Author:
Vaxevanidis Nikolaos M.,Kechagias John D.,Fountas Nikolaos A.,Manolakos Dimitrios E.
Abstract
The present paper investigates the influence of main cutting parameters on the machinability during turning
process for three typical materials namely AISI D6 tool steel, Ti6Al4V ELI and CuZn39Pb3 brass, all three under dry
cutting environment. Spindle speed, feed rate and depth of cut were selected for study whilst arithmetic surface roughness
average (Ra) and main cutting force component (FC) were treated as quality objectives characterizing machinability. For
the aforementioned materials a full factorial design of experiments was conducted to exploit main effects and interactions
among parameters it terms of quality objectives. The results obtained from dry turning experiments were utilized as a data
set to test, train and validate a feed-forward back propagation artificial neural network for machinability prediction
regarding all three materials. The work presents the results obtained from the aforementioned experimental effort under an
extensive state-of-the-art survey concerning neural network technology and implementation to machining optimization
problems.
Publisher
Bentham Science Publishers Ltd.
Subject
Building and Construction
Cited by
18 articles.
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