IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Application of Statistical Quality Control in Testing Labs for Estimation of Machine Interference

Application of Statistical Quality Control in Testing Labs for Estimation of Machine Interference
View Sample PDF
Author(s): Nitin K. Mandavgade (Nagpur Institute of Technology, India), Santosh B. Jaju (G. H. Raisoni College of Engineering Nagpur, India)and Ramesh R. Lakhe (Shreyas Quality Management System, India)
Copyright: 2019
Pages: 22
Source title: Strategic Applications of Measurement Technologies and Instrumentation
Source Author(s)/Editor(s): Soubantika Palchoudhury (University of Tennessee at Chattanooga, USA)
DOI: 10.4018/978-1-5225-5406-6.ch005

Purchase

View Application of Statistical Quality Control in Testing Labs for Estimation of Machine Interference on the publisher's website for pricing and purchasing information.

Abstract

The performance and maintenance of testing laboratories is a prime issue. The quality of coal test results not only depends on performance of individual results but it also depends on the performance of various tests in the same laboratory. Machine interference is a significant problem in many manufacturing system and testing equipment. The variation of results for testing equipment may be due to various factors which need to calculate the uncertainty of measurement to show the accuracy of the machine. In case of coal testing laboratory, the plant layout and surrounding environment affects the performance of the system. The machine interference comes under variable causes which may affect the result. This chapter proposes a methodology for constructing system performance measures, finding out the various factors responsible for variations in result. The chapter deals with estimation of machine interference existence using variable control chart approach for coal testing equipment. The analysis of results for such machine interference will be useful and significant for system designers and practitioners.

Related Content

Natwaine Sherune Gardner, Kedon J. S. Luke, Andrew O. Wheatley, Winston De La Haye, Perceval Steven Bahado-Singh, Lowell L. Dilworth, Donovan A. McGrowder, Everard Barton, Lauriann E. Young-Martin, Ajibeke Salako-Akande, Henry Lowe, Errol Morrison, Denise Eldermire-Shearer, Helen Asemota. © 2019. 21 pages.
Alessandro Massaro. © 2019. 25 pages.
Sami D. Alaruri. © 2019. 14 pages.
K. Vinoth Kumar, Prawin Angel Michael. © 2019. 15 pages.
Nitin K. Mandavgade, Santosh B. Jaju, Ramesh R. Lakhe. © 2019. 22 pages.
Madan Kumar Sharma, Mithilesh Kumar Kumar, Satya P. Singh. © 2019. 21 pages.
Andreia de Lima Fioravante, Evelyn de Freitas Guimarães, Fabiano Barbieri Gonzaga, Cristiane Rodrigues Augusto, Claudia Cipriano Ribeiro, Eliane Cristina Pires do Rego, Elaine Batista de Santana, Laura Alves das Neves, Lucas Junqueira de Carvalho, Renato Rubim Ribeiro de Almeida, Rodrigo C. de Sena, Marcelo de Almeida Dominguez, Janaina Marques Rodrigues Caixeiro, Valnei Smarçaro da Cunha, Sidney P. Sobral. © 2019. 20 pages.
Body Bottom