QoS Aware Mixed-Criticality Task Scheduling in Vehicular Edge Cloud System
Suvarthi Sarkar, Aditya Trivedi, Ritish Bansal, Aryabartta Sahu

TL;DR
This paper proposes a hybrid task scheduling approach for vehicular edge cloud systems that improves QoS by optimizing task offloading, criticality handling, and resource utilization, achieving up to 25% better performance.
Contribution
It introduces a hybrid scheduling method that dynamically allocates tasks to base stations or central scheduler based on load and criticality, enhancing efficiency and QoS.
Findings
Up to 25% QoS improvement over existing methods
Effective task offloading reduces distance and energy costs
Prioritized scheduling enhances critical task execution
Abstract
Modern-day cars are equipped with numerous cameras and sensors, typically integrated with advanced decision-control systems that enable the vehicle to perceive its surroundings and navigate autonomously. Efficient processing of data from sensors, lidars, radars and cameras is quite computationally intensive and can not be done with good accuracy using less capable onboard resources. In order to deal with this problem, some computation requirements (also referred as tasks) are offloaded to infrastructure or executed in parallel in both autonomous vehicle (AV) and infrastructure to enhance accuracy. The infrastructure comprises base stations, a centralized cloud, and a CS. Base stations (BSs) execute tasks in collaboration with a significantly more powerful centralized cloud, while the centralised scheduler (CS) centrally schedules all the tasks. The base station receives tasks from…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Vehicular Ad Hoc Networks (VANETs) · Age of Information Optimization
