Tool Wear Monitoring System Using Seq2Seq

Author:

Jeon Wang-Su1ORCID,Rhee Sang-Yong1

Affiliation:

1. Department of Computer Engineering, University of Kyungnam, Changwon 51767, Republic of Korea

Abstract

The advancement of smart factories has brought about small quantity batch production. In multi-variety production, both materials and processing methods change constantly, resulting in irregular changes in the progression of tool wear, which is often affected by processing methods. This leads to changes in the timing of tool replacement, and failure to correctly determine this timing may result in substantial damage and financial loss. In this study, we sought to address the issue of incorrect timing for tool replacement by using a Seq2Seq model to predict tool wear. We also trained LSTM and GRU models to compare performance by using R2, mean absolute error (MAE), and mean squared error (MSE). The Seq2Seq model outperformed LSTM and GRU with an R2 of approximately 0.03~0.037 in step drill data, 0.540.57 in top metal data, and 0.16~0.45 in low metal data. Confirming that Seq2Seq exhibited the best performance, we established a real-time monitoring system to verify the prediction results obtained using the Seq2Seq model. It is anticipated that this monitoring system will help prevent accidents in advance.

Funder

National Research Foundation of Korea

Publisher

MDPI AG

Reference19 articles.

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3. Jhang, S.S., Song, Y.H., Kwon, J.Y., Lee, H.J., Song, M.C., and Lee, J.S. (2022, January 16–18). Research on CNN-based learning, cutting tool condition analysis. Proceedings of the Fall Conference of Korean Institute of Information Technology, Gyeongju, Republic of Korea.

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