Anomalous Change Detection in Drilling Process Using Variational Autoencoder with Temperature Near Drill Edge

IF 0.9 Q4 AUTOMATION & CONTROL SYSTEMS
Haruhiko Suwa, Kazuya Oda, Koji Murakami
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引用次数: 0

Abstract

The different flexibility and diversity requirements for respective manufacturing units have made modern cutting tool management much more crucial and complicated, as a greater variety of tools and more frequent tool changes are required to enhance production efficiency and avoid unplanned manufacturing downtime. Developing in-process anomalous change detection methods has been identified as an essential challenge. Machine learning techniques have been widely applied in tool condition monitoring and anomalous change detection. As anomaly data is rare in manufacturing processes, supervised machine learning approaches (such as regression and classification) are not applied to the anomalous change detection problem. Rather, self-supervised machine learning (a representative type of unsupervised machine learning) is applied. This study describes a variational autoencoder (VAE) neural network and proposes a VAE-based method for tool condition monitoring and change detection in a drilling process using the temperature near a drill edge. The proposed VAE evaluates the drill tool condition based on the reconstruction error between the input temperature and its estimate per a drill unit process through the trained network. Computational simulations demonstrate that the proposed VAE network model can avoid overfitting to the anomaly data and that its expressive power is greater than that of the conventional autoencoder model.
钻边温度变分自编码器在钻孔过程中的异常变化检测
不同制造单元的不同灵活性和多样性要求使得现代刀具管理变得更加关键和复杂,因为需要更多种类的刀具和更频繁的刀具更换来提高生产效率并避免计划外的制造停机时间。开发进程内异常变化检测方法已被确定为一项基本挑战。机器学习技术在刀具状态监测和异常变化检测中得到了广泛的应用。由于异常数据在制造过程中是罕见的,监督机器学习方法(如回归和分类)不应用于异常变化检测问题。相反,应用自监督机器学习(无监督机器学习的代表类型)。本研究描述了一种变分自编码器(VAE)神经网络,并提出了一种基于变分自编码器的方法,利用钻头边缘附近的温度来监测钻井过程中的工具状态和变化检测。所提出的VAE通过训练后的网络,基于每钻单元过程中输入温度与估计温度之间的重构误差来评估钻具状态。计算仿真结果表明,所提出的VAE网络模型可以避免异常数据的过拟合,并且其表达能力优于传统的自编码器模型。
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
International Journal of Automation Technology
International Journal of Automation Technology AUTOMATION & CONTROL SYSTEMS-
CiteScore
2.10
自引率
36.40%
发文量
96
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