TY - JOUR
T1 - Managing human-AI collaborations within Industry 5.0 scenarios via knowledge graphs
T2 - key challenges and lessons learned
AU - Krause, Franz
AU - Paulheim, Heiko
AU - Kiesling, Elmar
AU - Kurniawan, Kabul
AU - Leva, Maria Chiara
AU - Estrada-Lugo, Hector Diego
AU - Stübl, Gernot
AU - Üre, Nazim Kemal
AU - Dominguez-Ledo, Javier
AU - Khan, Maqbool
AU - Demolder, Pedro
AU - Gaux, Hans
AU - Heinzl, Bernhard
AU - Hoch, Thomas
AU - Martinez-Gil, Jorge
AU - Silvina, Agastya
AU - Moser, Bernhard A.
N1 - Publisher Copyright:
Copyright © 2024 Krause, Paulheim, Kiesling, Kurniawan, Leva, Estrada-Lugo, Stübl, Üre, Dominguez-Ledo, Khan, Demolder, Gaux, Heinzl, Hoch, Martinez-Gil, Silvina and Moser.
PY - 2024
Y1 - 2024
N2 - In this paper, we discuss technologies and approaches based on Knowledge Graphs (KGs) that enable the management of inline human interventions in AI-assisted manufacturing processes in Industry 5.0 under potentially changing conditions in order to maintain or improve the overall system performance. Whereas KG-based systems are commonly based on a static view with their structure fixed at design time, we argue that the dynamic challenge of inline Human-AI (H-AI) collaboration in industrial settings calls for a late shaping design principle. In contrast to early shaping, which determines the system's behavior at design time in a fine granular manner, late shaping is a coarse-to-fine approach that leaves more space for fine-tuning, adaptation and integration of human intelligence at runtime. In this context we discuss approaches and lessons learned from the European manufacturing project Teaming.AI, https://www.teamingai-project.eu/, addressing general challenges like the modeling of domain expertise with particular focus on vertical knowledge integration, as well as challenges linked to an industrial KG of choice, such as its dynamic population and the late shaping of KG embeddings as the foundation of relational machine learning models which have emerged as an effective tool for exploiting graph-structured data to infer new insights.
AB - In this paper, we discuss technologies and approaches based on Knowledge Graphs (KGs) that enable the management of inline human interventions in AI-assisted manufacturing processes in Industry 5.0 under potentially changing conditions in order to maintain or improve the overall system performance. Whereas KG-based systems are commonly based on a static view with their structure fixed at design time, we argue that the dynamic challenge of inline Human-AI (H-AI) collaboration in industrial settings calls for a late shaping design principle. In contrast to early shaping, which determines the system's behavior at design time in a fine granular manner, late shaping is a coarse-to-fine approach that leaves more space for fine-tuning, adaptation and integration of human intelligence at runtime. In this context we discuss approaches and lessons learned from the European manufacturing project Teaming.AI, https://www.teamingai-project.eu/, addressing general challenges like the modeling of domain expertise with particular focus on vertical knowledge integration, as well as challenges linked to an industrial KG of choice, such as its dynamic population and the late shaping of KG embeddings as the foundation of relational machine learning models which have emerged as an effective tool for exploiting graph-structured data to infer new insights.
KW - human-AI collaboration
KW - Industry 5.0
KW - knowledge graph
KW - knowledge integration
KW - late shaping
KW - process modeling
KW - semantic web
KW - smart manufacturing
UR - http://www.scopus.com/inward/record.url?scp=85210586535&partnerID=8YFLogxK
U2 - 10.3389/frai.2024.1247712
DO - 10.3389/frai.2024.1247712
M3 - Article
AN - SCOPUS:85210586535
SN - 2624-8212
VL - 7
JO - Frontiers in Artificial Intelligence
JF - Frontiers in Artificial Intelligence
M1 - 1247712
ER -