Interpretable Machine learning for Quality Engineering in Manufacturing - Importance Measures that Reveal Insights on Errors

Autor/innen

  • Holger Ziekow Furtwangen University
  • Ulf Schreier Furtwangen University
  • Alexander Gerling Furtwangen University
  • Alaa Saleh Furtwangen University

Schlagworte:

Interpretable Machine Learning, Importance measures, Manufacturing

Abstract

This paper addresses the use of machine learning and techniques of interpretable machine learning to improve quality in manufacturing processes. It proposes analysis methods constitute novel importance measures that support quality engineers in the analysis of production errors. We illustrate and test the proposed methods on synthetic as well as on real-world data from German manufacturer.

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Veröffentlicht

2021-12-10