Latency Guarantee for Ubiquitous Intelligence in 6G: A Network Calculus Approach
Lianming Zhang, Qian Wang, Pingping Dong, Yehua Wei, and Jing Mei

TL;DR
This paper introduces a network calculus-based method to model and optimize latency guarantees for ubiquitous intelligence in 6G networks, addressing the stochastic nature of THz channels and edge computing.
Contribution
It proposes a novel hierarchical network model and delay analysis framework using network calculus for latency assurance in 6G UbiI systems.
Findings
Network calculus effectively models stochastic wireless channels.
The proposed approach accurately predicts end-to-end delay.
Case studies validate the method's effectiveness.
Abstract
With the gradual deployment of 5G and the continuous popularization of edge intelligence (EI), the explosive growth of data on the edge of the network has promoted the rapid development of 6G and ubiquitous intelligence (UbiI). This article aims to explore a new method for modeling latency guarantees for UbiI in 6G given 6G's extremely stochastic nature in terahertz (THz) environments, THz channel tail behavior, and delay distribution tail characteristics generated by the UBiI random component, and to find the optimal solution that minimizes the end-to-end (E2E) delay of UbiI. In this article, the arrival curve and service curve of network calculus can well characterize the stochastic nature of wireless channels, the tail behavior of wireless systems and the E2E service curve of network calculus can model the tail characteristic of the delay distribution in UbiI. Specifically, we first…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Communication Technologies · Millimeter-Wave Propagation and Modeling
