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User Association for Load Balancing in Vehicular Networks: An Online Reinforcement Learning Approach

机译:车辆网络中负载平衡的用户协会:在线强化学习方法

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摘要

Recently, a number of technologies have been developed to promote vehicular networks. When vehicles are associated with the heterogeneous base stations (e.g., macrocells, picocells, and femtocells), one of the most important problems is to make load balancing among these base stations. Different from common mobile networks, data traffic in vehicular networks can be observed having regularities in the spatial-temporal dimension due to the periodicity of urban traffic flow. By taking advantage of this feature, we propose an online reinforcement learning approach, called ORLA. It is a distributed user association algorithm for network load balancing in vehicular networks. Based on the historical association experiences, ORLA can obtain a good association solution through learning from the dynamic vehicular environment continually. In the long run, the real-time feedback and the regular traffic association patterns both help ORLA cope with the dynamics of network well. In experiments, we use QiangSheng taxi movement to evaluate the performance of ORLA. Our experiments verify that ORLA has higher quality load balancing compared with other popular association methods.
机译:最近,已经开发了许多技术来促进车辆网络。当车辆与异质基站相关联时(例如,宏小区,微微小区和毫微微小区),最重要的问题之一是在这些基站之间进行负载平衡。与公共移动网络不同,由于城市交通流量的周期性,可以观察到车辆网络中的数据流量在空间尺寸中具有规律。通过利用此功能,我们提出了一种称为Orla的在线强化学习方法。它是用于车辆网络中的网络负载平衡的分布式用户协会算法。基于历史协会经验,Orla可以通过不断地从动态车辆环境学习良好的关联解决方案。从长远来看,实时反馈和常规流量关联模式都有助于orla应对网络的动态。在实验中,我们使用羌生出租车运动来评估Orla的表现。我们的实验验证了与其他流行关联方法相比具有更高质量负载平衡的orla。

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