Semantic-Aware Scheduling for Minimizing Age of Informative Data in WBAN-Based Health Monitoring Systems
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초록

Since outdated information can lead to critical situations in health monitoring systems, recent schedulers have adopted the Age of Information (AoI) as a key decision metric. However, traditional AoI-based schedulers penalize all data uniformly over time, even when successive packets contain redundant content, failing to prioritize informative data. Although semantic-aware AoI schedulers address this limitation, they often become overly sensitive to minor variations in content, neglecting to quantify data criticality and ultimately behaving like traditional AoI-based schedulers. To overcome this issue, in this paper, a new semantic-aware AoI scheduler is proposed for WBAN-based health monitoring systems. The scheduling objective focuses on minimizing the weighted average AoI, where the weights are based on deviations from historical data, ensuring timely emergency detection. Additionally, an effective optimization algorithm is developed and applied to achieve this goal. Simulation results show that the proposed scheduler improves system performance across key metrics, including average AoI, weighted average AoI, and throughput, ensuring the freshness of informative data in WBAN-based health monitoring systems. © 2014 IEEE.

키워드

age of informative datadeep reinforcement learningself-adaptive greedy schedulingsemantic-aware schedulingINCORRECT INFORMATIONMINIMIZATIONAOIOPTIMIZATIONNETWORKS
제목
Semantic-Aware Scheduling for Minimizing Age of Informative Data in WBAN-Based Health Monitoring Systems
저자
Kim, Beom-Su
DOI
10.1109/JIOT.2025.3529952
발행일
2025-06
유형
Article
저널명
IEEE Internet of Things Journal
12
11
페이지
15970 ~ 15986