A dynamic clustering technique based on deep reinforcement learning for Internet of vehicles

被引:0
作者
Abida Sharif
Jian Ping Li
Muhammad Asim Saleem
Gunasekaran Manogran
Seifedine Kadry
Abdul Basit
Muhammad Attique Khan
机构
[1] University of Electronic Science and Technology,School of Computer Science and Engineering
[2] University of California,Department of Mathematics and Computer Science, Faculty of Science
[3] Beirut Arab University,Department of Computer Science
[4] University of Engineering and Technology,undefined
[5] HITEC University Taxila,undefined
来源
Journal of Intelligent Manufacturing | 2021年 / 32卷
关键词
Deep reinforcement learning; Internet of vehicles; Clustering; Reinforcement learning; Optimization;
D O I
暂无
中图分类号
学科分类号
摘要
The Internet of Vehicles (IoV) is a communication paradigm that connects the vehicles to the Internet for transferring information between the networks. One of the key challenges in IoV is the management of a massive amount of traffic generated from a large number of connected IoT-based vehicles. Network clustering strategies have been proposed to solve the challenges of traffic management in IoV networks. Traditional optimization approaches have been proposed to manage the resources of the network efficiently. However, the nature of next-generation IoV environment is highly dynamic, and the existing optimization technique cannot precisely formulate the dynamic characteristic of IoV networks. Reinforcement learning is a model-free technique where an agent learns from its environment for learning the optimal policies. We propose an experience-driven approach based on an Actor-Critic based Deep Reinforcement learning framework (AC-DRL) for efficiently selecting the cluster head (CH) for managing the resources of the network considering the noisy nature of IoV environment. The agent in the proposed AC-DRL can efficiently approximate and learn the state-action value function of the actor and action function of the critic for selecting the CH considering the dynamic condition of the network.The experimental results show an improvement of 28% and 15% respectively, in terms of satisfying the SLA requirement and 35% and 14% improvement in throughput compared to the static and DQN approaches.
引用
收藏
页码:757 / 768
页数:11
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