Automated Deviation Detection for Partially-Observable Human-Intensive Assembly Processes

  • Quijdane Guiza (Speaker)

Activity: Talk or presentationContributed talkscience-to-science

Description

Unforeseen situations on the shopfloor cause the assembly process to divert from its expected progress. To be able to overcome these deviations in a timely manner, assembly process monitoring and early deviation detection are necessary. However, legal regulations and union policies often limit the direct monitoring of human-intensive assembly processes. Grounded in an industry use case, this paper outlines a novel approach that, based on indirect privacy-respecting monitored data from the shopfloor, enables the near real-time detection of multiple types of process deviations. In doing so, this paper specifically addresses uncertainties stemming from indirect shopfloor observations and how to reason in their presence.
Period21 Jul 2021
Event titleunbekannt/unknown
Event typeConference
LocationAustriaShow on map

Fields of science

  • 102 Computer Sciences
  • 102022 Software development

JKU Focus areas

  • Digital Transformation