Attention-driven transfer learning framework for dynamic model guided time domain chatter detection

被引:0
作者
Chen Yin
Yulin Wang
Jeong Hoon Ko
Heow Pueh Lee
Yuxin Sun
机构
[1] Nanjing University of Science and Technology,School of Mechanical Engineering
[2] National University of Singapore,Department of Mechanical Engineering
[3] Singapore Institute of Manufacturing Technology,State Key Laboratory of Mechanical System and Vibration, School of Mechanical Engineering
[4] Shanghai Jiao Tong University,undefined
来源
Journal of Intelligent Manufacturing | 2024年 / 35卷
关键词
Chatter detection; Dynamic modeling; Attention mechanism; Deep learning; Ensemble learning;
D O I
暂无
中图分类号
学科分类号
摘要
Online chatter detection is crucial to ensure the quality and safety of the high-speed milling process. The rapid development of the deep learning community provides a promising tool for chatter detection. However, most previous chatter detection studies rely on complex signal processing techniques, leading to the separation of feature extraction and chatter detection and reducing detection efficiency. Additionally, these studies are developed for a limited range of machining conditions because the development of their model relies on experimental data, while performing experiments with numerous combinations of machining parameters is expensive and time-consuming. To tackle these drawbacks, this paper proposes a transfer learning chatter detection framework that doesn’t rely on any experimental data. The proposed framework is composed of the dynamic milling process model, the Double Attention-driven One-Dimension Convolutional Neural Networks (DAOCNN), and the ensemble prediction strategy. Firstly, a dynamic milling process model is established to generate simulated cutting force signals over a wide range of machining parameters, providing abundant training data and saving experimental costs. Then, without any complex signal processing method, the detection results are directly predicted by the proposed DAOCNN from the time-domain signals, eliminating the separation of feature extraction and chatter detection. Finally, a novel ensemble prediction strategy is proposed to ensure an accurate and robust prediction. To validate the effectiveness of the proposed framework, actual milling experiments are carried out under different cutting conditions. Moreover, contrastive studies with other detection approaches and ensemble methods are also performed. The results demonstrate that the milling stability is correctly predicted by the proposed method in an accurate and efficient manner, which indicates the proposed framework can be a promising tool for online chatter detection.
引用
收藏
页码:1867 / 1885
页数:18
相关论文
共 174 条
[21]  
Stojanovic V(2019)Understanding and improving deep learning-based rolling bearing fault diagnosis with attention mechanism Signal Processing 51 556-297
[22]  
He S(2021)Intelligent fault diagnosis by fusing domain adversarial training and maximum mean discrepancy via ensemble learning IEEE Transactions on Industrial Informatics 62 39-10855
[23]  
Shi K(2020)Hybrid model- and signal-based chatter detection in the milling process Journal of Mechanical Science and Technology 107 4123-499
[24]  
Luan X(2011)Identification of dynamic instabilities in machining process using the approximate entropy method International Journal of Machine Tools and Manufacture 99 196-1516
[25]  
Dun Y(2012)Analysis of the entropy randomness index for machining chatter detection International Journal of Machine Tools and Manufacture 169 108758-110
[26]  
Zhu L(2020)Ensemble transfer learning for refining stability predictions in milling using experimental stability states The International Journal of Advanced Manufacturing Technology 182 109689-393
[27]  
Yan B(2015)Chatter identification methods on the basis of time series measured during titanium superalloy milling International Journal of Mechanical Sciences 102 278-undefined
[28]  
Wang S(2022)Online milling chatter identification using adaptive Hankel low-rank decomposition Mechanical Systems and Signal Processing 67 10844-undefined
[29]  
Fu Y(2021)A novel chatter detection method for milling using deep convolution neural networks Measurement 173 108585-undefined
[30]  
Zhang Y(2018)A novel method for intelligent fault diagnosis of rolling bearings using ensemble deep auto-encoders Mechanical Systems and Signal Processing 26 485-undefined