Integrating machine learning with machine parameters to predict plastic part quality in injection moulding

Manaf Al-Ahmad*, Song Yang, Yi Qin

*Corresponding author for this work

Research output: Contribution to journalConference articlepeer-review

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Abstract

The plastic injection moulding process is a critical manufacturing technique renowned for its high productivity, cost-effectiveness, and ability to produce intricate plastic components for various industries including medical and aerospace. The quality of the manufactured parts is influenced by several parameters, such as machine settings and mould characteristics, particularly thermal aspects. This paper specifically investigates the influence of primary machine parameters on part quality, excluding considerations of time, mould features, and cooling channel geometries. By focusing on the machine parameters and employing advanced machine learning methods, a comprehensive understanding is developed on how these factors can be utilised to predict the quality of the parts produced. The findings provide valuable insights into optimising the injection moulding process to enhance product quality and consistency.
Original languageEnglish
Article number08011
Number of pages6
JournalMATEC Web of Conferences
Volume401
DOIs
Publication statusPublished - 27 Aug 2024
Event21st International Conference on Manufacturing Research - Glasgow, United Kingdom
Duration: 28 Aug 202430 Aug 2024
https://www.icmr.org.uk/

Keywords

  • plastic injection moulding process
  • machine parameters
  • machine learning

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