학술논문

Tool Health Classification in Metallic Milling Process Using Acoustic Emission and Long Short-Term Memory Networks: A Deep Learning Approach
Document Type
Periodical
Source
IEEE Access Access, IEEE. 11:126611-126633 2023
Subject
Aerospace
Bioengineering
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Engineered Materials, Dielectrics and Plasmas
Engineering Profession
Fields, Waves and Electromagnetics
General Topics for Engineers
Geoscience
Nuclear Engineering
Photonics and Electrooptics
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Transportation
Condition monitoring
Milling
Feature extraction
Vibrations
Turning
Mathematical models
Force
Long short term memory
Long short-term memory networks (LSTM)
model test accuracy
tool condition monitoring
Language
ISSN
2169-3536
Abstract
The manufacturing industry has experienced remarkable progress as a result of integrating automated and intelligent production processes fueled by technological innovation, leading to substantial advancements. These advanced processes involve the use of flexible and high-performance machines, tackling complex and sophisticated processing problems with ease. However, the processing performance can deteriorate due to tool damage or malfunction, which can lead to the discarding of workpieces. Hence, it carries immense importance to have a close look over the condition of the tool throughout the processing to proactively address any potential issues and minimize the possibility of significant tool failures, particularly when manufacturing intricate and costly machine components. Many researchers have looked at the use of machine learning and deep learning approaches for monitoring tool condition. In this study, we are incorporating time series sequential data for which LSTM is the best opted technique. It further explains, how deep learning using Long Short-Term Memory Networks (LSTM) and the acoustic data acquired through a microphone during the metallic milling process has a potential and achieved impressive results. In our study, the accuracy of the model was assessed for different workpiece materials, including Aluminum, Mild Steel, and Brass, and demonstrated the model’s ability to make highly accurate predictions. Specifically, the model achieved an average test accuracy of 99.03% for Aluminum workpieces, while achieving very good test accuracies of 97.16% and 97.83% for Mild Steel and Brass workpieces, respectively. These results were benchmarked against previous work in the same domain, confirming the efficacy of the model.