A Framework for Automatically Realizing Assembly Sequence Changes in a Virtual Manufacturing Environment

Conference paper


Ahmad, M, Ahmad, B, Harrison, R, Alkan, B, Vera, D, Meredith, J and Bindel, A (2016). A Framework for Automatically Realizing Assembly Sequence Changes in a Virtual Manufacturing Environment. Elsevier BV. https://doi.org/10.1016/j.procir.2016.04.178
AuthorsAhmad, M, Ahmad, B, Harrison, R, Alkan, B, Vera, D, Meredith, J and Bindel, A
TypeConference paper
Abstract

© 2016 The Authors. Global market pressures and the rapid evolution of technologies and materials force manufacturers to constantly design, develop and produce new and varied products to maintain a competitive edge. Although virtual design and engineering tools have been key to supporting this fast rate of change, there remains a lack of seamless integration between and within tools across the domains of product, process, and resource design-especially to accommodate change. This research examines how changes to designs within these three domains can be captured and evaluated within a component based engineering tool (vueOne, developed by the Automation Systems Group at the University of Warwick). This paper describes how and where data within these tools can be mapped to quickly evaluate change (where typically a tedious process of data entry is required) decreasing lead times and cost and increasing productivity. The approach is tested on a sub-assembly of a hydrogen fuel cell, where an assembly system is modelled and changes are made to the sequence which is translated through to control logic. Although full implementation has not yet been realized, the concept has the potential to radically change the way changes are made and the approach can be extended to supporting other change types provided the appropriate rules and mapping.

Year2016
JournalProcedia CIRP
PublisherElsevier BV
Journal citation50, pp. 129-134
ISSN2212-8271
Digital Object Identifier (DOI)https://doi.org/10.1016/j.procir.2016.04.178
Publisher's version
License
File Access Level
Open
Publication dates
Print09 Aug 2016
Publication process dates
Accepted28 Apr 2016
Deposited02 Feb 2021
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https://openresearch.lsbu.ac.uk/item/8vw13

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