Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network
Autor(a) principal: | |
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Data de Publicação: | 2018 |
Outros Autores: | |
Tipo de documento: | Artigo |
Idioma: | eng |
Título da fonte: | Brazilian Journal of Operations & Production Management (Online) |
Texto Completo: | https://bjopm.org.br/bjopm/article/view/440 |
Resumo: | Drilling is a hole making process on machine components at the time of assembly work, which are identify everywhere. In precise applications, quality and accuracy play a wide role. Nowadays’ industries suffer due to the cost incurred during deburring, especially in precise assemblies such as aerospace/aircraft body structures, marine works and automobile industries. Burrs produced during drilling causes dimensional errors, jamming of parts and misalignment. Therefore, deburring operation after drilling is often required. Now, reducing burr size is a serious topic. In this study experiments are conducted by choosing various input parameters selected from previous researchers. The effect of alteration of drill geometry on thrust force and burr size of drilled hole was investigated by the Taguchi design of experiments and found an optimum combination of the most significant input parameters from ANOVA to get optimum reduction in terms of burr size by design expert software. Drill thrust influences more on burr size. The clearance angle of the drill bit causes variation in thrust. The burr height is observed in this study. These output results are compared with the neural network software @easy NN plus. Finally, it is concluded that by increasing the number of nodes the computational cost increases and the error in nueral network decreases. Good agreement was shown between the predictive model results and the experimental responses. |
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Brazilian Journal of Operations & Production Management (Online) |
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Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural NetworkDrill ThrustBurr SizeAluminium 2014 AlloyTaguchi Design of ExperimentsNeural NetworkDrilling is a hole making process on machine components at the time of assembly work, which are identify everywhere. In precise applications, quality and accuracy play a wide role. Nowadays’ industries suffer due to the cost incurred during deburring, especially in precise assemblies such as aerospace/aircraft body structures, marine works and automobile industries. Burrs produced during drilling causes dimensional errors, jamming of parts and misalignment. Therefore, deburring operation after drilling is often required. Now, reducing burr size is a serious topic. In this study experiments are conducted by choosing various input parameters selected from previous researchers. The effect of alteration of drill geometry on thrust force and burr size of drilled hole was investigated by the Taguchi design of experiments and found an optimum combination of the most significant input parameters from ANOVA to get optimum reduction in terms of burr size by design expert software. Drill thrust influences more on burr size. The clearance angle of the drill bit causes variation in thrust. The burr height is observed in this study. These output results are compared with the neural network software @easy NN plus. Finally, it is concluded that by increasing the number of nodes the computational cost increases and the error in nueral network decreases. Good agreement was shown between the predictive model results and the experimental responses. Brazilian Association for Industrial Engineering and Operations Management (ABEPRO)2018-06-01info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionPeer-reviewed Articletext/htmlapplication/pdfhttps://bjopm.org.br/bjopm/article/view/44010.14488/BJOPM.2018.v15.n2.a11Brazilian Journal of Operations & Production Management; Vol. 15 No. 2 (2018): June, 2018; 294-3012237-8960reponame:Brazilian Journal of Operations & Production Management (Online)instname:Associação Brasileira de Engenharia de Produção (ABEPRO)instacron:ABEPROenghttps://bjopm.org.br/bjopm/article/view/440/607https://bjopm.org.br/bjopm/article/view/440/581Copyright (c) 2018 Brazilian Journal of Operations & Production Managementinfo:eu-repo/semantics/openAccessSreenivasulu, ReddySrinivasaRao, Chalamalasetti2021-07-13T14:14:34Zoai:ojs.bjopm.org.br:article/440Revistahttps://bjopm.org.br/bjopmONGhttps://bjopm.org.br/bjopm/oaibjopm.journal@gmail.com2237-89601679-8171opendoar:2023-03-13T09:45:17.438235Brazilian Journal of Operations & Production Management (Online) - Associação Brasileira de Engenharia de Produção (ABEPRO)false |
dc.title.none.fl_str_mv |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
title |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
spellingShingle |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network Sreenivasulu, Reddy Drill Thrust Burr Size Aluminium 2014 Alloy Taguchi Design of Experiments Neural Network |
title_short |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
title_full |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
title_fullStr |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
title_full_unstemmed |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
title_sort |
Optimization of machining parameters during Drilling by Taguchi based Design of Experiments and Validation by Neural Network |
author |
Sreenivasulu, Reddy |
author_facet |
Sreenivasulu, Reddy SrinivasaRao, Chalamalasetti |
author_role |
author |
author2 |
SrinivasaRao, Chalamalasetti |
author2_role |
author |
dc.contributor.author.fl_str_mv |
Sreenivasulu, Reddy SrinivasaRao, Chalamalasetti |
dc.subject.por.fl_str_mv |
Drill Thrust Burr Size Aluminium 2014 Alloy Taguchi Design of Experiments Neural Network |
topic |
Drill Thrust Burr Size Aluminium 2014 Alloy Taguchi Design of Experiments Neural Network |
description |
Drilling is a hole making process on machine components at the time of assembly work, which are identify everywhere. In precise applications, quality and accuracy play a wide role. Nowadays’ industries suffer due to the cost incurred during deburring, especially in precise assemblies such as aerospace/aircraft body structures, marine works and automobile industries. Burrs produced during drilling causes dimensional errors, jamming of parts and misalignment. Therefore, deburring operation after drilling is often required. Now, reducing burr size is a serious topic. In this study experiments are conducted by choosing various input parameters selected from previous researchers. The effect of alteration of drill geometry on thrust force and burr size of drilled hole was investigated by the Taguchi design of experiments and found an optimum combination of the most significant input parameters from ANOVA to get optimum reduction in terms of burr size by design expert software. Drill thrust influences more on burr size. The clearance angle of the drill bit causes variation in thrust. The burr height is observed in this study. These output results are compared with the neural network software @easy NN plus. Finally, it is concluded that by increasing the number of nodes the computational cost increases and the error in nueral network decreases. Good agreement was shown between the predictive model results and the experimental responses. |
publishDate |
2018 |
dc.date.none.fl_str_mv |
2018-06-01 |
dc.type.driver.fl_str_mv |
info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion Peer-reviewed Article |
format |
article |
status_str |
publishedVersion |
dc.identifier.uri.fl_str_mv |
https://bjopm.org.br/bjopm/article/view/440 10.14488/BJOPM.2018.v15.n2.a11 |
url |
https://bjopm.org.br/bjopm/article/view/440 |
identifier_str_mv |
10.14488/BJOPM.2018.v15.n2.a11 |
dc.language.iso.fl_str_mv |
eng |
language |
eng |
dc.relation.none.fl_str_mv |
https://bjopm.org.br/bjopm/article/view/440/607 https://bjopm.org.br/bjopm/article/view/440/581 |
dc.rights.driver.fl_str_mv |
Copyright (c) 2018 Brazilian Journal of Operations & Production Management info:eu-repo/semantics/openAccess |
rights_invalid_str_mv |
Copyright (c) 2018 Brazilian Journal of Operations & Production Management |
eu_rights_str_mv |
openAccess |
dc.format.none.fl_str_mv |
text/html application/pdf |
dc.publisher.none.fl_str_mv |
Brazilian Association for Industrial Engineering and Operations Management (ABEPRO) |
publisher.none.fl_str_mv |
Brazilian Association for Industrial Engineering and Operations Management (ABEPRO) |
dc.source.none.fl_str_mv |
Brazilian Journal of Operations & Production Management; Vol. 15 No. 2 (2018): June, 2018; 294-301 2237-8960 reponame:Brazilian Journal of Operations & Production Management (Online) instname:Associação Brasileira de Engenharia de Produção (ABEPRO) instacron:ABEPRO |
instname_str |
Associação Brasileira de Engenharia de Produção (ABEPRO) |
instacron_str |
ABEPRO |
institution |
ABEPRO |
reponame_str |
Brazilian Journal of Operations & Production Management (Online) |
collection |
Brazilian Journal of Operations & Production Management (Online) |
repository.name.fl_str_mv |
Brazilian Journal of Operations & Production Management (Online) - Associação Brasileira de Engenharia de Produção (ABEPRO) |
repository.mail.fl_str_mv |
bjopm.journal@gmail.com |
_version_ |
1797051460919230464 |