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SYSTEM AND METHOD FOR DEEP LEARNING AND WIRELESS NETWORK OPTIMIZATION USING DEEP LEARNING

机译:利用深度学习进行深度学习和无线网络优化的系统和方法

摘要

A neural network is trained using deep reinforcement learning (DRL) techniques for adjusting cell parameters of a wireless network by generating a plurality of experience tuples, and updating the neural network based on the generated experience tuples. The trained neural network may be used to select actions to adjust the cell parameters. Each experience tuple includes a cell identifier, a first state, a second state, an action applied to the cell that moves the cell from the first state to the second state, a local reward, and a global reward. The neural network is updated based on whether or not each action is acceptable, which is determined based on the global reward and the local reward associated with each action.
机译:使用深度强化学习(DRL)技术训练神经网络,以通过生成多个体验元组并基于生成的体验元组来更新神经网络,从而调整无线网络的小区参数。经训练的神经网络可用于选择动作以调整细胞参数。每个体验元组包括单元标识符,第一状态,第二状态,应用于单元的,将单元从第一状态移动到第二状态的动作,局部奖励和全局奖励。基于每个动作是否可接受来更新神经网络,这基于与每个动作相关联的全局奖励和局部奖励来确定。

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