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Publication Details
AFRICAN RESEARCH NEXUS
SHINING A SPOTLIGHT ON AFRICAN RESEARCH
engineering
Modelling the correlation between cutting and process parameters in high-speed machining of Inconel 718 alloy using an artificial neural network
International Journal of Machine Tools and Manufacture, Volume 45, No. 12-13, Year 2005
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Description
An artificial neural network (ANN) model was developed for the analysis and prediction of the relationship between cutting and process parameters during high-speed turning of nickel-based, Inconel 718, alloy. The input parameters of the ANN model are the cutting parameters: speed, feed rate, depth of cut, cutting time, and coolant pressure. The output parameters of the model are seven process parameters measured during the machining trials, namely tangential force (cutting force, Fz), axial force (feed force, Fx), spindle motor power consumption, machined surface roughness, average flank wear (VB), maximum flank wear (VBmax) and nose wear (VC). The model consists of a three-layered feedforward backpropagation neural network. The network is trained with pairs of inputs/outputs datasets generated when machining Inconel 718 alloy with triple (TiCN/Al2O3/TiN) PVD-coated carbide (K 10) inserts with ISO designation CNMG 120412. A very good performance of the neural network, in terms of agreement with experimental data, was achieved. The model can be used for the analysis and prediction of the complex relationship between cutting conditions and the process parameters in metal-cutting operations and for the optimisation of the cutting process for efficient and economic production. © 2005 Elsevier Ltd. All rights reserved.
Authors & Co-Authors
Ezugwu, Emmanuel Okechukwu
United Kingdom, London
London South Bank University
Fadare, David Abimbola
United Kingdom, London
London South Bank University
Nigeria, Ibadan
University of Ibadan
Bonney, John
United Kingdom, London
London South Bank University
DA SILVA, Rosemar Batista
United Kingdom, London
London South Bank University
Brazil, Uberlandia
Universidade Federal de Uberlândia
Sales, Wisley Falco
United Kingdom, London
London South Bank University
Brazil, Belo Horizonte
Pontificia Universidade Catolica de Minas Gerais
Statistics
Citations: 218
Authors: 5
Affiliations: 4
Identifiers
Doi:
10.1016/j.ijmachtools.2005.02.004
ISSN:
08906955