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A transdisciplinary approach to a manufacturing problem with a machine learning solution

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conference contribution
posted on 2022-12-02, 14:21 authored by Peter WilsonPeter Wilson, Peter KinnellPeter Kinnell, Yee GohYee Goh, Chris Pretty, Andrew Walpole

The application of machine learning to high cost, low volume (HCLV) manufacture is challenging due to prohibitive costs and low data volumes. An example HCLV application is linear friction welding (LFW) of Blisks (Bladed Disks). LFW is a solid-state joining process, typically used in high integrity aerospace applications. The successful application of machine learning (ML) has the potential to predict quality metrics and enable timely interventions to machine maintenance for avoidance of machine damage or deterioration. This paper proposes a methodology that combines expert knowledge with machine learning to minimise the quantity of weld data required to generate a robust and accurate ML model. Expert knowledge incorporation requires methods of elicitation, capture, standardisation and quantification of information (it can be qualitative, experiential and subjective) and conversion to a quantitative, data driven and digital format for input into a ML algorithm. This paper will describe the methodology developed to enable a combined data science and engineering approach to address complex manufacturing problems. If successful, this methodology will be used as a standard framework for application to HCLV manufacture.

Funding

Made Smarter Innovation - People-Led Digitalisation

UK Research and Innovation

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Rolls Royce plc

History

School

  • Mechanical, Electrical and Manufacturing Engineering

Published in

Transdisciplinarity and the Future of Engineering: Proceedings of the 29th International Society of Transdisciplinary Engineering (ISTE) Global Conference, July 5 – July 8, 2022, Cambridge, MA, USA

Pages

525 - 534

Source

29th ISTE International Conference on Transdisciplinary Engineering (TE2022)

Publisher

IOS Press

Version

  • VoR (Version of Record)

Rights holder

© The authors and IOS Press

Publisher statement

This is an Open Access Article. It is published by IOS Press under the Creative Commons Attribution-NonCommercial 4.0 International Licence (CC BY-NC). Full details of this licence are available at: https://creativecommons.org/licenses/by-nc/4.0/

Publication date

2022-11-01

Copyright date

2022

ISBN

9781643683386; 9781643683393

Book series

Advances in Transdisciplinary Engineering; 28

Language

  • en

Editor(s)

Bryan R. Moser; Pisut Koomsap; Josip Stjepandić

Location

Cambridge, MA, USA

Event dates

5th July 2022 - 8th July 2022

Depositor

Dr Mey Goh. Deposit date: 22 November 2022

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