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Context-Aware Learning-Based Resource Allocation for Ubiquitous Power IoT

机译:无处不在的电源IOT的上下文感知基于学习的资源分配

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摘要

Ubiquitous power Internet of Things (UPIoT) will revolutionize every aspect of the energy sector due to its powerful sensing capability and ubiquitous connectivity. However, the tension between the exponentially increasing number of devices and the limited spectrum resources poses a new challenge on channel selection. In this article, we propose a context-aware learning-based channel selection framework, which can learn the optimal long-term strategy without prior knowledge of global state information. Specifically, we propose a service reliability aware, energy aware, and data backlog aware (SEB) upper confidence bound (UCB)-based channel selection algorithm named SEB-UCB to address the non-adversarial channel selection problem, and propose an SEB exponential weight algorithm for exploration and exploitation (EXP3)-based channel selection algorithm named SEB-EXP3 to address the adversarial channel selection problem. Next, a case study is provided to demonstrate the feasibility of the proposed framework. Finally, we conclude this article and identify several future research issues.
机译:由于其强大的传感能力和无处不在的连接,无处不在的电网(UPIET)将彻底改变能源部门的各个方面。然而,指数越来越多的设备和有限频谱资源之间的张力在频道选择上提出了新的挑战。在本文中,我们提出了一种上下文知识的基于学习的频道选择框架,其可以在没有先前了解全局状态信息的情况下学习最佳的长期策略。具体地,我们提出了服务可靠性所知,能量识别和数据积压意识(SEB)的上置信束缚(UCB)基于SEB-UCB的基于信道选择算法,以解决非对手信道选择问题,并提出SEB指数权重命名为SEB-EXP3的基于探索与开发算法(EXP3)的频道选择算法来解决对抗渠道选择问题。接下来,提供案例研究以证明所提出的框架的可行性。最后,我们得出本文得出结论,并确定了几个未来的研究问题。

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