Optimizing Version AoI in Energy-Harvesting IoT: Model-Based and Learning-Based Approaches
By: Erfan Delfani, Nikolaos Pappas
Potential Business Impact:
Helps tiny devices send important messages faster.
Efficient data transmission in resource-constrained Internet of Things (IoT) systems requires semantics-aware management that maximizes the delivery of timely and informative data. This paper investigates the optimization of the semantic metric Version Age of Information (VAoI) in a status update system comprising an energy-harvesting (EH) sensor and a destination monitoring node. We consider three levels of knowledge about the system model -- fully known, partially known, and unknown -- and propose corresponding optimization strategies: model-based, estimation-based, and model-free methods. By employing Markov Decision Process (MDP) and Reinforcement Learning (RL) frameworks, we analyze performance trade-offs under varying degrees of model information. Our findings provide guidance for designing efficient and adaptive semantics-aware policies in both known and unknown IoT environments.
Similar Papers
Age of Semantic Information-Aware Wireless Transmission for Remote Monitoring Systems
Information Theory
Keeps video clear by sending important parts first.
Age of Semantic Information-Aware Wireless Transmission for Remote Monitoring Systems
Information Theory
Makes video messages smarter and more accurate.
From Information Freshness to Semantics of Information and Goal-oriented Communications
Information Theory
Makes wireless messages smarter for faster decisions.