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Title: VECMAN: A Framework for Energy-Aware Resource Management in Vehicular Edge Computing Systems
In Vehicular Edge Computing (VEC) systems, the computing resources of connected Electric Vehicles (EV) are used to fulfill the low-latency computation requirements of vehicles. However, local execution of heavy workloads may drain a considerable amount of energy in EVs. One promising way to improve the energy efficiency is to share and coordinate computing resources among connected EVs. However, the uncertainties in the future location of vehicles make it hard to decide which vehicles participate in resource sharing and how long they share their resources so that all participants benefit from resource sharing. In this paper, we propose VECMAN, a framework for energy-aware resource management in VEC systems composed of two algorithms: (i) a resource selector algorithm that determines the participating vehicles and the duration of resource sharing period; and (ii) an energy manager algorithm that manages computing resources of the participating vehicles with the aim of minimizing the computational energy consumption. We evaluate the proposed algorithms and show that they considerably reduce the vehicles computational energy consumption compared to the state-of-the-art baselines. Specifically, our algorithms achieve between 7% and 18% energy savings compared to a baseline that executes workload locally and an average of 13% energy savings compared to a more » baseline that offloads vehicles workloads to RSUs. « less
Authors:
; ;
Award ID(s):
1948365 1724227
Publication Date:
NSF-PAR ID:
10280442
Journal Name:
IEEE Transactions on Mobile Computing
Page Range or eLocation-ID:
1 to 1
ISSN:
1536-1233
Sponsoring Org:
National Science Foundation
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