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An Efficient Neural Network Architecture for Rate Maximization in Energy Harvesting Downlink Channels

机译:用于能量收集下行链路信道速率最大化的高效神经网络架构

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This paper deals with the power allocation problem for achieving the upper bound of sum-rate region in energy harvesting downlink channels. We prove that the optimal power allocation policy that maximizes the sum-rate is an increasing function for harvested energy, channel gains, and remaining battery, regardless of the number of users in the downlink channels. We use this proof as a mathematical basis for the construction of a shallow neural network that can fully reflect the increasing property of the optimal policy. This scheme helps us to avoid using big neural networks which requires huge computational resources and causes overfitting. Through experiments, we reveal the inefficiencies and risks of deep neural network that are not optimized enough for the desired policy, and shows that our approach learns a robust policy even with the severe randomness of environments.
机译:为了解决能量收集下行链路信道中求和速率区域的上限,本文讨论了功率分配问题。我们证明,使总和率最大化的最佳功率分配策略是收获的能量,信道增益和剩余电池的增加函数,而与下行链路信道中的用户数量无关。我们将此证明用作构建浅层神经网络的数学基础,该浅层神经网络可以充分反映最优策略的不断增长的性质。这种方案可以帮助我们避免使用大型神经网络,而大型神经网络需要大量的计算资源,并且会导致过拟合。通过实验,我们揭示了深度神经网络的效率低下和风险不足,不足以针对所需的策略进行优化,并且表明即使在环境具有严重随机性的情况下,我们的方法仍可以学习可靠的策略。

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