World Model-Enabled Causal Digital Twins for Semantic Communications in Physical AI Systems
Lingyi Wang, Tingyu Shui, Walid Saad, Pascal Adjakple

TL;DR
This paper introduces a world-model-enabled causal digital twin framework for goal-oriented semantic communication in physical AI systems, optimizing long-term performance under communication constraints.
Contribution
It proposes a novel CIV metric and a WM-CDT framework to enhance long-horizon control and communication efficiency in closed-loop physical AI systems.
Findings
Significant improvement in return-per-kbit over existing methods.
Higher navigation success rate in UAV simulations.
Effective long-term control with data-efficient training.
Abstract
Semantic communication has emerged as a promising paradigm for enabling goal-oriented networking. However, most existing semantic communication solutions are tailored to one-shot tasks and optimize instantaneous performance. Hence, they cannot be used to support closed-loop dynamic systems with physical artificial intelligence (AI), in which the transmitted semantics affect not only the current inference outcome but also future control actions, state evolution, and ultimately long-horizon task performance. To address this gap, this paper investigates goal-oriented semantic communications for physical AI systems with closed-loop sensing-communication-inference-control. In particular, the problem of semantic communications is formulated as a long-term return-per-bit maximization under wireless bit-budget constraints while capturing both control efficiency and communication efficiency. To…
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