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Real-Time Scheduling Using Reinforcement Learning Technique for the Connected Vehicles

机译:使用强化学习技术对互联车辆进行实时调度

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This paper proposes a real-time scheduling algorithm using Reinforcement Learning (RL) for the connected vehicles based on Software Defined Network (SDN) and fog computing. In the connected vehicles, there are various services that need to be processed in real time for the safety and entertainment of the driver. In such a situation, it is important for the driver to deliver the service within the deadline. Road Sid Units (RSUs) acting as fog server and SDN controller can make appropriate real time scheduling by utilizing current network situation and service request list. The proposed method finds a policy that minimizes the number of services that fail to meet deadlines for each scheduling period. Simulation results show that the proposed method has higher performance than the comparison method. The proposed method can guarantee effective scheduling in most situations by establishing adaptive policies in various environments through learning.
机译:本文基于软件定义网络(SDN)和雾计算,提出了一种基于强化学习(RL)的实时调度算法。在联网车辆中,为了驾驶员的安全和娱乐,需要实时处理各种服务。在这种情况下,对于驾驶员而言,在期限内交付服务非常重要。充当雾服务器和SDN控制器的路Sid单元(RSU)可以利用当前的网络状况和服务请求列表来进行适当的实时调度。所提出的方法找到了一种策略,该策略可最大程度地减少未能在每个调度周期内都满足最后期限的服务数量。仿真结果表明,该方法具有比比较方法更高的性能。通过在学习中在各种环境中建立自适应策略,该方法可以在大多数情况下保证有效的调度。

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