A Few-Shot Learning Based Fault Diagnosis Model Using Sensors Data from Industrial Machineries

IF 1.9 Q3 ENGINEERING, MECHANICAL
Vibration Pub Date : 2023-11-14 DOI:10.3390/vibration6040059
Farhan Md. Siraj, Syed Tasnimul Karim Ayon, Jia Uddin
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引用次数: 0

Abstract

Efficient maintenance in the face of complex and interconnected industrial equipment is crucial for corporate competitiveness. Traditional reactive approaches often prove inadequate, necessitating a shift towards proactive strategies. This study addresses the challenges of data scarcity and timely defect identification by providing practical guidance for selecting optimal solutions for various equipment malfunction scenarios. Utilizing three datasets—Machine Sound to Machine Condition Monitoring and Intelligent Information (MIMII), Case Western Reserve University (CWRU), and Machinery Failure Prevention Technology (MFPT)—the study employs the Short-Time Fourier Transform (STFT) as a preprocessing method to enhance feature extraction. To determine the best preprocessing technique, Gammatone Transformation, and raw data are also considered. The research optimizes performance and training efficiency by adjusting hyperparameters, minimizing overfitting, and using the KERAS Early Halting API within resource constraints. To address data scarcity, which is one of the major obstacles to detecting faults in the industrial environment, Few-shot learning (FSL) is employed. Various architectures, including ConvNeXt Base, Large MobileNetV3, ResNet-18, and ResNet-50, are incorporated within a prototypical network-based few-shot learning model. MobileNet’s lower parameter count, high accuracy, efficiency, and portability make it the ideal choice for this application. By combining few-shot learning, MobileNet architecture, and STFT preprocessing, this study proposes a practical and data-efficient fault diagnosis method. The model demonstrates adaptability across datasets, offering valuable insights for enhancing industrial fault detection and preventive maintenance procedures.
基于少量学习的工业机械传感器故障诊断模型
面对复杂和互联的工业设备,高效的维护对企业竞争力至关重要。传统的被动做法往往证明是不够的,因此必须转向主动战略。本研究通过为各种设备故障场景选择最佳解决方案提供实用指导,解决了数据稀缺性和及时缺陷识别的挑战。利用三个数据集——机器声音到机器状态监测和智能信息(MIMII)、凯斯西储大学(CWRU)和机器故障预防技术(MFPT)——研究采用短时傅里叶变换(STFT)作为预处理方法来增强特征提取。为了确定最佳的预处理技术,还考虑了伽玛酮变换和原始数据。该研究通过调整超参数、最小化过拟合以及在资源限制下使用KERAS早期停止API来优化性能和训练效率。为了解决数据稀缺性是工业环境中检测故障的主要障碍之一,采用了少射学习(FSL)方法。各种架构,包括ConvNeXt Base、Large MobileNetV3、ResNet-18和ResNet-50,都被整合在一个基于网络的原型学习模型中。MobileNet的低参数计数,高精度,效率和可移植性使其成为此应用程序的理想选择。本研究通过结合few-shot学习、MobileNet架构和STFT预处理,提出了一种实用且数据高效的故障诊断方法。该模型展示了跨数据集的适应性,为加强工业故障检测和预防性维护程序提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.20
自引率
0.00%
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0
审稿时长
10 weeks
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