Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi

The fundamental need for quality in manufacturing is the production process must be able to generate the product with an acceptable variance from the stated quality index. Statistical process control (SPC) is frequently used to monitor standards, take measurements, and take corrective action. Prefer...

Full description

Bibliographic Details
Main Authors: Hadiyanto, Sitepu Elioenai
Format: Article
Language:English
Published: EDP Sciences 2023-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/63/e3sconf_icobar23_01066.pdf
_version_ 1797673586159255552
author Hadiyanto
Sitepu Elioenai
author_facet Hadiyanto
Sitepu Elioenai
author_sort Hadiyanto
collection DOAJ
description The fundamental need for quality in manufacturing is the production process must be able to generate the product with an acceptable variance from the stated quality index. Statistical process control (SPC) is frequently used to monitor standards, take measurements, and take corrective action. Preferred Reporting Items for Systematics Reviews and Meta-Analyses (PRISMA) methods were used to better inform reviewers and readers about the authors’ actions and findings, speed up the review process, and improve the quality of the reporting. Publish or perish, VOS viewer, and Mendeley Desktop were also used to search related articles and analyze the bibliometric. The conclusion notes that integrating other quality approaches has increased the use of SPC in the manufacturing sector. This was applied within other quality improvement programs such as Six Sigma and TQM. Even though SPC is a statistically based technique, challenge, and limitation factors showed that implementing SPC in the manufacturing industry will be successful if other crucial factors like management, education/training, culture, and the availability of human resources are well-prepared. In conclusion, the authors hope that this review will highlight the value of SPC as a potential tool for quality control and enhancement in the manufacturing sector.
first_indexed 2024-03-11T21:47:34Z
format Article
id doaj.art-5f52da8979ad416bb38ce3b8a38fb07a
institution Directory Open Access Journal
issn 2267-1242
language English
last_indexed 2024-03-11T21:47:34Z
publishDate 2023-01-01
publisher EDP Sciences
record_format Article
series E3S Web of Conferences
spelling doaj.art-5f52da8979ad416bb38ce3b8a38fb07a2023-09-26T10:11:34ZengEDP SciencesE3S Web of Conferences2267-12422023-01-014260106610.1051/e3sconf/202342601066e3sconf_icobar23_01066Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta AnalysiHadiyanto0Sitepu Elioenai1Industrial Engineering Department, BINUS Graduate Program - Master of Industrial Engineering, 11480 Bina Nusantara UniversityIndustrial Engineering Department, BINUS Graduate Program - Master of Industrial Engineering, 11480 Bina Nusantara UniversityThe fundamental need for quality in manufacturing is the production process must be able to generate the product with an acceptable variance from the stated quality index. Statistical process control (SPC) is frequently used to monitor standards, take measurements, and take corrective action. Preferred Reporting Items for Systematics Reviews and Meta-Analyses (PRISMA) methods were used to better inform reviewers and readers about the authors’ actions and findings, speed up the review process, and improve the quality of the reporting. Publish or perish, VOS viewer, and Mendeley Desktop were also used to search related articles and analyze the bibliometric. The conclusion notes that integrating other quality approaches has increased the use of SPC in the manufacturing sector. This was applied within other quality improvement programs such as Six Sigma and TQM. Even though SPC is a statistically based technique, challenge, and limitation factors showed that implementing SPC in the manufacturing industry will be successful if other crucial factors like management, education/training, culture, and the availability of human resources are well-prepared. In conclusion, the authors hope that this review will highlight the value of SPC as a potential tool for quality control and enhancement in the manufacturing sector.https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/63/e3sconf_icobar23_01066.pdf
spellingShingle Hadiyanto
Sitepu Elioenai
Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi
E3S Web of Conferences
title Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi
title_full Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi
title_fullStr Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi
title_full_unstemmed Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi
title_short Statistical Process Control (SPC) Implementation in Manufacturing Industry to Improve Quality Performance: A Prisma Systematic Literature Review and Meta Analysi
title_sort statistical process control spc implementation in manufacturing industry to improve quality performance a prisma systematic literature review and meta analysi
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/63/e3sconf_icobar23_01066.pdf
work_keys_str_mv AT hadiyanto statisticalprocesscontrolspcimplementationinmanufacturingindustrytoimprovequalityperformanceaprismasystematicliteraturereviewandmetaanalysi
AT sitepuelioenai statisticalprocesscontrolspcimplementationinmanufacturingindustrytoimprovequalityperformanceaprismasystematicliteraturereviewandmetaanalysi