Title
Tool Fault Diagnosis Based on Improved Multiscale Network and Feature Fusion
Abstract
Prognostic and health management is a key issue in the field of machine tool manufacturing. As the “teeth” of CNC machine tools, their health status directly affects the machining efficiency and the quality of products. Accurate monitoring of tool wear can help to avoid product quality problems caused by tool failure and improve productivity. In this paper, we investigate the deep learning-based tool fault diagnosis approach. First, a new data-driven tool fault diagnosis method based on improved multiscale network and feature fusion (IMSNet-F) is proposed to recognize and classify the tool wear condition. It can increase the efficiency of the process and make it possible to replace the tool before catastrophic wear occurs. And then, a tool wear experimental system is designed to verify the performance of the proposed tool fault diagnosis method in a real production scenario. Besides, based on the tool wear experimental system, a data set of vibration signals used to detect tool wear conditions is constructed and publicly released. Experimental results show the proposed approach can improve the tool fault diagnosis accuracy by 2.2% compared to existing methods.
Year
DOI
Venue
2021
10.1109/ICPHM51084.2021.9486491
2021 IEEE International Conference on Prognostics and Health Management (ICPHM)
Keywords
DocType
ISBN
Prognostics and health management,tool fault diagnosis,deep learning,tool wear experimental system,intelligent manufacturing
Conference
978-1-6654-2996-2
Citations 
PageRank 
References 
0
0.34
0
Authors
9
Name
Order
Citations
PageRank
Dongyang Li100.34
Dongfeng Yuan2809.09
Daojun Liang300.34
Zijun Di400.34
Mingqiang Zhang531.39
Feng Cao600.34
Miaomiao Xin700.34
Tengfei Lei800.34
Mingyan Jiang900.34