International Journal of Scientific & Technical Development - Volumes & Issues - Volume 6: Dec 2020, Issue 2

Experimental Analysis of MRR of Al Composite Using Response Surface Methodology RSM

Authors

Vikrant Sharma

DOI Number

Keywords

Wire electrical discharge machine; optimization; MRR; Response surface methodology, ANOVA

Abstract

The usage of composite materials has been increasing globally in all manufacturing industries. Nontraditional machining methods like electric discharge machining, ultrasonic machining, etc are used to accomplish better results in the machining of composite materials. In the present work, an attempt is made to study the study the effect of Wire Electric Discharge Machining (WEDM) parameters like pulse-on time, pulse-off time and peak current on Material Removal Rate(MRR) in Aluminum Composites. Experimentation was conducted in a series of tests using response surface methodology, in which changes are made in the input variables in order to identify the reasons for changes in the output response.

References

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How to cite

Journal

International Journal of Scientific & Technical Development

ISSN

2348-4047

Periodicity

Bi-Annual