Ontology Enabled Hybrid Modeling and Simulation
Journal:
arXiv
Published Date:
Jun 14, 2025
Abstract
We explore the role of ontologies in enhancing hybrid modeling and simulation
through improved semantic rigor, model reusability, and interoperability across
systems, disciplines, and tools. By distinguishing between methodological and
referential ontologies, we demonstrate how these complementary approaches
address interoperability challenges along three axes: Human-Human,
Human-Machine, and Machine-Machine. Techniques such as competency questions,
ontology design patterns, and layered strategies are highlighted for promoting
shared understanding and formal precision. Integrating ontologies with Semantic
Web Technologies, we showcase their dual role as descriptive domain
representations and prescriptive guides for simulation construction. Four
application cases - sea-level rise analysis, Industry 4.0 modeling, artificial
societies for policy support, and cyber threat evaluation - illustrate the
practical benefits of ontology-driven hybrid simulation workflows. We conclude
by discussing challenges and opportunities in ontology-based hybrid M&S,
including tool integration, semantic alignment, and support for explainable AI.