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Journal ArticleDOI

Application of GA to optimize cutting conditions for minimizing surface roughness in end milling machining process

TLDR
The analysis of this study has proven that the GA technique is capable of estimating the optimal cutting conditions that yield the minimum surface roughness value.
Abstract
This study is carried out to observe the optimal effect of the radial rake angle of the tool, combined with speed and feed rate cutting conditions in influencing the surface roughness result. In machining, the surface roughness value is targeted as low as possible and is given by the value of the optimal cutting conditions. By looking at previous studies, as far as they have been reviewed, it seems that the application of GA optimization techniques for optimizing the cutting conditions value of the radial rake angle for minimizing surface roughness in the end milling of titanium alloy is still not given consideration by researchers. Therefore, having dealt with radial rake angle machining parameter, this study attempts the application of GA to find the optimal solution of the cutting conditions for giving the minimum value of surface roughness. By referring to the real machining case study, the regression model is developed. The best regression model is determined to formulate the fitness function of the GA. The analysis of this study has proven that the GA technique is capable of estimating the optimal cutting conditions that yield the minimum surface roughness value. With the highest speed, lowest feed rate and highest radial rake angle of the cutting conditions scale, the GA technique recommends [email protected] as the best minimum predicted surface roughness value. This means the GA technique has decreased the minimum surface roughness value of the experimental sample data, regression modelling and response surface methodology technique by about 27%, 26% and 50%, respectively.

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Citations
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Application of Particle Swarm Optimization technique for achieving desired milled surface roughness in minimum machining time

TL;DR: In this paper, the effect of machining parameters such as cutting speed, feed, and depth of cut on the surface roughness and to obtain the desired roughness on face milling process is investigated.
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Optimization of process parameters in the abrasive waterjet machining using integrated SA-GA

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Overview of Support Vector Machine in Modeling Machining Performances

TL;DR: This paper reviews the application of SVM, classified as one of the popular trends in modeling techniques for both types of machining operations, conventional and modern machining.
References
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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).
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A review of optimization techniques in metal cutting processes

TL;DR: The application potential of several modelling and optimization techniques in metalcutting processes, classified under several criteria, has been critically appraised, and a generic framework for parameter optimization in metal cutting processes is suggested for the benefits of selection of an appropriate approach.
Journal ArticleDOI

Application of response surface methodology in the optimization of cutting conditions for surface roughness

TL;DR: In this article, the authors developed an effective methodology to determine the optimum cutting conditions leading to minimum surface roughness in milling of mold surfaces by coupling response surface methodology (RSM) with a developed GA.
Journal ArticleDOI

A genetic algorithmic approach for optimization of surface roughness prediction model

TL;DR: In this article, a second order mathematical model was developed for surface roughness prediction using Response Surface Methodology (RSM) for machining mild steel work-pieces covering a wide range of machining conditions.
Journal ArticleDOI

Optimization of cutting process by GA approach

TL;DR: In this article, a new optimization technique based on genetic algorithms (GA) for the determination of the cutting parameters in machining operations has been proposed, which can be integrated into an intelligent manufacturing system for solving complex machining optimization problems.
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