Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition

This paper presents the multi-objective optimization of the hard milling process of AISI H13 steel under minimum quality lubricant with graphite nanoparticle. The cutting speed, feed per tooth, depth of cut, and hardness of workpiece were taken as the process parameters, while surface roughness, cut...

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Main Authors: Ngoc-Chien Vu, Xuan-Phuong Dang, Shyh-Chour Huang
Format: Article
Language:English
Published: SAGE Publishing 2021-05-01
Series:Measurement + Control
Online Access:https://doi.org/10.1177/0020294020919457
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spelling doaj-ea90ccb78cf94a889db656b3386fa46a2021-09-02T23:05:35ZengSAGE PublishingMeasurement + Control0020-29402021-05-015410.1177/0020294020919457Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication conditionNgoc-Chien Vu0Xuan-Phuong Dang1Shyh-Chour Huang2Mechanical Engineering Faculty, Nha Trang University, Nha Trang, VietnamMechanical Engineering Faculty, Nha Trang University, Nha Trang, VietnamDepartment of Mechanical Engineering, National Kaohsiung University of Science and Technology, KaohsiungThis paper presents the multi-objective optimization of the hard milling process of AISI H13 steel under minimum quality lubricant with graphite nanoparticle. The cutting speed, feed per tooth, depth of cut, and hardness of workpiece were taken as the process parameters, while surface roughness, cutting energy, cutting temperature, and material removal rate were considered as technological responses. Response surface or Kriging approximate models were applied to generate the mathematical regression models showing the relationship between machining inputs and outputs obtained by physical experiments. Then, multi-objective particle swarm optimization algorithm in conjunction with the Pareto approach and engineering data mining was adopted to figure out the feasible solutions. The research results show that cutting energy can be reduced up to around 14% compared to the worst case. Based on the Pareto plot, the appropriate selection of machining parameters can help the machine tool operator to increase machining productivity and energy efficiency.https://doi.org/10.1177/0020294020919457
collection DOAJ
language English
format Article
sources DOAJ
author Ngoc-Chien Vu
Xuan-Phuong Dang
Shyh-Chour Huang
spellingShingle Ngoc-Chien Vu
Xuan-Phuong Dang
Shyh-Chour Huang
Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
Measurement + Control
author_facet Ngoc-Chien Vu
Xuan-Phuong Dang
Shyh-Chour Huang
author_sort Ngoc-Chien Vu
title Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
title_short Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
title_full Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
title_fullStr Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
title_full_unstemmed Multi-objective optimization of hard milling process of AISI H13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
title_sort multi-objective optimization of hard milling process of aisi h13 in terms of productivity, quality, and cutting energy under nanofluid minimum quantity lubrication condition
publisher SAGE Publishing
series Measurement + Control
issn 0020-2940
publishDate 2021-05-01
description This paper presents the multi-objective optimization of the hard milling process of AISI H13 steel under minimum quality lubricant with graphite nanoparticle. The cutting speed, feed per tooth, depth of cut, and hardness of workpiece were taken as the process parameters, while surface roughness, cutting energy, cutting temperature, and material removal rate were considered as technological responses. Response surface or Kriging approximate models were applied to generate the mathematical regression models showing the relationship between machining inputs and outputs obtained by physical experiments. Then, multi-objective particle swarm optimization algorithm in conjunction with the Pareto approach and engineering data mining was adopted to figure out the feasible solutions. The research results show that cutting energy can be reduced up to around 14% compared to the worst case. Based on the Pareto plot, the appropriate selection of machining parameters can help the machine tool operator to increase machining productivity and energy efficiency.
url https://doi.org/10.1177/0020294020919457
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AT xuanphuongdang multiobjectiveoptimizationofhardmillingprocessofaisih13intermsofproductivityqualityandcuttingenergyundernanofluidminimumquantitylubricationcondition
AT shyhchourhuang multiobjectiveoptimizationofhardmillingprocessofaisih13intermsofproductivityqualityandcuttingenergyundernanofluidminimumquantitylubricationcondition
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