Classification techniques for control chart pattern recognition: A case of metal frame for actuator production

Statistical process control (SPC) plays a significant role in hard-disk drive manufacturing as there is a crucial need to constantly improve of productivity. Control chart is one of the SPC tools that have been widely implemented to identify whether nonrandom pattern caused by assignable cause exist...

Full description

Saved in:
Bibliographic Details
Main Authors: Wimalin Laosiritaworn, Tunchanit Bunjongjit
Format: Journal
Published: 2018
Subjects:
Online Access:https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84888105458&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/52184
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Chiang Mai University
id th-cmuir.6653943832-52184
record_format dspace
spelling th-cmuir.6653943832-521842018-09-04T09:36:12Z Classification techniques for control chart pattern recognition: A case of metal frame for actuator production Wimalin Laosiritaworn Tunchanit Bunjongjit Biochemistry, Genetics and Molecular Biology Chemistry Materials Science Mathematics Physics and Astronomy Statistical process control (SPC) plays a significant role in hard-disk drive manufacturing as there is a crucial need to constantly improve of productivity. Control chart is one of the SPC tools that have been widely implemented to identify whether nonrandom pattern caused by assignable cause exists in the production process. Decision rules are usually used for detecting nonrandom patterns on control chart. However, recent research has shown that these rules had tendency of producing false alarm. This is a problem occurred in the case study company, who is a manufacturer of metal frame for actuator. The company is adopting technologically advanced equipment for its quality assurance system and computer software for data analysis and control chart. Currently, the company use decision rules for detecting nonrandom patterns on control chart - for example, if 6 or more consecutive data inputs found to be in an increasing or decreasing order, these data contain trend pattern. In attempt to improve the accuracy of data analysis, this research investigated the application of 3 classification techniques, namely neural network, k-nearest neighbor and rule induction, in discretion of nonrandom patterns. By considering the control charts of 3 different product lines, 3 types of nonrandom patterns, which are Trend, Cycle and Shift, are to be observed. Based on the real data inputs, the percentage of accuracy in error detection by each technique of each product line is compared. It is found the accuracy of k-nearest neighbor is highest with the percentage of correctly prediction between 96.99 - 98.7%. 2018-09-04T09:21:50Z 2018-09-04T09:21:50Z 2013-11-27 Journal 01252526 2-s2.0-84888105458 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84888105458&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/52184
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
topic Biochemistry, Genetics and Molecular Biology
Chemistry
Materials Science
Mathematics
Physics and Astronomy
spellingShingle Biochemistry, Genetics and Molecular Biology
Chemistry
Materials Science
Mathematics
Physics and Astronomy
Wimalin Laosiritaworn
Tunchanit Bunjongjit
Classification techniques for control chart pattern recognition: A case of metal frame for actuator production
description Statistical process control (SPC) plays a significant role in hard-disk drive manufacturing as there is a crucial need to constantly improve of productivity. Control chart is one of the SPC tools that have been widely implemented to identify whether nonrandom pattern caused by assignable cause exists in the production process. Decision rules are usually used for detecting nonrandom patterns on control chart. However, recent research has shown that these rules had tendency of producing false alarm. This is a problem occurred in the case study company, who is a manufacturer of metal frame for actuator. The company is adopting technologically advanced equipment for its quality assurance system and computer software for data analysis and control chart. Currently, the company use decision rules for detecting nonrandom patterns on control chart - for example, if 6 or more consecutive data inputs found to be in an increasing or decreasing order, these data contain trend pattern. In attempt to improve the accuracy of data analysis, this research investigated the application of 3 classification techniques, namely neural network, k-nearest neighbor and rule induction, in discretion of nonrandom patterns. By considering the control charts of 3 different product lines, 3 types of nonrandom patterns, which are Trend, Cycle and Shift, are to be observed. Based on the real data inputs, the percentage of accuracy in error detection by each technique of each product line is compared. It is found the accuracy of k-nearest neighbor is highest with the percentage of correctly prediction between 96.99 - 98.7%.
format Journal
author Wimalin Laosiritaworn
Tunchanit Bunjongjit
author_facet Wimalin Laosiritaworn
Tunchanit Bunjongjit
author_sort Wimalin Laosiritaworn
title Classification techniques for control chart pattern recognition: A case of metal frame for actuator production
title_short Classification techniques for control chart pattern recognition: A case of metal frame for actuator production
title_full Classification techniques for control chart pattern recognition: A case of metal frame for actuator production
title_fullStr Classification techniques for control chart pattern recognition: A case of metal frame for actuator production
title_full_unstemmed Classification techniques for control chart pattern recognition: A case of metal frame for actuator production
title_sort classification techniques for control chart pattern recognition: a case of metal frame for actuator production
publishDate 2018
url https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84888105458&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/52184
_version_ 1681423904774553600