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Energy-Saving Predictive Video Streaming with Deep Reinforcement Learning

机译:具有深度强化学习功能的节能预测视频流

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In this paper, we propose a policy to optimize predictive power allocation for video streaming over mobile networks with deep reinforcement learning. The objective is to minimize the average energy consumption for video transmission under the quality of service constraint that avoids video stalling. To handle the continuous state and action spaces, we resort to deep deterministic policy gradient to solve the formulated problem. In contrast to previous predictive resource policies for video streaming, the proposed policy operates in an on- line and end-to-end manner. By judiciously designing action and state, the policy can exploit future information without explicit prediction. Simulation results show that the proposed policy can converge closely to the optimal policy with perfect prediction of future large-scale channel gains and outperforms the prediction-based optimal policy when prediction errors exist.
机译:在本文中,我们提出了一种通过深度强化学习来优化移动网络上视频流的预测功率分配的策略。目的是在避免视频停顿的服务质量约束下将视频传输的平均能耗降至最低。为了处理连续的状态和动作空间,我们诉诸于深层次的确定性策略梯度来解决所提出的问题。与以前的视频流预测资源策略相反,提出的策略以在线和端到端的方式运行。通过明智地设计动作和状态,该策略可以利用未来的信息而无需明确的预测。仿真结果表明,所提出的策略可以与最优策略紧密融合,对未来的大规模信道增益进行完美的预测,并且在存在预测误差的情况下优于基于预测的最优策略。

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