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RADIO ACCESS NETWORK CONTROL WITH DEEP REINFORCEMENT LEARNING

机译:具有深度加强学习的无线电接入网络控制

摘要

A processing system including at least one processor may obtain operational data from a radio access network (RAN), format the operational data into state information and reward information for a reinforcement learning agent (RLA), processing the state information and the reward information via the RLA, where the RLA comprises a plurality of sub-agents, each comprising a respective neural network, each of the neural networks encoding a respective policy for selecting at least one setting of at least one parameter of the RAN to increase a respective predicted reward in accordance with the state information, and where each neural network is updated in accordance with the reward information. The processing system may further determine settings for parameters of the RAN via the RLA, where the RLA determines the settings in accordance with selections for the settings via the plurality of sub-agents, and apply the plurality of settings to the RAN.
机译:包括至少一个处理器的处理系统可以从无线电接入网络(RAN)获得操作数据,将运行数据格式化为状态信息并奖励加强学习代理(RLA),通过以下方式处理状态信息和奖励信息RLA,其中RLA包括多个子代理,每个子代理包括相应的神经网络,每个神经网络编码相应的策略,用于选择ran的至少一个参数的至少一个设置以增加相应的预测奖励根据状态信息,以及根据奖励信息更新每个神经网络的位置。处理系统还可以通过RLA进一步确定RAN参数的设置,其中RLA根据通过多个子代理的选择来确定设置,并将多个设置应用于RAN。

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