This paper presents the extension of the idea of spectrum sharing in the vehicular networks towards the Heterogeneous Vehicular Network(HetVNET) based on multi-agent reinforcement learning. Here, the multiple vehicle-to-vehicle(V2V) links reuse the spectrum of other vehicle-to-interface(V2I) and also those of other networks. The fast-changing environment in vehicular networks limits the idea of centralizing the CSI and allocate the channels. So, the idea of implementing ML-based methods is used here so that it can be implemented in a distributed manner in all vehicles. Here each On-Board Unit(OBU) can sense the signals in the channel and based on that information runs the RL to decide which channel to autonomously take up. Here, each V2V link will be an agent in MARL. The idea is to train the RL model in such a way that these agents will collaborate rather than compete.
翻译:本文件介绍了在多试剂加固学习的基础上,将车辆网络频谱共享理念扩展到多剂式车辆网络(HetVNET)的扩展。这里,多车到车辆(V2V)链接重复了其他车辆对车(V2I)和其他网络的频谱。车辆网络中的快速变化环境限制了集中CSI和分配频道的理念。因此,在这里使用采用基于ML方法的理念,以便能够在所有车辆中以分布方式实施。这里,每个在船上的单位(OBU)都能感知频道中的信号,并以此信息为基础,运行RL,以决定自动进入哪个频道。在这里,每个V2V链接将成为MAR的代理商。这个理念是培训RL模型,以便这些代理商能够合作而不是竞争。