AI Simulation by Digital Twins: Systematic Survey, Reference Framework,
and Mapping to a Standardized Architecture
Abstract
Insufficient data volume and quality are particularly pressing challenges in
the adoption of modern subsymbolic AI. To alleviate these challenges, AI
simulation uses virtual training environments in which AI agents can be safely
and efficiently developed with simulated, synthetic data. Digital twins open
new avenues in AI simulation, as these high-fidelity virtual replicas of
physical systems are equipped with state-of-the-art simulators and the ability
to further interact with the physical system for additional data collection. In
this article, we report on our systematic survey of digital twin-enabled AI
simulation. By analyzing 22 primary studies, we identify technological trends
and derive a reference framework to situate digital twins and AI components.
Based on our findings, we derive a reference framework and provide
architectural guidelines by mapping it onto the ISO 23247 reference
architecture for digital twins. Finally, we identify challenges and research
opportunities for prospective researchers.