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Parametric Analysis of Surface Roughness Studies in Turning Using Artificial
Neural Network
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· September 2014
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Ranganath M Singari
Delhi Technological University, Formerly
Delhi college of Engineering, Delhi, India
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Vipin vp
Delhi Technological University
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Sonu Yadav
Indian Institute of Information Technology Allahabad
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Volume 2, Issue 3 (2014) 676-683
ISSN 2347 - 3258
International Journal of Advance Research and Innovation
676
IJARI
Parametric Analysis of Surface Roughness Studies in Turning Using
Artificial Neural Network
Ranganath M. S.
*, a
, Vipin
a
, Sudhanshu Maurya
b
, Sonu Yadav
b
a
Department of Production and Industrial Engineering, Delhi Technological University, New Delhi,
India
b
Department of Mechanical Engineering, Delhi Technological University, New Delhi, India
Abstract
Neural Networks are information processing systems and can be used in several
areas of engineering applications and eliminate limitations of the classical
approaches by extracting the desired information using the input data. The
advantage of the usage of neural networks for prediction is that they are able to
learn from examples only and that after their learning is finished, they are able
to catch hidden and strongly nonlinear dependencies, even when there is
significant noise in the training set. One of
the most specified customer
requirements in a machining process is surface roughness. For efficient use of
machine tools, optimum cutting parameters are required. Therefore it is
necessary to find a suitable optimization method which can find optimum
values of cutting parameters for minimizing surface roughness.
The turning
process parameter optimization is highly constrained and nonlinear. Many
researchers have used an artificial neural network (ANN) model for the data
obtained through experiments to predict the surface roughness. The results
obtained, conclude that ANN is reliable and accurate
for solving the cutting
parameter optimization. The paper work presents on all studies where ANN has
been used to analyse surface roughness in turning process.