A Two-Timescale Approach to Mobility Management for Multi-Cell Mobile Edge Computing
Mobile edge computing (MEC) is a promising technology for enhancing the computation capacities and features of mobile users by offloading complex computation tasks to the edge servers. However, mobility poses great challenges on delivering reliable MEC service required for latency-critical applicati...
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Zusammenfassung: | Mobile edge computing (MEC) is a promising technology for enhancing the
computation capacities and features of mobile users by offloading complex
computation tasks to the edge servers. However, mobility poses great challenges
on delivering reliable MEC service required for latency-critical applications.
First, mobility management has to tackle the dynamics of both user's location
changes and task arrivals that vary in different timescales. Second, user
mobility could induce service migration, leading to reliability loss due to the
migration delay. In this paper, we propose a two-timescale mobility management
framework by joint control of service migration and transmission power to
address the above challenges. Specifically, the service migration operates at a
large timescale to support user mobility in the multi-cell network, while the
power control is performed at a small timescale for real-time task offloading.
Their joint control is formulated as an optimization problem aiming at the
long-term mobile energy minimization subject to the reliability requirement of
computation offloading. To solve the problem, we propose a Lyapunov-based
framework to decompose the problem into different timescales, based on which a
low-complexity two-timescale online algorithm is developed by exploiting the
problem structure. The proposed online algorithm is shown to be asymptotically
optimal via theoretical analysis, and is further developed to accommodate the
multiuser management. The simulation results demonstrate that our proposed
algorithm can significantly improve the energy and reliability performance. |
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DOI: | 10.48550/arxiv.2207.02052 |