Bridging the Reality Gap in Digital Twins with Context-Aware, Physics-Guided Deep Learning
Sizhe Ma, Katherine A. Flanigan, Mario Berg\'es

TL;DR
This paper introduces a novel Reality Gap Analysis (RGA) module that enhances digital twins by continuously calibrating them with sensor data, improving their accuracy and physical consistency in real-world applications.
Contribution
The paper proposes a new RGA module combining domain-adversarial deep learning with reduced-order simulation guidance for better digital twin calibration.
Findings
Faster calibration of digital twins in case studies.
Improved alignment between simulations and real-world data.
Enhanced physical consistency in digital twin models.
Abstract
Digital twins (DTs) enable powerful predictive analytics, but persistent discrepancies between simulations and real systems--known as the reality gap--undermine their reliability. Coined in robotics, the term now applies to DTs, where discrepancies stem from context mismatches, cross-domain interactions, and multi-scale dynamics. Among these, context mismatch is pressing and underexplored, as DT accuracy depends on capturing operational context, often only partially observable. However, DTs have a key advantage: simulators can systematically vary contextual factors and explore scenarios difficult or impossible to observe empirically, informing inference and model alignment. While sim-to-real transfer like domain adaptation shows promise in robotics, their application to DTs poses two key challenges. First, unlike one-time policy transfers, DTs require continuous calibration across an…
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Taxonomy
MethodsRelation-aware Global Attention
