A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform

In this paper, an analysis and monitoring algorithm is proposed for mold health evaluation using vibration data. Two inertial measurement units (IMUs) and an embedded system are first used to acquire vibration data from a powder metallurgy molding machine. These data are collected on an Internet of...

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Published in:Sensors
Main Authors: Hao-Pu Lin, Yuan-Chieh Chen, Chin-Chuan Han, Yu-Chi Wu, Jin-Yuan Lin
Format: Article
Language:English
Published: MDPI AG 2025-03-01
Subjects:
Online Access:https://www.mdpi.com/1424-8220/25/7/2143
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author Hao-Pu Lin
Yuan-Chieh Chen
Chin-Chuan Han
Yu-Chi Wu
Jin-Yuan Lin
author_facet Hao-Pu Lin
Yuan-Chieh Chen
Chin-Chuan Han
Yu-Chi Wu
Jin-Yuan Lin
author_sort Hao-Pu Lin
collection DOAJ
container_title Sensors
description In this paper, an analysis and monitoring algorithm is proposed for mold health evaluation using vibration data. Two inertial measurement units (IMUs) and an embedded system are first used to acquire vibration data from a powder metallurgy molding machine. These data are collected on an Internet of Things (IoT) platform using the Message Queueing Telemetry Transport (MQTT) protocol. For data analysis, the vibration signal on the <i>Z</i> axis is segmented to label the contact section of the upper and middle molds, and the corresponding vibration data of the stamping friction on the X, Y, and Z axes are extracted. Using only historical vibration data from normal stamping, a Bidirectional Long Short-Term Memory (Bi-LSTM) model with an attention mechanism is trained to predict normal stamping vibrations several minutes in advance. By comparing the predicted stamping vibrations with the observed data at the current time, the mean square errors (MSEs) are calculated to evaluate the health status of the mold. Several ablation experiments were conducted to assess the performance of the trained model. The average MSE values for normal samples and abnormal samples were smaller than 0.5 and larger than 1.0, respectively. The experimental results confirm that the trained prediction model and evaluation indicators can effectively notify operators in advance. An early warning system using vibration data for mold damage was successfully implemented, enhancing predictive maintenance.
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spelling doaj-art-42895cfdccff4ff09b25b5028f6aa2ec2025-08-20T03:03:23ZengMDPI AGSensors1424-82202025-03-01257214310.3390/s25072143A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things PlatformHao-Pu Lin0Yuan-Chieh Chen1Chin-Chuan Han2Yu-Chi Wu3Jin-Yuan Lin4Ph. D. Program in Material and Chemical Engineering, National United University, MiaoLi 360302, TaiwanDepartment of Computer Science and Information Engineering, National United University, MiaoLi 360302, TaiwanDepartment of Computer Science and Information Engineering, National United University, MiaoLi 360302, TaiwanDepartment of Electrical Engineering, National United University, MiaoLi 360302, TaiwanDepartment of Electrical Engineering, National United University, MiaoLi 360302, TaiwanIn this paper, an analysis and monitoring algorithm is proposed for mold health evaluation using vibration data. Two inertial measurement units (IMUs) and an embedded system are first used to acquire vibration data from a powder metallurgy molding machine. These data are collected on an Internet of Things (IoT) platform using the Message Queueing Telemetry Transport (MQTT) protocol. For data analysis, the vibration signal on the <i>Z</i> axis is segmented to label the contact section of the upper and middle molds, and the corresponding vibration data of the stamping friction on the X, Y, and Z axes are extracted. Using only historical vibration data from normal stamping, a Bidirectional Long Short-Term Memory (Bi-LSTM) model with an attention mechanism is trained to predict normal stamping vibrations several minutes in advance. By comparing the predicted stamping vibrations with the observed data at the current time, the mean square errors (MSEs) are calculated to evaluate the health status of the mold. Several ablation experiments were conducted to assess the performance of the trained model. The average MSE values for normal samples and abnormal samples were smaller than 0.5 and larger than 1.0, respectively. The experimental results confirm that the trained prediction model and evaluation indicators can effectively notify operators in advance. An early warning system using vibration data for mold damage was successfully implemented, enhancing predictive maintenance.https://www.mdpi.com/1424-8220/25/7/2143intelligence systemvibration dataInternet of Things (IoT)deep learninginertial measurement unit (IMU)mean square error
spellingShingle Hao-Pu Lin
Yuan-Chieh Chen
Chin-Chuan Han
Yu-Chi Wu
Jin-Yuan Lin
A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform
intelligence system
vibration data
Internet of Things (IoT)
deep learning
inertial measurement unit (IMU)
mean square error
title A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform
title_full A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform
title_fullStr A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform
title_full_unstemmed A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform
title_short A Mold Damage Monitoring Algorithm for Power Metallurgy Molding Machines Using Bidirectional Long Short-Term Memory on an Internet of Things Platform
title_sort mold damage monitoring algorithm for power metallurgy molding machines using bidirectional long short term memory on an internet of things platform
topic intelligence system
vibration data
Internet of Things (IoT)
deep learning
inertial measurement unit (IMU)
mean square error
url https://www.mdpi.com/1424-8220/25/7/2143
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