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Optimising Manufacturing Process with Bayesian Structure Learning and Knowledge Graphs

Published: 10 February 2023 Publication History

Abstract

In manufacturing industry, product failure is costly, as it results in financial and time losses. Understanding the causes of product failure is critical for reducing the occurrence of failure and optimising the manufacturing process. As a result, a number of studies utilising data-driven approaches such as machine learning have been conducted to reduce the occurrence of this failure and to improve the manufacturing process. While these data-driven approaches enable pattern recognition, they lack the advantages associated with knowledge-driven approaches, such as knowledge representation and deductive reasoning. Similarly, knowledge-driven approaches lack the pattern-learning capabilities inherent in data-driven approaches such as machine learning. Therefore, in this paper, leveraging the advantages of both data-driven and knowledge-driven approaches, we present a strategy with a prototype implementation to reduce manufacturing product failure. The proposed strategy combines a data-driven technique, Bayesian structural learning, with a knowledge-based technique, knowledge graphs.

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cover image Guide Proceedings
Computer Aided Systems Theory – EUROCAST 2022: 18th International Conference, Las Palmas de Gran Canaria, Spain, February 20–25, 2022, Revised Selected Papers
Feb 2022
667 pages
ISBN:978-3-031-25311-9
DOI:10.1007/978-3-031-25312-6
  • Editors:
  • Roberto Moreno-Díaz,
  • Franz Pichler,
  • Alexis Quesada-Arencibia

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 10 February 2023

Author Tags

  1. Manufacturing product failure
  2. Bayesian structural learning
  3. Knowledge graphs
  4. Structure learning

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