Multi-Source Peak Age of Information Optimization in Mobile Edge Computing Systems
By: Jianhang Zhu, Jie Gong
Potential Business Impact:
Keeps real-time data fresh and useful.
Age of Information (AoI) is emerging as a novel metric for measuring information freshness in real-time monitoring systems. For computation-intensive status data, the information is not revealed until being processed. We consider a status update problem in a multi-source single-server system where the sources are scheduled to generate and transmit status data which are received and processed at the edge server. Generate-at-will sources with both random transmission time and process time are considered, introducing the joint optimization of source scheduling and status sampling on the basis of transmission-computation balancing. We show that a random scheduler is optimal for both non-preemptive and preemptive server settings, and the optimal sampler depends on the scheduling result and its structure remains consistent with the single-source system, i.e., threshold-based sampler for non-preemptive case and transmission-aware deterministic sampler for preemptive case. Then, the problem can be transformed to jointly optimizing the scheduling frequencies and the sampling thresholds/functions, which is non-convex. We proposed an alternation optimization algorithm to solve it. Numerical experiments show that the proposed algorithm can achieve the optimal in a wide range of settings.
Similar Papers
AoI-based Scheduling of Correlated Sources for Timely Inference
Networking and Internet Architecture
Makes computers guess better with old, mixed-up info.
Age of Information for Constrained Scheduling with Imperfect Feedback
Information Theory
Keeps information fresh for many users.
Age Optimal Sampling and Routing under Intermittent Links and Energy Constraints
Information Theory
Keeps information fresh and saves energy.