Joint Computing Resource Allocation and Task Offloading in Vehicular Fog Computing Systems Under Asymmetric Information
Geng Sun, Siyi Chen, Zemin Sun, Long He, Jiacheng Wang, Dusit Niyato, Zhu Han, Dong In Kim

TL;DR
This paper proposes a hierarchical vehicular fog computing framework with a joint resource allocation and task offloading approach to minimize delay under asymmetric information, improving efficiency and fairness.
Contribution
It introduces a novel joint resource allocation and task offloading method using convex optimization, contract theory, and matching games for VFC systems with asymmetric information.
Findings
Significantly reduces task completion delay.
Improves resource utilization fairness.
Enhances system throughput and task completion ratio.
Abstract
Vehicular fog computing (VFC) has emerged as a promising paradigm, which leverages the idle computational resources of nearby fog vehicles (FVs) to complement the computing capabilities of conventional vehicular edge computing. However, utilizing VFC to meet the delay-sensitive and computation-intensive requirements of the FVs poses several challenges. First, the limited resources of road side units (RSUs) struggle to accommodate the growing and diverse demands of vehicles. This limitation is further exacerbated by the information asymmetry between the controller and FVs due to the reluctance of FVs to disclose private information and to share resources voluntarily. This information asymmetry hinders the efficient resource allocation and coordination. Second, the heterogeneity in task requirements and the varying capabilities of RSUs and FVs complicate efficient task offloading, thereby…
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