Efficient Content Delivery in User-Centric and Cache-Enabled Vehicular Edge Networks with Deadline-Constrained Heterogeneous Demands
Md Ferdous Pervej, Richeng Jin, Shih-Chun Lin, Huaiyu Dai

TL;DR
This paper proposes a novel vehicular edge network framework using cache placement and deep reinforcement learning to ensure timely content delivery for connected vehicles with heterogeneous demands.
Contribution
It introduces a user-centric virtual cell RAT solution with a joint optimization approach for content caching and delivery, leveraging DRL and bipartite matching.
Findings
Improved cache hit ratio compared to baselines
Reduced content delivery delay
Lower deadline violation rates
Abstract
Modern connected vehicles (CVs) frequently require diverse types of content for mission-critical decision-making and onboard users' entertainment. These contents are required to be fully delivered to the requester CVs within stringent deadlines that the existing radio access technology (RAT) solutions may fail to ensure. Motivated by the above consideration, this paper exploits content caching in vehicular edge networks (VENs) with a software-defined user-centric virtual cell (VC) based RAT solution for delivering the requested contents from a proximity edge server. Moreover, to capture the heterogeneous demands of the CVs, we introduce a preference-popularity tradeoff in their content request model. To that end, we formulate a joint optimization problem for content placement, CV scheduling, VC configuration, VC-CV association and radio resource allocation to minimize long-term content…
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Taxonomy
TopicsCaching and Content Delivery · Cooperative Communication and Network Coding · Opportunistic and Delay-Tolerant Networks
