Tool wear monitoring in micromilling using Support Vector Machine with vibration and sound sensors

被引:114
作者
Gomes, Milla Caroline [1 ]
Brito, Lucas Costa [1 ]
da Silva, Marcio Bacci [1 ]
Viana Duarte, Marcus Antonio [1 ]
机构
[1] Univ Fed Uberlandia, Fac Mech Engn, Ave Joao Naves de Avila 2121, BR-38408014 Uberlandia, MG, Brazil
来源
PRECISION ENGINEERING-JOURNAL OF THE INTERNATIONAL SOCIETIES FOR PRECISION ENGINEERING AND NANOTECHNOLOGY | 2021年 / 67卷
关键词
Micromachining; Micromilling; Monitoring; SVM; Tool wear; SIGNALS; AE;
D O I
10.1016/j.precisioneng.2020.09.025
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Cutting tool wear is inevitable and becomes even more critical in micromachining processes, due to the small size of the microtools, which makes it impossible to detect any damage or break in the microtool without the use of high magnification microscopy. Therefore, monitoring the wear conditions of microtools is essential to guarantee the quality of the surfaces generated by micromachining processes. Even with the use of sensors, because of the complexity and similarity of the signals, identifying changes related to variation in wear is not a simple task. To overcome these problems, this paper presents a new approach to monitor the wear of cutting tools used in the micromilling process using SVM (Support Vector Machine) artificial intelligence model, vibration and sound signals. The signals were acquired for microchannels manufactured using carbide microtools coated with (Al, Ti) N, with a cutting diameter of 400 mu m. The input features for the model were selected using the RFE method (Recursive Feature Elimination). In addition to the main objective, the behavior of the wear curve of the microtool in relation to the wear curve of the conventional machining process was studied. The results showed that the behavior of the curves were similar and the microtool with shorter cutting length had a longer life. The proposed classification methodology obtained a classification accuracy of up to 97.54%, showing that it is possible to use it to monitor the cutting tool wear.
引用
收藏
页码:137 / 151
页数:15
相关论文
共 26 条
[1]   Prediction and experimental validation of micro-milling cutting forces of AISI H13 steel at hardness between 35 and 60 HRC [J].
Afazov, S. M. ;
Ratchev, S. M. ;
Segal, J. .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2012, 62 (9-12) :887-899
[2]   Size effect and tool geometry in micromilling of tool steel [J].
Aramcharoen, A. ;
Mativenga, P. T. .
PRECISION ENGINEERING-JOURNAL OF THE INTERNATIONAL SOCIETIES FOR PRECISION ENGINEERING AND NANOTECHNOLOGY, 2009, 33 (04) :402-407
[3]  
Bhushan B., 1999, Principles and Applications of Tribology
[4]  
Câmara MA, 2012, J MATER SCI TECHNOL, V28, P673
[5]   Overview of Support Vector Machine in Modeling Machining Performances [J].
Deris, Ashanira Mat ;
Zain, Azlan Mohd ;
Sallehuddin, Roselina .
INTERNATIONAL CONFERENCE ON ADVANCES IN ENGINEERING 2011, 2011, 24 :308-312
[6]   Tungsten carbide micro-tool wear when micro milling UNS 532205 duplex stainless steel [J].
dos Santos, Aline Goncalves ;
da Sila, Marcio Bacci ;
Jackson, Mark J. .
WEAR, 2018, 414 :109-117
[7]  
Evans B, 2001, MED DEVICE DIAGN IND, V11
[8]   Application of backpropagation neural network for spindle vibration-based tool wear monitoring in micro-milling [J].
Hsieh, Wan-Hao ;
Lu, Ming-Chyuan ;
Chiou, Shean-Juinn .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2012, 61 (1-4) :53-61
[9]   Application of AE and cutting force signals in tool condition monitoring in micro-milling [J].
Jemielniak, K. ;
Arrazola, P. J. .
CIRP JOURNAL OF MANUFACTURING SCIENCE AND TECHNOLOGY, 2008, 1 (02) :97-102
[10]  
Khalili K, 2013, J MEAS ENG, V1, P171