Framing Automation and Human Error in the Context of the Skill, Rule and Knowledge Taxonomy

Automation errors may result in human performance issues that are often difficult to grasp. Skraaning and Jamieson (2023) proposed a taxonomy for classifying automation errors into categories based on the visible symptoms of design problems, so as to benefit the design of training scenarios. In this...

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Veröffentlicht in:Journal of cognitive engineering and decision making 2024-12, Vol.18 (4), p.318-326
Hauptverfasser: van Paassen, Marinus M. (René), Landman, Annemarie, Borst, Clark, Mulder, Max
Format: Artikel
Sprache:eng
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Zusammenfassung:Automation errors may result in human performance issues that are often difficult to grasp. Skraaning and Jamieson (2023) proposed a taxonomy for classifying automation errors into categories based on the visible symptoms of design problems, so as to benefit the design of training scenarios. In this paper, we propose a complementary classification that is based on the mechanisms of human-automation interaction guided by Rasmussen’s Skill, Rule and Knowledge (SRK) taxonomy. We identified four main failure classes and expect that this classification can support automation designers.
ISSN:1555-3434
DOI:10.1177/15553434241241892