Anwendung von Causal-Discovery-Algorithmen zur Root-Cause-Analyse in der Fahrzeugmontage
Root Cause Analysis (RCA) is a quality management method that aims to systematically investigate and identify the cause-and-effect relationships of problems and their underlying causes. Traditional methods are based on the analysis of problems by subject matter experts. In modern production processe...
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Zusammenfassung: | Root Cause Analysis (RCA) is a quality management method that aims to
systematically investigate and identify the cause-and-effect relationships of
problems and their underlying causes. Traditional methods are based on the
analysis of problems by subject matter experts. In modern production processes,
large amounts of data are collected. For this reason, increasingly
computer-aided and data-driven methods are used for RCA. One of these methods
are Causal Discovery Algorithms (CDA). This publication demonstrates the
application of CDA on data from the assembly of a leading automotive
manufacturer. The algorithms used learn the causal structure between the
characteristics of the manufactured vehicles, the ergonomics and the temporal
scope of the involved assembly processes, and quality-relevant product features
based on representative data. This publication compares various CDAs in terms
of their suitability in the context of quality management. For this purpose,
the causal structures learned by the algorithms as well as their runtime are
compared. This publication provides a contribution to quality management and
demonstrates how CDAs can be used for RCA in assembly processes. |
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DOI: | 10.48550/arxiv.2407.16388 |