Towards a Reference Software Architecture for Human-AI Teaming in Smart
Manufacturing
- URL: http://arxiv.org/abs/2201.04876v2
- Date: Fri, 14 Jan 2022 08:37:17 GMT
- Title: Towards a Reference Software Architecture for Human-AI Teaming in Smart
Manufacturing
- Authors: Philipp Haindl, Georg Buchgeher, Maqbool Khan, Bernhard Moser
- Abstract summary: We developed a reference software architecture based on knowledge graphs, tracking and scene analysis, and components for relational machine learning.
The empirical validation of this software architecture will be conducted in cooperation with three large-scale companies in the automotive, energy systems, and precision machining domain.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the proliferation of AI-enabled software systems in smart manufacturing,
the role of such systems moves away from a reactive to a proactive role that
provides context-specific support to manufacturing operators. In the frame of
the EU funded Teaming.AI project, we identified the monitoring of teaming
aspects in human-AI collaboration, the runtime monitoring and validation of
ethical policies, and the support for experimentation with data and machine
learning algorithms as the most relevant challenges for human-AI teaming in
smart manufacturing. Based on these challenges, we developed a reference
software architecture based on knowledge graphs, tracking and scene analysis,
and components for relational machine learning with a particular focus on its
scalability. Our approach uses knowledge graphs to capture product- and process
specific knowledge in the manufacturing process and to utilize it for
relational machine learning. This allows for context-specific recommendations
for actions in the manufacturing process for the optimization of product
quality and the prevention of physical harm. The empirical validation of this
software architecture will be conducted in cooperation with three large-scale
companies in the automotive, energy systems, and precision machining domain. In
this paper we discuss the identified challenges for such a reference software
architecture, present its preliminary status, and sketch our further research
vision in this project.
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