Industrial Semantics-Aware Digital Twins: A Hybrid Graph Matching Approach for Asset Administration Shells
By: Ariana Metović , Nicolai Maisch , Samed Ajdinović and more
Potential Business Impact:
Finds matching digital twins for easier factory building.
Although the Asset Administration Shell (AAS) standard provides a structured and machine-readable representation of industrial assets, their semantic comparability remains a major challenge, particularly when different vocabularies and modeling practices are used. Engineering would benefit from retrieving existing AAS models that are similar to the target in order to reuse submodels, parameters, and metadata. In practice, however, heterogeneous vocabularies and divergent modeling conventions hinder automated, content-level comparison across AAS. This paper proposes a hybrid graph matching approach to enable semantics-aware comparison of Digital Twin representations. The method combines rule-based pre-filtering using SPARQL with embedding-based similarity calculation leveraging RDF2vec to capture both structural and semantic relationships between AAS models. This contribution provides a foundation for enhanced discovery, reuse, and automated configuration in Digital Twin networks.
Similar Papers
A Container-based Approach For Proactive Asset Administration Shell Digital Twins
Software Engineering
Makes factory machines smarter and more helpful.
From Metadata to Storytelling: A Framework For 3D Cultural Heritage Visualization on RDF Data
Digital Libraries
Makes old buildings come alive online for everyone.
Twinning for Space-Air-Ground-Sea Integrated Networks: Beyond Conventional Digital Twin Towards Goal-Oriented Semantic Twin
Distributed, Parallel, and Cluster Computing
Creates smarter, faster digital copies for networks.