IJAT Vol.15 No.5 pp. 689-695
doi: 10.20965/ijat.2021.p0689


Online Monitoring Method for Mold Deformation Using Mahalanobis Distance

Yoshio Fukushima and Naoki Kawada

Saitama Institute of Technology
1690 Fusaiji, Fukaya, Saitama 369-0293, Japan

Corresponding author

September 10, 2020
March 26, 2021
September 5, 2021
mold deformation, injection molding, Mahalanobis distance, monitoring system

Based on the rapid advancement of IoT technology, it has become pervasive in various industries for promoting effective production, including the plastic injection molding industry. In this study, a fundamental investigation of mold deformation was conducted to develop a monitoring system. Mahalanobis distance (MD), which is calculated from mold strain data, was adopted in this monitoring system. We determined that the simple MD index is helpful for judging between normal and abnormal mold states. This index is expected to be a key component of future IoT applications.

Cite this article as:
Y. Fukushima and N. Kawada, “Online Monitoring Method for Mold Deformation Using Mahalanobis Distance,” Int. J. Automation Technol., Vol.15 No.5, pp. 689-695, 2021.
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Last updated on Jul. 19, 2024