期刊
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY
卷 189, 期 1-3, 页码 192-198出版社
ELSEVIER SCIENCE SA
DOI: 10.1016/j.jmatprotec.2007.01.021
关键词
neural network models; hard turning; surface roughness; tool wear; wiper inserts
Tool nose design affects the surface finish and productivity in finish hard turning processes. Surface finishing and tool flank wear have been investigated in finish turning of AISI D2 steels (60 HRC) using ceramic wiper (multi-radii) design inserts. Multiple linear regression models and neural network models are developed for predicting surface roughness and tool flank wear. In neural network modelling, measured forces, power and specific forces are utilized in training algorithm. Experimental results indicate that surface roughness R-a values as low as 0.18-0.20 mu(m) are attainable with wiper tools. Tool flank wear reaches to a tool life criterion value of VBC = 0.15 mm before or around 15 min of cutting time at high cutting speeds due to elevated temperatures. Neural network based predictions of surface roughness and tool flank wear are carried out and compared with a non-training experimental data. These results show that neural network models are suitable to predict tool wear and surface roughness patterns for a range of cutting conditions. (c) 2007 Elsevier B.V. All rights reserved.
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