Optics and Precision Engineering, Volume. 23, Issue 5, 1314(2015)
Detection and control for tool wear based on neural network and genetic algorithm
[1] [1] ESCALONA P M, MAROPOULOS P G. Empirical expression of tool wear when face milling 416 S S [C]. Proceedings of ASME Pressure Vessels and Piping Division Conference, 2009, 7: 1697-1705.
[3] [3] ABOU-EL-HOSSEIN K A, YAHYA Z. High-speed end-milling of AISI 304 stainless steels using new geometrically developed carbide inserts [J]. Journal of Material Processing Technology, 2005, 162-163: 596-602.
[4] [4] KISHAWY H A, DUMITRESCU M, NG E G, ELBESTAWI M A. Effect of coolant strategy on tool performance, chip morphology and surface quality during high speed machining of A356 aluminium alloy [J]. International Journal of Machine Tools & Manufacture, 2005, 45(2): 219-227.
[5] [5] GINTING A, NOUARI M. Experimental and numerical studies on the performance of alloyed carbide tool in dry milling of aerospace material [J]. International Journal of Machine Tools and Manufacture, 2006, 46: 758-768.
[6] [6] ELBESTAWI M A, CHEN L, BECZE C E, EL-WARDANY T I. High-speed milling of dies and molds in their hardened state [J]. Annals of the CIRP, 1997, 46(1): 57-62.
[7] [7] LI Y S, DENG J X, ZHANG H, et al.. Wear mechanism of cemented carbide tool in high speed machining titanium alloy(Ti-6AI-4V) [J]. Tribology, 2008, 28(5): 443-447. (in Chinese)
[8] [8] ZHOU H B, ZHANG J J, YAN H, et al.. Research on tool wear mechanism and forecast method of titanium alloy high speed milling [J]. Tool Engineering, 2014, 48(3): 18-22. (in Chinese)
[9] [9] LV Y.Experimental study and simulation on cutting force during machining of titanium alloys in aerospace [D]. Shenyang: Shenyang Ligong University, 2013. (in Chinese)
[10] [10] FENG W, CAO J CH, WU SH T, et al.. Application of BP neural network in damage factor prediction for precision forging helical gears [J]. Journal of Wuhan University of Technology, 2014, 3(3): 328-331. (in Chinese)
[11] [11] JING P, DENG ZH P. Foresting tool wear based on BP network [J]. Coal Mine Machinery, 2012, 33(3): 116-117. (in Chinese)
[12] [12] ESCALONA P M, DIAZ N, CASSIER Z. Prediction of tool wear mechanisms in face milling AISI 1045 steel [J]. Journal of Materials Engineering and Performance, 2012, 21(6): 797-808.
Get Citation
Copy Citation Text
QIN Guo-hua, XIE Wen-bin, WANG Hua-min. Detection and control for tool wear based on neural network and genetic algorithm[J]. Optics and Precision Engineering, 2015, 23(5): 1314
Category:
Received: Nov. 12, 2014
Accepted: --
Published Online: Jun. 11, 2015
The Author Email: Guo-hua QIN (qghwzx@126.com)