Multivariate Time-Series Classification of Critical Events from Industrial Drying Hopper Operations: A Deep Learning Approach

IF 3.3 Q2 ENGINEERING, MANUFACTURING
Md Mushfiqur Rahman, M. A. Farahani, Thorsten Wuest
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引用次数: 2

Abstract

In recent years, the advancement of Industry 4.0 and smart manufacturing has made a large amount of industrial process data attainable with the use of sensors installed on machines. This paper proposes an experimental predictive maintenance framework for an industrial drying hopper so that it can detect any unusual event in the hopper, which reduces the risk of erroneous fault diagnosis in the manufacturing shop floor. The experimental framework uses Deep Learning (DL) algorithms to classify Multivariate Time-Series (MTS) data into two categories—failure or unusual events and regular events—thus formulating the problem as a binary classification. The raw data extracted from the sensors contained missing values, suffered from imbalancedness, and were not labeled. Therefore, necessary preprocessing is performed to make them usable for DL algorithms and the dataset is self-labeled after defining the two categories precisely. To tackle the imbalanced data issue, data balancing techniques like ensemble learning with undersampling and Synthetic Minority Oversampling Technique (SMOTE) are used. Moreover, along with DL algorithms like Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM), Machine Learning (ML) algorithms like Support Vector Machine (SVM) and K-nearest neighbor (KNN) have also been used to perform a comparative analysis on the results obtained from these algorithms. The result shows that CNN is arguably the best algorithm for classifying this dataset into two categories and outperforms other traditional approaches as well as deep learning algorithms.
工业干燥料斗操作关键事件的多变量时间序列分类:一种深度学习方法
近年来,随着工业4.0和智能制造的发展,通过使用安装在机器上的传感器,可以获得大量的工业过程数据。本文提出了一种工业干燥料斗的实验预测性维护框架,使其能够检测料斗中的任何异常事件,从而降低制造车间错误诊断的风险。该实验框架使用深度学习(DL)算法将多变量时间序列(MTS)数据分为两类——故障或异常事件和常规事件——从而将问题公式化为二元分类。从传感器中提取的原始数据包含缺失的值,存在不平衡,并且没有标记。因此,执行必要的预处理以使它们可用于DL算法,并且在精确定义两个类别后对数据集进行自标记。为了解决不平衡的数据问题,使用了数据平衡技术,如欠采样集成学习和合成少数过采样技术(SMOTE)。此外,除了卷积神经网络(CNN)和长短期记忆(LSTM)等DL算法外,还使用了支持向量机(SVM)和K近邻(KNN)等机器学习(ML)算法来对从这些算法获得的结果进行比较分析。结果表明,CNN可以说是将该数据集分为两类的最佳算法,并且优于其他传统方法和深度学习算法。
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
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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