diagnosis is important for ensuring the efficiency and safety of industrial machinery. This paper presents a novel method for bearing-fault diagnosis using Mel-transformed scalograms obtained from vibrational signals (VS). The signals are windowed and pass through a Mel filter bank, converting them into a Mel spectrum. These scalograms are subsequently fed into an autoencoder comprising convolutional and pooling layers to extract robust features. The classification is performed using an artificial neural network (ANN) optimized with the FOX optimizer, which replaces traditional backpropagation. The FOX optimizer enhances synaptic weight adjustments, leading to superior classification accuracy, minimal loss, improved generalization, and increased interpretability. The proposed model was validated on a laboratory dataset obtained from a bearing testbed with multiple fault conditions. Experimental results demonstrate that the model achieves perfect precision, recall, F1-scores, and an AUC of 1.00 across all fault categories, significantly outperforming comparison models. The t-SNE plots illustrate clear separability between different fault classes, confirming the model's robustness and reliability. This approach offers an efficient and highly accurate solution for real-time predictive maintenance in industrial applications.
准确可靠的轴承故障诊断对于确保工业机械的效率和安全至关重要。本文提出了一种利用从振动信号(VS)获得的梅尔变换频谱图进行轴承故障诊断的新方法。对信号加窗并通过梅尔滤波器组,将其转换为梅尔频谱。随后将这些频谱图输入到一个由卷积层和池化层组成的自动编码器中,以提取鲁棒特征。使用经过FOX优化器优化的人工神经网络(ANN)进行分类,该优化器取代了传统的反向传播。FOX优化器增强了突触权重调整,从而实现了更高的分类准确率、最小的损失、更好的泛化能力以及更高的可解释性。所提出的模型在从具有多种故障条件的轴承试验台获得的实验室数据集上进行了验证。实验结果表明,该模型在所有故障类别上均实现了完美的精度、召回率、F1分数以及1.00的AUC值(曲线下面积),显著优于比较模型。t-SNE图表明不同故障类别之间具有明显的可分离性,证实了该模型的鲁棒性和可靠性。这种方法为工业应用中的实时预测性维护提供了一种高效且高度准确的解决方案。