Creating coherent and explainable situational awareness (SA) in multiple operational domains remains a persistent challenge for modern command-and-control (C2) systems. Heterogeneous data sources, inconsistent semantics, and fragmented reasoning mechanisms hinder timely and accountable decision-making in multi-domain operations (MDOs). This paper presents the design of a scalable, ontology-driven architecture that unifies data ingestion, semantic integration, and predictive reasoning within a modular framework for SA and decision support. The architecture employs an ontology-centric semantic core to ensure interoperability and traceability across domains while maintaining a clear separation between the data, reasoning, and analytics layers. Each component is motivated by operational and cognitive requirements, with an emphasis on scalability, explainability, and integration readiness. A conceptual integration and validation path is outlined to guide future evaluation within synthetic and simulation-based environments such as High Level Architecture (HLA) federations and C2 Systems—Simulation Systems Interoperation Standard (C2SIM) ecosystems. Rather than reporting empirical results or system-level performance metrics, the paper offers a theoretically grounded, design-oriented contribution, explicitly positioned as a methodological and architectural framework at an early stage of technological maturity.
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Michael Romei de Socio
Gian Luca Pozzato
University of Turin
Alessio Merlo
Altera (United States)
The Journal of Defense Modeling and Simulation Applications Methodology Technology
University of Turin
Centre of Advanced Studies
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Socio et al. (Sun,) studied this question.
synapsesocial.com/papers/69d5f03374eaea4b11a79b09 — DOI: https://doi.org/10.1177/15485129261435210
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