Evaluating Digital Work Instructions with Augmented Reality versus Paper-based Documents for Manual, Object-Specific Repair Tasks in a Case Study with Experienced Workers
January 18, 2023 Β· Declared Dead Β· π The International Journal of Advanced Manufacturing Technology
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Authors
Leon Eversberg, Jens Lambrecht
arXiv ID
2301.07570
Category
cs.HC: Human-Computer Interaction
Citations
20
Venue
The International Journal of Advanced Manufacturing Technology
Last Checked
4 months ago
Abstract
Manual repair tasks in the industry of maintenance, repair, and overhaul require experience and object-specific information. Today, many of these repair tasks are still performed and documented with inefficient paper documents. Cognitive assistance systems have the potential to reduce costs, errors, and mental workload by providing all required information digitally. In this case study, we present an assistance system for object-specific repair tasks for turbine blades. The assistance system provides digital work instructions and uses augmented reality to display spatial information. In a user study with ten experienced metalworkers performing a familiar repair task, we compare time to task completion, subjective workload, and system usability of the new assistance system to their established paper-based workflow. All participants stated that they preferred the assistance system over the paper documents. The results of the study show that the manual repair task can be completed 21 % faster and with a 26 % lower perceived workload using the assistance system.
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