Energy-Efficient Task Computation at the Edge for Vehicular Services
Paniz Parastar, Giuseppe Caso, Jesus Alberto Omana Iglesias, Andra Lutu, Ozgu Alay

TL;DR
This paper proposes an energy-efficient task offloading framework for vehicular services using multi-agent reinforcement learning, effectively reducing energy consumption and improving task reliability in mobile edge computing scenarios.
Contribution
It introduces a novel optimization approach based on real-world mobility data and reinforcement learning to minimize energy use while meeting latency constraints.
Findings
Achieves 47% energy savings in static scenarios.
Achieves 14% energy savings in mobile scenarios.
Reduces user dissatisfaction and task interruptions.
Abstract
Multi-access edge computing (MEC) is a promising solution for providing the computational resources and low latency required by vehicular services such as autonomous driving. It enables cars to offload computationally intensive tasks to nearby servers. Effective offloading involves determining when to offload tasks, selecting the appropriate MEC site, and efficiently allocating resources to ensure good performance. Car mobility poses significant challenges to guaranteeing reliable task completion, and today we still lack energy efficient solutions to this problem, especially when considering real-world car mobility traces. In this paper, we begin by examining the mobility patterns of cars using data obtained from a leading mobile network operator in Europe. Based on the insights from this analysis, we design an optimization problem for task computation and offloading, considering both…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Mobile Crowdsensing and Crowdsourcing · Vehicular Ad Hoc Networks (VANETs)
