基于度量的元学习关系网络跨域少弹轴承故障诊断

IF 4.3 2区 综合性期刊 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Wei Gao;Zhiqiang Xu;Youssef Akoudad
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引用次数: 0

摘要

深度学习(DL)技术最近在轴承故障诊断领域显示出巨大的前景,但其性能往往受到实际挑战的限制,例如故障数据不足和现实工业环境中的各种工作条件。此外,传统的深度迁移学习(TL)方法通常需要对特定任务进行广泛的参数微调,从而降低了它们在快速部署至关重要的情况下的适应性。为了解决这些问题,我们提出了一种新的基于度量的元学习(ML)关系网络(RN),设计用于跨不同领域的少量轴承故障诊断。该方法直接针对工业需求:在看不见的操作条件下,用最少的训练样本进行准确的故障检测。这种能力对于资源受限环境下的预测性维护系统至关重要。首先将不同工况下的振动信号转换成二维时频图像。然后将这些样本划分为元训练集和元测试集,每个集根据ML策略进一步划分为支持和查询子集。在此基础上,引入残差收缩非局部(RSNL)特征提取模块,对两个子集的特征进行提取和组合。随后,采用非线性度量的神经网络计算支持集和查询集之间的相似度得分。所提出的方法即使在有限的数据样本和未知的工作条件下,也能快速准确地诊断轴承故障,这在维修车间和现场作业中是典型的。在三个数据集上的对比测试表明,我们的方法在不同的工作条件和噪音水平下优于现有方法,突出了其在实际工业应用中减少计划外停机时间和提高设备可靠性的潜力。实验结果进一步验证了该方法的鲁棒泛化和快速适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Metric-Based Meta-Learning Relation Network for Cross-Domain Few-Shot Bearing Fault Diagnosis
Deep learning (DL) techniques have recently shown great promise in the field of bearing fault diagnosis, yet their performance is often limited by practical challenges such as insufficient fault data and varied working conditions in real-world industrial settings. Furthermore, traditional deep transfer learning (TL) approaches often require extensive parameter fine-tuning for specific tasks, thus reducing their adaptability in scenarios where rapid deployment is crucial. To address these issues, we propose a novel metric-based meta-learning (ML) relation network (RN) designed for few-shot bearing fault diagnosis across diverse domains. This method directly targets an industrial need: accurate fault detection with minimal training samples under unseen operational conditions. This capability is critical for predictive maintenance systems in resource-constrained environments. Vibration signals from various working conditions are first transformed into 2-D time-frequency images (TFIs). These samples are then divided into meta-training and meta-testing sets, with each set further split into support and query subsets according to an ML strategy. Following this division, a residual shrinkage nonlocal (RSNL) feature extraction module is introduced to extract and combine features from both subsets. A neural network with a nonlinear metric is subsequently employed to compute similarity scores between the support and query sets. The proposed method enables rapid and precise bearing fault diagnosis, even with limited data samples and under unknown working conditions, which are typical in maintenance workshops and field operations. Comparative tests on three datasets demonstrate that our approach outperforms existing methods under different working conditions and noise levels, highlighting its potential to reduce unplanned downtime and improve equipment reliability in real industrial applications. The experimental results further confirm the method’s robust generalization and rapid adaptability.
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来源期刊
IEEE Sensors Journal
IEEE Sensors Journal 工程技术-工程:电子与电气
CiteScore
7.70
自引率
14.00%
发文量
2058
审稿时长
5.2 months
期刊介绍: The fields of interest of the IEEE Sensors Journal are the theory, design , fabrication, manufacturing and applications of devices for sensing and transducing physical, chemical and biological phenomena, with emphasis on the electronics and physics aspect of sensors and integrated sensors-actuators. IEEE Sensors Journal deals with the following: -Sensor Phenomenology, Modelling, and Evaluation -Sensor Materials, Processing, and Fabrication -Chemical and Gas Sensors -Microfluidics and Biosensors -Optical Sensors -Physical Sensors: Temperature, Mechanical, Magnetic, and others -Acoustic and Ultrasonic Sensors -Sensor Packaging -Sensor Networks -Sensor Applications -Sensor Systems: Signals, Processing, and Interfaces -Actuators and Sensor Power Systems -Sensor Signal Processing for high precision and stability (amplification, filtering, linearization, modulation/demodulation) and under harsh conditions (EMC, radiation, humidity, temperature); energy consumption/harvesting -Sensor Data Processing (soft computing with sensor data, e.g., pattern recognition, machine learning, evolutionary computation; sensor data fusion, processing of wave e.g., electromagnetic and acoustic; and non-wave, e.g., chemical, gravity, particle, thermal, radiative and non-radiative sensor data, detection, estimation and classification based on sensor data) -Sensors in Industrial Practice
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