Cost-Effective Two-Stage Network Slicing for Edge-Cloud Orchestrated Vehicular Networks
Wen Wu, Kaige Qu, Peng Yang, Ning Zhang, Xuemin (Sherman) Shen, Weihua, Zhuang

TL;DR
This paper introduces a two-stage network slicing framework for vehicular edge-cloud networks, utilizing reinforcement learning and optimization to reduce costs while meeting QoS requirements.
Contribution
It proposes a novel two-timescale stochastic optimization approach with a combined RL and optimization algorithm for cost-effective network slicing.
Findings
Significant cost reduction compared to benchmarks
Effective resource allocation in vehicular networks
Decoupling planning and operation improves efficiency
Abstract
In this paper, we study a network slicing problem for edge-cloud orchestrated vehicular networks, in which the edge and cloud servers are orchestrated to process computation tasks for reducing network slicing cost while satisfying the quality of service requirements. We propose a two-stage network slicing framework, which consists of 1) network planning stage in a large timescale to perform slice deployment, edge resource provisioning, and cloud resource provisioning, and 2) network operation stage in a small timescale to perform resource allocation and task dispatching. Particularly, we formulate the network slicing problem as a two-timescale stochastic optimization problem to minimize the network slicing cost. Since the problem is NP-hard due to coupled network planning and network operation stages, we develop a Two timescAle netWork Slicing (TAWS) algorithm by collaboratively…
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Taxonomy
TopicsSoftware-Defined Networks and 5G
Methodstravel james
