Assessment of turning AISI 316L stainless steel under MWCNT-reinforced nanofluid-assisted MQL and optimization of process parameters by NSGA-II and TOPSIS

Over the years, the use of traditional metalworking fluids has negatively impacted worker health and the environment. Therefore, minimum quantity lubricant (MQL) has successfully proven to be effective in overcoming this problem. In addition, nanofluid-assisted MQL (NF-MQL) is one of the suggested t...

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Veröffentlicht in:International journal of advanced manufacturing technology 2023-08, Vol.127 (7-8), p.3855-3868
Hauptverfasser: Oussama, Benkhelifa, Yapan, Yusuf Furkan, Uysal, Alper, Abdelhakim, Cherfia, Mourad, Nouioua
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container_issue 7-8
container_start_page 3855
container_title International journal of advanced manufacturing technology
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creator Oussama, Benkhelifa
Yapan, Yusuf Furkan
Uysal, Alper
Abdelhakim, Cherfia
Mourad, Nouioua
description Over the years, the use of traditional metalworking fluids has negatively impacted worker health and the environment. Therefore, minimum quantity lubricant (MQL) has successfully proven to be effective in overcoming this problem. In addition, nanofluid-assisted MQL (NF-MQL) is one of the suggested techniques to further improve MQL performance, especially in the machining of hard-to-cut materials such as stainless steel. Therefore, in the present work, an attempt was made to improve the machining characteristics performance in turning of AISI 316L stainless steel under dry, MQL, and multi-walled carbon nanotubes (MWCNT)-assisted MQL conditions, with respect to surface roughness (Ra), feed force (Fz), and cutting temperature (CT). In this investigation, NF-MQL and pure MQL showed better results compared to dry condition; the results revealed that the Ra, CT, and Fz were found to be lower with 25.57%, 28.71%, and 22.84%, respectively, using pure MQL, and 39.16%, 42.38%, and 28.53% with NF-MQL. In the end, statistical analysis, regression modeling, and non-dominated sorting genetic algorithm (NSGA-II) is used to solve different multi-objective optimization problems, and technique for order of preference by similarity to ideal solution (TOPSIS) were performed.
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subjects Austenitic stainless steels
Axial forces
CAE) and Design
Computer-Aided Engineering (CAD
Engineering
Genetic algorithms
Industrial and Production Engineering
Mechanical Engineering
Media Management
Metalworking fluids
Multi wall carbon nanotubes
Multiple objective analysis
Nanofluids
Optimization
Original Article
Process parameters
Sorting algorithms
Stainless steel
Statistical analysis
Surface roughness
Turning (machining)
title Assessment of turning AISI 316L stainless steel under MWCNT-reinforced nanofluid-assisted MQL and optimization of process parameters by NSGA-II and TOPSIS
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