Self-supervised learning for tool wear monitoring with a disentangled-variational-autoencoder

IF 5.3 Q1 ENGINEERING, MECHANICAL
T. Hahn, C. Mechefske
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引用次数: 44

Abstract

: The use of end-to-end deep learning in machinery health monitoring allows machine learning models to be created without the need for feature engineering. The research presented here expands on this use in the context of tool wear monitoring. A disentangled-variational-autoencoder, with a temporal convolutional neural network, is used to model and trend tool wear in a self-supervised manner, and anomaly detection is used to make predictions from both the input and latent spaces. The method achieves a precision-recall area-under-curve (PR-AUC) score of 0.45 across all cutting parameters on a milling dataset, and a top score of 0.80 for shallow depth cuts. The method achieves a top PR-AUC score of 0.41 on a real-world industrial CNC dataset, but the method does not generalise as well across the broad range of manufactured parts. The benefits of the approach, along with the drawbacks, are discussed in detail.
自监督学习的工具磨损监测与解纠缠变分自编码器
:在机器健康监测中使用端到端深度学习可以创建机器学习模型,而无需进行特征工程。本文提出的研究在工具磨损监测的背景下扩展了这种应用。使用带有时间卷积神经网络的解纠缠变分自编码器以自监督的方式对工具磨损进行建模和趋势分析,并使用异常检测从输入空间和潜在空间进行预测。该方法在铣削数据集的所有切削参数中实现了精确召回率曲线下面积(PR-AUC)得分为0.45,对于浅深度切削,最高得分为0.80。该方法在现实世界的工业CNC数据集上实现了0.41的最高PR-AUC得分,但该方法不能在广泛的制造零件范围内进行推广。详细讨论了该方法的优点和缺点。
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
7.60
自引率
0.00%
发文量
32
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