【摘 要】
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In order to improve the efficiency of tasks processing and reduce the energy consumption of new energy vehicle (NEV),an adaptive dual task offloading decision-making scheme for Internet of vehicles is proposed based on information-assisted service of road
【机 构】
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School of Computer Science and Technology, Henan Polytechnic University, Jiaozuo 454000, China
论文部分内容阅读
In order to improve the efficiency of tasks processing and reduce the energy consumption of new energy vehicle (NEV),an adaptive dual task offloading decision-making scheme for Internet of vehicles is proposed based on information-assisted service of road side units (RSUs) and task offloading theory.Taking the roadside parking space recommendation service as the specific application Scenario,the task offloading model is built and a hierarchical self-organizing network model is constructed,which utilizes the computing power sharing among nodes,RSUs and mobile edge computing (MEC) servers.The task scheduling is performed through the adaptive task offloading decision algorithm,which helps to realize the available parking space recommendation service which is energy-saving and environmental-friendly.Compared with these traditional task offloading decisions,the proposed scheme takes less time and less energy in the whole process of tasks.Simulation results testified the effectiveness of the proposed scheme.
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