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Autonomous Management of Energy-Harvesting IoT Nodes Using Deep Reinforcement Learning

机译:使用深度强化学习的能源收集IoT节点自主管理

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Reinforcement learning (RL) is capable of managing wireless, energy-harvesting IoT nodes by solving the problem of autonomous management in non-stationary, resource-constrained settings. We show that the state-of-the-art policy-gradient approaches to RL are appropriate for the IoT domain and that they outperform previous approaches. Due to the ability to model continuous observation and action spaces, as well as improved function approximation capability, the new approaches are able to solve harder problems, permitting reward functions that are better aligned with the actual application goals. We show such a reward function and use policy-gradient approaches to learn capable policies, leading to behavior more appropriate for IoT nodes with less manual design effort, increasing the level of autonomy in IoT.
机译:强化学习(RL)能够通过解决非平稳,资源受限的环境中的自主管理问题来管理无线的能量收集IoT节点。我们显示,针对RL的最新策略梯度方法适用于IoT领域,并且其性能优于以前的方法。由于具有对连续观察空间和动作空间建模的能力,以及改进的函数逼近能力,新方法能够解决更困难的问题,从而使奖励函数与实际应用目标更好地吻合。我们展示了这种奖励功能,并使用策略梯度方法来学习有能力的策略,从而以更少的手动设计工作量使行为更适合于IoT节点,从而提高了IoT的自主性水平。

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