Loughborough University
Browse

File(s) under permanent embargo

Reason: This paper is in closed access until 12 mths after publication.

Supplementary information files for 'A variability taxonomy to support automation decision-making for manufacturing processes'

dataset
posted on 2019-09-27, 10:36 authored by Yee M. Goh, Simon Micheler, Angel Sanchez-Salas, Keith Case, Daniel Bumblauskas, Radmehr P. Monfared
Supplementary information files for 'A variability taxonomy to support automation decision-making for manufacturing processes'

Abstract:
Although many manual operations have been replaced by automation in the manufacturing domain, in various industries skilled operators still carry out critical manual tasks such as final assembly. The business case for automation in these areas is difficult to justify due to increased complexity and costs arising out of process variabilities associated with those tasks. The lack of understanding of process variability in automation design means that industrial automation often does not realise the full benefits at the first attempt, resulting in the need to spend additional resource and time, to fully realise the potential. This article describes a taxonomy of variability when considering automation of manufacturing processes. Three industrial case studies were analysed to develop the proposed taxonomy. The results obtained from the taxonomy are discussed with a further case study to demonstrate its value in supporting automation decision-making.

History

School

  • Mechanical, Electrical and Manufacturing Engineering

Usage metrics

    Mechanical, Electrical and Manufacturing Engineering

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC