Optimization of injection molding parameters by data mining method in PIM process

Data Mining is a method that can be used to analyze large amount of data and produce useful information. In this study, clustering which is one of data mining tasks is used to clustered machine based on the injection moulding data. This paper is the first documented results on the optimization of In...

Full description

Saved in:
Bibliographic Details
Main Authors: Wahi, Azizah, Muhamad, Norhamidi, Jamaludin, Khairur R., Rajabi, Javad, Madraky, Abbas
Format: Article
Published: Penerbit UTM Press 2012
Subjects:
Online Access:http://eprints.utm.my/id/eprint/47322/
https://jurnalteknologi.utm.my/index.php/jurnalteknologi/article/view/2592
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.utm.47322
record_format eprints
spelling my.utm.473222019-03-31T08:38:13Z http://eprints.utm.my/id/eprint/47322/ Optimization of injection molding parameters by data mining method in PIM process Wahi, Azizah Muhamad, Norhamidi Jamaludin, Khairur R. Rajabi, Javad Madraky, Abbas TK Electrical engineering. Electronics Nuclear engineering Data Mining is a method that can be used to analyze large amount of data and produce useful information. In this study, clustering which is one of data mining tasks is used to clustered machine based on the injection moulding data. This paper is the first documented results on the optimization of Injection Moulding via Data Mining. Powder injection moulding is a process to produce near net shape with intricate part in mass production. This work focus on the optimization of injection molding process with combination of fine, coarse and bimodal water atomized SS 316L powder particles. The parameters involved in the optimization are injection pressure, injection temperature, mould temperature, holding pressure, injection rate, holding time, powder loading, cooling time and particle size. These variables are based on the defect score, green density and green strength. The key influencer report shows that the most influencing factors are injection rate, holding pressure as well as mould temperature where defect score lower than 2.4 can be achieved. The density higher than 5.34g/cm3 is also influenced most by the mould temperature. The result also shows that the optimize condition can be achieved by using bimodal particle. Injection rate and mould temperature gives the highest impact on the defect score and green strength value. While highest green density is significantly affected by powder loading and injection pressure. Penerbit UTM Press 2012 Article PeerReviewed Wahi, Azizah and Muhamad, Norhamidi and Jamaludin, Khairur R. and Rajabi, Javad and Madraky, Abbas (2012) Optimization of injection molding parameters by data mining method in PIM process. Jurnal Teknologi (Sciences and Engineering), 59 (SUP. 2). pp. 193-196. ISSN 0127-9696 https://jurnalteknologi.utm.my/index.php/jurnalteknologi/article/view/2592
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Wahi, Azizah
Muhamad, Norhamidi
Jamaludin, Khairur R.
Rajabi, Javad
Madraky, Abbas
Optimization of injection molding parameters by data mining method in PIM process
description Data Mining is a method that can be used to analyze large amount of data and produce useful information. In this study, clustering which is one of data mining tasks is used to clustered machine based on the injection moulding data. This paper is the first documented results on the optimization of Injection Moulding via Data Mining. Powder injection moulding is a process to produce near net shape with intricate part in mass production. This work focus on the optimization of injection molding process with combination of fine, coarse and bimodal water atomized SS 316L powder particles. The parameters involved in the optimization are injection pressure, injection temperature, mould temperature, holding pressure, injection rate, holding time, powder loading, cooling time and particle size. These variables are based on the defect score, green density and green strength. The key influencer report shows that the most influencing factors are injection rate, holding pressure as well as mould temperature where defect score lower than 2.4 can be achieved. The density higher than 5.34g/cm3 is also influenced most by the mould temperature. The result also shows that the optimize condition can be achieved by using bimodal particle. Injection rate and mould temperature gives the highest impact on the defect score and green strength value. While highest green density is significantly affected by powder loading and injection pressure.
format Article
author Wahi, Azizah
Muhamad, Norhamidi
Jamaludin, Khairur R.
Rajabi, Javad
Madraky, Abbas
author_facet Wahi, Azizah
Muhamad, Norhamidi
Jamaludin, Khairur R.
Rajabi, Javad
Madraky, Abbas
author_sort Wahi, Azizah
title Optimization of injection molding parameters by data mining method in PIM process
title_short Optimization of injection molding parameters by data mining method in PIM process
title_full Optimization of injection molding parameters by data mining method in PIM process
title_fullStr Optimization of injection molding parameters by data mining method in PIM process
title_full_unstemmed Optimization of injection molding parameters by data mining method in PIM process
title_sort optimization of injection molding parameters by data mining method in pim process
publisher Penerbit UTM Press
publishDate 2012
url http://eprints.utm.my/id/eprint/47322/
https://jurnalteknologi.utm.my/index.php/jurnalteknologi/article/view/2592
_version_ 1643652287948652544
score 13.188404