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首页> 外文期刊>IEEE Transactions on Signal Processing >Online Power Optimization in Feedback-Limited, Dynamic and Unpredictable IoT Networks
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Online Power Optimization in Feedback-Limited, Dynamic and Unpredictable IoT Networks

机译:反馈受限,动态且不可预测的IoT网络中的在线功率优化

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One of the key challenges in Internet of Things (IoT) networks is to connect many different types of autonomous devices while reducing their individual power consumption. This problem is exacerbated by two main factors: first, the fact that these devices operate in and give rise to a highly dynamic and unpredictable environment where existing solutions (e.g., water-filling algorithms) are no longer relevant; and second, the lack of sufficient information at the device end. To address these issues, we propose a regret-based formulation that accounts for arbitrary network dynamics: this allows us to derive an online power control scheme that is provably capable of adapting to such changes, while relying solely on strictly causal feedback. In so doing, we identify an important tradeoff between the amount of feedback available at the transmitter side and the resulting system performance: if the device has access to unbiased gradient observations, the algorithm's regret after T stages is O(T-1/2) (up to logarithmic factors); on the other hand, if the device only has access to scalar, utility-based information, this decay rate drops to O(T-1/4). The above is validated by an extensive suite of numerical simulations in realistic channel conditions, which clearly exhibit the gains of the proposed online approach over traditional water-filling methods.
机译:物联网(IoT)网络的主要挑战之一是连接许多不同类型的自主设备,同时降低其各自的功耗。两个主要因素加剧了这一问题:首先,这些设备在不存在的环境中运行并导致高度动态且不可预测的环境,而现有解决方案(例如注水算法)已不再适用。其次,设备端缺乏足够的信息。为了解决这些问题,我们提出了一种基于后悔的表述方法,该表述方法考虑了任意网络动态:这使我们能够推导一种在线功率控制方案,该方案可证明能够适应这种变化,同时仅依赖严格的因果反馈。通过这样做,我们确定了在发射机端可用的反馈量与系统性能之间的重要折衷:如果设备可以访问无偏梯度观测值,则算法在T阶段后的遗憾为O(T-1 / 2) (取决于对数因子);另一方面,如果设备只能访问基于效用的标量信息,则该衰减率将降至O(T-1 / 4)。以上已通过在实际通道条件下进行的大量数值模拟验证,这清楚地展示了所提出的在线方法相对于传统注水方法的收益。

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