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Journal ArticleDOI

Predictive modeling of surface roughness and tool wear in hard turning using regression and neural networks

Tuğrul Özel, +1 more
- 01 Apr 2005 - 
- Vol. 45, Iss: 4, pp 467-479
TLDR
In this paper, the authors used neural network models to predict surface roughness and tool flank wear over the machining time for variety of cutting conditions in finish hard turning of hardened AISI 52100 steel.
Abstract
In machining of parts, surface quality is one of the most specified customer requirements. Major indication of surface quality on machined parts is surface roughness. Finish hard turning using Cubic Boron Nitride (CBN) tools allows manufacturers to simplify their processes and still achieve the desired surface roughness. There are various machining parameters have an effect on the surface roughness, but those effects have not been adequately quantified. In order for manufacturers to maximize their gains from utilizing finish hard turning, accurate predictive models for surface roughness and tool wear must be constructed. This paper utilizes neural network modeling to predict surface roughness and tool flank wear over the machining time for variety of cutting conditions in finish hard turning. Regression models are also developed in order to capture process specific parameters. A set of sparse experimental data for finish turning of hardened AISI 52100 steel obtained from literature and the experimental data obtained from performed experiments in finish turning of hardened AISI H-13 steel have been utilized. The data sets from measured surface roughness and tool flank wear were employed to train the neural network models. Trained neural network models were used in predicting surface roughness and tool flank wear for other cutting conditions. A comparison of neural network models with regression models is also carried out. Predictive neural network models are found to be capable of better predictions for surface roughness and tool flank wear within the range that they had been trained. Predictive neural network modeling is also extended to predict tool wear and surface roughness patterns seen in finish hard turning processes. Decrease in the feed rate resulted in better surface roughness but slightly faster tool wear development, and increasing cutting speed resulted in significant increase in tool wear development but resulted in better surface roughness. Increase in the workpiece hardness resulted in better surface roughness but higher tool wear. Overall, CBN inserts with honed edge geometry performed better both in terms of surface roughness and tool wear development. q 2004 Elsevier Ltd. All rights reserved.

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Citations
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Journal ArticleDOI

Experimental investigations of cutting parameters influence on cutting forces and surface roughness in finish hard turning of MDN250 steel

TL;DR: In this paper, the effect of cutting parameters (cutting speed, feed rate and depth of cut) on cutting forces and surface roughness in finish hard turning of MDN250 steel (equivalent to 18Ni(250) maraging steel) using coated ceramic tool.
Journal ArticleDOI

A Comparative Study on Machine Learning Algorithms for Smart Manufacturing: Tool Wear Prediction Using Random Forests

TL;DR: Experimental results have shown that RFs can generate more accurate predictions than FFBP ANNs with a single hidden layer and SVR, and experimental results have also shown thatRFs can be more accurate than support vector regression (SVR) without a hidden layer.
Journal ArticleDOI

Application of soft computing techniques in machining performance prediction and optimization: a literature review

TL;DR: This paper reviews the application of neural networks, fuzzy sets, genetic algorithms, simulated annealing, ant colony optimization, and particle swarm optimization to four machining processes—turning, milling, drilling, and grinding.
Journal ArticleDOI

Modeling and prediction of surface roughness in turning operations using artificial neural network and multiple regression method

TL;DR: The surface roughness is measured during turning at different cutting parameters such as speed, feed, and depth of cut by full factorial experimental design and it is clearly seen that the proposed models are capable of prediction of the surface Roughness.
Journal ArticleDOI

Optimization of surface roughness and flank wear using the Taguchi method in milling of Hadfield steel with PVD and CVD coated inserts

TL;DR: In this article, the Taguchi method and regression analysis have been applied to evaluate the machinability of Hadfield steel with PVD TiAlN- and CVD TiCN/Al 2 O 3 -coated carbide inserts under dry milling conditions.
References
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Book

Neural Networks: A Comprehensive Foundation

Simon Haykin
TL;DR: Thorough, well-organized, and completely up to date, this book examines all the important aspects of this emerging technology, including the learning process, back-propagation learning, radial-basis function networks, self-organizing systems, modular networks, temporal processing and neurodynamics, and VLSI implementation of neural networks.
Book

Neural network design

TL;DR: This book, by the authors of the Neural Network Toolbox for MATLAB, provides a clear and detailed coverage of fundamental neural network architectures and learning rules, as well as methods for training them and their applications to practical problems.
Proceedings ArticleDOI

A direct adaptive method for faster backpropagation learning: the RPROP algorithm

TL;DR: A learning algorithm for multilayer feedforward networks, RPROP (resilient propagation), is proposed that performs a local adaptation of the weight-updates according to the behavior of the error function to overcome the inherent disadvantages of pure gradient-descent.
Journal ArticleDOI

Predicting surface roughness in machining: a review

TL;DR: In this article, the authors present the various methodologies and practices that are being employed for the prediction of surface roughness, including machining theory, experimental investigation, designed experiments and artificial intelligence (AI).
Journal ArticleDOI

Cutting of Hardened Steel

TL;DR: In this article, an overview of the mechanisms of chip removal in hard cutting and the thermo-mechanical influence of the work area is presented. But the workpiece quality and economic efficiency of hard cutting processes in comparison with grinding are discussed.
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