Joint Optimization of Base Station Clustering and Service Caching in User-Centric MEC
Edge service caching can effectively reduce the delay or bandwidth overhead for acquiring and initializing applications. To address single-base station (BS) transmission limitation and serious edge effect in traditional cellular-based edge service caching networks, in this paper, we proposed a novel...
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Zusammenfassung: | Edge service caching can effectively reduce the delay or bandwidth overhead
for acquiring and initializing applications. To address single-base station
(BS) transmission limitation and serious edge effect in traditional
cellular-based edge service caching networks, in this paper, we proposed a
novel user-centric edge service caching framework where each user is jointly
provided with edge caching and wireless transmission services by a specific BS
cluster instead of a single BS. To minimize the long-term average delay under
the constraint of the caching cost, a mixed integer non-linear programming
(MINLP) problem is formulated by jointly optimizing the BS clustering and
service caching decisions. To tackle the problem, we propose JO-CDSD, an
efficiently joint optimization algorithm based on Lyapunov optimization and
generalized benders decomposition (GBD). In particular, the long-term
optimization problem can be transformed into a primal problem and a master
problem in each time slot that is much simpler to solve. The near-optimal
clustering and caching strategy can be obtained through solving the primal and
master problem alternately. Extensive simulations show that the proposed joint
optimization algorithm outperforms other algorithms and can effectively reduce
the long-term delay by at most $93.75% and caching cost by at most $53.12%. |
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DOI: | 10.48550/arxiv.2302.10558 |