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Deep Reinforcement Learning Enabled Energy-Efficient Task Pre-Migration in Internet of Vehicles

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Abstract

We propose a task pre-migration scheme based on reinforcement learning for IoV in cloud-fog hybrid optical network. Simulation results show that delay and power consumption are reduced by 40.5% and 12.6% respectively.

© 2021 The Author(s)

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