机械加工
停工期
刀具
刀具磨损
特征(语言学)
特征提取
人工神经网络
人工智能
计算机科学
组分(热力学)
机床
研磨
工程类
卷积神经网络
机器学习
模式识别(心理学)
可靠性工程
机械工程
语言学
哲学
物理
热力学
作者
Sameer Sayyad,Satish Kumar,Arunkumar Bongale,Ketan Kotecha,Ajith Abraham
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2023-06-17
卷期号:23 (12): 5659-5659
被引量:15
摘要
The milling machine serves an important role in manufacturing because of its versatility in machining. The cutting tool is a critical component of machining because it is responsible for machining accuracy and surface finishing, impacting industrial productivity. Monitoring the cutting tool’s life is essential to avoid machining downtime caused due to tool wear. To prevent the unplanned downtime of the machine and to utilize the maximum life of the cutting tool, the accurate prediction of the remaining useful life (RUL) cutting tool is essential. Different artificial intelligence (AI) techniques estimate the RUL of cutting tools in milling operations with improved prediction accuracy. The IEEE NUAA Ideahouse dataset has been used in this paper for the RUL estimation of the milling cutter. The accuracy of the prediction is based on the quality of feature engineering performed on the unprocessed data. Feature extraction is a crucial phase in RUL prediction. In this work, the authors considers the time–frequency domain (TFD) features such as short-time Fourier-transform (STFT) and different wavelet transforms (WT) along with deep learning (DL) models such as long short-term memory (LSTM), different variants of LSTN, convolutional neural network (CNN), and hybrid models that are a combination of CCN with LSTM variants for RUL estimation. The TFD feature extraction with LSTM variants and hybrid models performs well for the milling cutting tool RUL estimation.
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