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A Transfer Deep Q-Learning Framework for Resource Competition in Virtual Mobile Networks With Energy-Harvesting Base Stations

机译:具有能量收集基站的虚拟移动网络中资源竞争的深度Q学习框架

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This article considers the problem of resource sharing in a virtual mobile network with energy-harvesting base stations (BSs), where several virtual mobile operators (VMOs) lease radio resources (e.g., radio channels and green BSs) from a mobile network owner (MNO). The VMOs want to provide subscribed users with the best performance while ensuring minimal leasing costs. We aim to find the optimal resource leasing scheme for a VMO in order to maximize utility within the uncertainties of harvested energy, request arrivals, and resource prices. We first formulate the problem as a Markov decision process, during which the VMOs compete with each other for the radio resources by dynamically announcing their resource requirements to the MNO. We, then, employ a deep Q-learning algorithm so the VMO can find the optimal solution by interacting with the environment. With this algorithm, artificial neural networks are used to approximate the Q-value function, which can work effectively with large state and action spaces. We further employ the idea of transfer learning, which exploits the strategies learned in historical periods to speed up the learning process of the target task. Finally, we present comprehensive simulations to evaluate the performance of the proposed scheme under various configurations.
机译:本文考虑了具有能量收集基站(BSS)的虚拟移动网络中的资源共享问题,其中几个虚拟移动运营商(VMOS)租用来自移动网络所有者的无线电资源(例如,无线电通道和绿色BS)(MNO )。 VMOS希望提供具有最佳性能的订阅用户,同时确保最小的租赁成本。我们的目标是找到VMO的最佳资源租赁计划,以便在收获的能量,征求人数和资源价格的不确定性内最大化效用。我们首先将问题作为马尔可夫决策过程,在此期间,通过动态地将其资源要求动态地将其资源需求传播到MNO来竞争无线电资源的VMOS。然后,我们使用深度Q学习算法,因此VMO可以通过与环境进行交互来找到最佳解决方案。利用该算法,人工神经网络用于近似Q值函数,其可以用大状态和动作空间有效地工作。我们进一步雇用了转移学习的想法,该概念利用历史时期所吸取的策略来加快目标任务的学习过程。最后,我们在各种配置下提供了全面的模拟来评估所提出的方案的性能。

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