Machine Learning based quality prediction for milling processes using internal machine tool data

被引:24
作者
Fertig, A. [1 ]
Weigold, M. [1 ]
Chen, Y. [1 ]
机构
[1] Tech Univ Darmstadt, Inst Prod Management, Technol & Machine Tools PTW, Otto Berndt Str 2, D-64287 Darmstadt, Germany
来源
ADVANCES IN INDUSTRIAL AND MANUFACTURING ENGINEERING | 2022年 / 4卷
关键词
Machine Learning; Milling; Quality prediction; Time series slicing; Machine tool data; ACOUSTIC-EMISSION SIGNALS; FUZZY INFERENCE SYSTEM; SURFACE-ROUGHNESS; MODEL; MALFUNCTIONS; ACCURACY; ERROR;
D O I
10.1016/j.aime.2022.100074
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine tools are increasingly being equipped with edge computing solutions to record internal drive signals with high frequency. A large amount of available data may be used to develop new data-driven approaches to process optimization and quality monitoring. This paper presents a new approach to predict the quality of finished workpieces for three-axis milling processes with end mills. For this purpose, internal machine tool data provided by an edge computing solution was recorded and used to develop a Machine Learning based method for quality prediction. For the preparation of the data, an introduced domain knowledge-based slicing algorithm is applied, which allows the recorded data to be automatically and precisely assigned to the corresponding geometric elements on the workpiece. During data-driven modeling, 9 Machine Learning algorithms are compared to 4 Deep Learning architectures for multivariate time series classification. The results show that ensemble methods like Random Forest and Extra Trees as well as the Deep Learning algorithms InceptionTime and ResNet reach the best performances for the use case of data-based quality prediction.
引用
收藏
页数:12
相关论文
共 62 条
[1]   Using artificial neural networks for the prediction of dimensional error on inclined surfaces manufactured by ball-end milling [J].
Arnaiz-Gonzalez, Alvar ;
Fernandez-Valdivielso, Asier ;
Bustillo, Andres ;
Norberto Lpez de Lacalle, Luis .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2016, 83 (5-8) :847-859
[2]   TSFEL: Time Series Feature Extraction Library [J].
Barandas, Marilia ;
Folgado, Duarte ;
Fernandes, Leticia ;
Santos, Sara ;
Abreu, Mariana ;
Bota, Patricia ;
Liu, Hui ;
Schultz, Tanja ;
Gamboa, Hugo .
SOFTWAREX, 2020, 11
[3]   Predicting surface roughness in machining: a review [J].
Benardos, PG ;
Vosniakos, GC .
INTERNATIONAL JOURNAL OF MACHINE TOOLS & MANUFACTURE, 2003, 43 (08) :833-844
[4]   On the importance of the Pearson correlation coefficient in noise reduction [J].
Benesty, Jacob ;
Chen, Jingdong ;
Huang, Yiteng .
IEEE TRANSACTIONS ON AUDIO SPEECH AND LANGUAGE PROCESSING, 2008, 16 (04) :757-765
[5]  
Botkina Darya, 2020, Procedia CIRP, P1, DOI 10.1016/j.procir.2020.05.155
[6]  
Brecher C., 2017, ZWF Z WIRTSCH FABR, V112, P839, DOI [10.3139/104.111847, DOI 10.3139/104.111847]
[7]  
Brecher Christian, 2020, Z WIRTSCHAFTLICHEN F, V115, P834, DOI [10.3139/zwf-2020-1151121/html, DOI 10.3139/ZWF-2020-1151121/HTML]
[8]  
Brecher Christian, 2019, ZWF Z WIRTSCHAFTLICH, V114, P784, DOI [10.3139/104.112177, DOI 10.3139/104.112177]
[9]   Sensor data and information fusion to construct digital-twins virtual machine tools for cyber-physical manufacturing [J].
Cai, Yi ;
Starly, Binil ;
Cohen, Paul ;
Lee, Yuan-Shin .
45TH SME NORTH AMERICAN MANUFACTURING RESEARCH CONFERENCE (NAMRC 45), 2017, 10 :1031-1042
[10]   Statistical approaches for semi-supervised anomaly detection in machining [J].
Denkena, B. ;
Dittrich, M-A ;
Noske, H. ;
Witt, M. .
PRODUCTION ENGINEERING-RESEARCH AND DEVELOPMENT, 2020, 14 (03) :385-393