DocumentCode :
581437
Title :
Adaptive Network Fuzzy Inference System and support vector machine learning for tool wear estimation in high speed milling processes
Author :
Li, X. ; Er, M.J. ; Ge, H. ; Gan, O.P. ; Huang, S. ; Zhai, L.Y. ; Linn, S. ; Torabi, Amin J.
Author_Institution :
Singapore Inst. of Manuf. Technol. (SIMTech), Singapore, Singapore
fYear :
2012
fDate :
25-28 Oct. 2012
Firstpage :
2821
Lastpage :
2826
Abstract :
In metal cutting processes, tool condition monitoring (TCM) plays an important role in maintaining the quality of surface finishing. Monitoring of tool wear in order to prevent surface damage is one of the difficult tasks in the context of TCM. Through early detection, high quality surface finishing and near-zero loss for potential failures can be ensured. Real-time/online tool degradation detection by using machine learning is highly desired. The ability to predict the tool wear, which is related to the remaining useful life of a tool, will improve efficiency and optimize tool usage while ensuring the quality of the work piece produced. In this paper, examine two popular methods of machine learning, namely the Adaptive Network Fuzzy Inference System (ANFIS) and Support Vector Machine (SVM) are used to estimate the tool wear and correlation models for tool wear estimation using ANFIS and SVM are estimated. A case study for six sets of ball nose cutters in a high speed milling machining process of Inconel 718 is carried out. Comparative studies of the two methods are carried out and experimental results analysed and discussed. In turns out that the accuracy of the ANFIS is generally better than the SVM whereas SVM is much faster than ANFIS in terms of speed.
Keywords :
chromium alloys; condition monitoring; cutting; fuzzy reasoning; iron alloys; learning (artificial intelligence); metals; milling; nickel alloys; production engineering computing; quality management; support vector machines; surface finishing; wear; ANFIS; Inconel 718; SVM; adaptive network fuzzy inference system; ball nose cutter; high speed milling process; metal cutting process; online tool degradation detection; quality maintenance; support vector machine learning; surface damage prevention; surface finishing; tool condition monitoring; tool wear estimation; tool wear monitoring; tool wear prediction; Accuracy; Biomedical monitoring; Markov processes; Monitoring; Predictive models; Reliability; Support vector machines; Adaptive Network Fuzzy Inference System (ANFIS); Support Vector Machine (SVM); Tool wear estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
IECON 2012 - 38th Annual Conference on IEEE Industrial Electronics Society
Conference_Location :
Montreal, QC
ISSN :
1553-572X
Print_ISBN :
978-1-4673-2419-9
Electronic_ISBN :
1553-572X
Type :
conf
DOI :
10.1109/IECON.2012.6389448
Filename :
6389448
Link To Document :
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