Enhanced machining features and multi-objective optimization of CNT mixed-EDM process for processing 316L steel

There is a high roughness and tool wear rate (TER), and a minimal material erosion rate (MER) when 316L steel is machined through conventional or conductive powder mixed electro-discharge (EDM) processes. Since the required machining outputs are primarily dependent on process parameters due to their...

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Veröffentlicht in:International journal of advanced manufacturing technology 2022-06, Vol.120 (9-10), p.6125-6141, Article 6125
Hauptverfasser: Danish, Mohd, Al-Amin, Md, Rubaiee, Saeed, Abdul-Rani, Ahmad Majdi, Zohura, Fatema Tuj, Ahmed, Anas, Ahmed, Rasel, Yildirim, Mehmet Bayram
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Sprache:eng
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Zusammenfassung:There is a high roughness and tool wear rate (TER), and a minimal material erosion rate (MER) when 316L steel is machined through conventional or conductive powder mixed electro-discharge (EDM) processes. Since the required machining outputs are primarily dependent on process parameters due to their fluctuating nature during the operation, a thorough study is required. This research intends to investigate the effects of EDM process parameters on the machining outputs. The carbon nanotubes (CNT) are added to the working dielectric to achieve a high MER with a low TER and surface roughness (SR). The machined surface’s morphology and composition are validated using scanning electron microscope (SEM) and electron dispersive X-ray (EDX). Taguchi’s design has been employed to conduct the EDM process parametric optimization obtaining the smallest TER and SR of 0.34 mg/min and 1.55 µm, respectively. The greatest MER of 39.76 mg/min, which is considered for the machining efficacy, is obtained. The most relevant factor for MER, TER, and SR is current intensity, followed by CNT quantity, according to analysis of variance (ANOVA). The estimated errors of the predicted solution sets using the multi-objective ant lion optimizer (MOALO) are less than 10%, which confirm a high prediction of them. Findings of this research will result in an effective manufacturing process for fabricating the devices made of 316L steel for biomedical and oil and gas applications.
ISSN:0268-3768
1433-3015
1433-3015
DOI:10.1007/s00170-022-09157-5