Department of Electrical, Electronics and Computer Engineering, University of Ulsan, Ulsan 44610, Korea.
Department of Computer Science, American International University-Bangladesh, Dhaka 1229, Bangladesh.
Sensors (Basel). 2021 Dec 22;22(1):56. doi: 10.3390/s22010056.
Statistical features extraction from bearing fault signals requires a substantial level of knowledge and domain expertise. Furthermore, existing feature extraction techniques are mostly confined to selective feature extraction methods namely, time-domain, frequency-domain, or time-frequency domain statistical parameters. Vibration signals of bearing fault are highly non-linear and non-stationary making it cumbersome to extract relevant information for existing methodologies. This process even became more complicated when the bearing operates at variable speeds and load conditions. To address these challenges, this study develops an autonomous diagnostic system that combines signal-to-image transformation techniques for multi-domain information with convolutional neural network (CNN)-aided multitask learning (MTL). To address variable operating conditions, a composite color image is created by fusing information from multi-domains, such as the raw time-domain signal, the spectrum of the time-domain signal, and the envelope spectrum of the time-frequency analysis. This 2-D composite image, named multi-domain fusion-based vibration imaging (), is highly effective in generating a unique pattern even with variable speeds and loads. Following that, these images are fed to the proposed MTL-based CNN architecture to identify faults in variable speed and health conditions concurrently. The proposed method is tested on two benchmark datasets from the bearing experiment. The experimental results suggested that the proposed method outperformed state-of-the-arts in both datasets.
从轴承故障信号中提取统计特征需要相当水平的知识和领域专业知识。此外,现有的特征提取技术大多局限于选择性特征提取方法,即时域、频域或时频域统计参数。轴承故障的振动信号具有高度的非线性和非平稳性,使得现有方法难以提取相关信息。当轴承在变速和变负载条件下运行时,这个过程甚至变得更加复杂。为了解决这些挑战,本研究开发了一种自主诊断系统,该系统将多域信息的信号到图像转换技术与卷积神经网络(CNN)辅助多任务学习(MTL)相结合。为了解决可变操作条件,通过融合来自多个领域的信息(例如原始时域信号、时域信号的频谱和时频分析的包络频谱)创建复合彩色图像。这种 2D 复合图像,命名为基于多域融合的振动成像(),即使在变速和负载变化的情况下,也能有效地生成独特的模式。然后,将这些图像输入到所提出的基于 MTL 的 CNN 架构中,以同时识别变速和健康状况下的故障。该方法在来自轴承实验的两个基准数据集上进行了测试。实验结果表明,该方法在两个数据集上的表现均优于现有技术。