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Main Authors: Abbasi, Faima, Sottet, Jean-Sébastien, Pruski, Cedric
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.15281
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author Abbasi, Faima
Sottet, Jean-Sébastien
Pruski, Cedric
author_facet Abbasi, Faima
Sottet, Jean-Sébastien
Pruski, Cedric
contents Digital Twins (DTs) represent digital counterparts of physical systems, assets, or processes, referred to as the actual twin (AT). DTs integrate heterogeneous data, models, and semantic technologies to support monitoring, simulation, prediction, and optimization, enabling informed decision-making while maintaining a dynamic and accurate reflection of the AT. A key challenge is aligning heterogeneous models, which can cause semantic mismatches, inconsistencies, and synchronization issues. Existing approaches relying on static mappings and manual updates are often inflexible and error-prone. In this study, we address heterogeneity challenge in multi-layered DT, by introducing semantic grounding pipeline for multi-layered DTs that enables consistent and reliable interoperability between abstraction layers. We make three contributions. First, we design and implement multi-layered DT using flexible modelling framework, to organize data, model and metamodel layers. Second, we semantically lift DT metamodel to RDF graph for unified representation. Finally, we present a graph-based alignment approach (SSM-OM), which leverages semantic embeddings, lexical similarity, and large language model (LLM) reasoning to accurately establish and validate correspondences between the lifted metamodel and ontology. We validate correctness, interoperability, cross-layer traceability, domain applicability and general empirical performance through RDF tests, a DT usecase, and ontology alignment evaluation initiative (OAEI) benchmarks, demonstrating semantic consistency in multi-layered DT.
format Preprint
id arxiv_https___arxiv_org_abs_2512_15281
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Semantic Grounding of Digital Twin Metamodels Using RDF Graphs
Abbasi, Faima
Sottet, Jean-Sébastien
Pruski, Cedric
Software Engineering
Digital Twins (DTs) represent digital counterparts of physical systems, assets, or processes, referred to as the actual twin (AT). DTs integrate heterogeneous data, models, and semantic technologies to support monitoring, simulation, prediction, and optimization, enabling informed decision-making while maintaining a dynamic and accurate reflection of the AT. A key challenge is aligning heterogeneous models, which can cause semantic mismatches, inconsistencies, and synchronization issues. Existing approaches relying on static mappings and manual updates are often inflexible and error-prone. In this study, we address heterogeneity challenge in multi-layered DT, by introducing semantic grounding pipeline for multi-layered DTs that enables consistent and reliable interoperability between abstraction layers. We make three contributions. First, we design and implement multi-layered DT using flexible modelling framework, to organize data, model and metamodel layers. Second, we semantically lift DT metamodel to RDF graph for unified representation. Finally, we present a graph-based alignment approach (SSM-OM), which leverages semantic embeddings, lexical similarity, and large language model (LLM) reasoning to accurately establish and validate correspondences between the lifted metamodel and ontology. We validate correctness, interoperability, cross-layer traceability, domain applicability and general empirical performance through RDF tests, a DT usecase, and ontology alignment evaluation initiative (OAEI) benchmarks, demonstrating semantic consistency in multi-layered DT.
title Semantic Grounding of Digital Twin Metamodels Using RDF Graphs
topic Software Engineering
url https://arxiv.org/abs/2512.15281