Mobile Vehicles as Fog Nodes for Latency Optimization in Smart Cities

The advent of 5G technologies enables highly anticipated prospect of the internet of things in smart cities. Smart terminals become a necessity with increasing number of applications and tasks. The limited computational resources and constrained battery energy at terminals compel tasks to be offloaded for execution sometimes. For time-sensitive and safety-critical tasks, fog computing is the preferred option instead of cloud computing, since fog computing brings the computing resources to the edge of networks and thus has shorter response latency. In this context, vehicular fog computing (VFC) that supplements fog computing by contributing vehicular computing resources has attracted increasing attention in recent years. However, a few of challenging issues regarding task offloading in VFC still need to be addressed. For example, decision making for task allocation and response latency optimization are not straightforward, since on one hand the connection between vehicles and end users is usually short or intermittent; on the other hand the multi-hop inter-vehicle task forwarding is time-consuming and thus prone to packet loss. To address the latency related issue, the authors in this paper propose a three-layer architecture of VFC to schedule the tasks offloaded from mobile devices (MDs). The road side unit (RSU) is endowed with computing facilities and storing resources such that it can act as not only a gateway to the remote cloud center but also a centralized infrastructure responsible for task scheduling among vehicles. A greedy heuristic based scheduling strategy and algorithms are proposed in the next. Last, an extensive series of experiments are carried out to investigate the proposed scheduling strategy. The results show that the proposed scheduling strategy outperforms other well known heuristics based scheduling strategies such as Min-Min and Max-Min and thus has wide prospects.

Language

  • English

Media Info

Subject/Index Terms

Filing Info

  • Accession Number: 01755122
  • Record Type: Publication
  • Files: TRIS
  • Created Date: Oct 21 2020 9:52AM