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Maximum Lifetime Analytics in IoT Networks

机译:物联网网络中的最长生命周期分析

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This paper studies the problem of allocating band-width and computation resources to data analytics tasks in Internet of Things (IoT) networks. IoT nodes are powered by batteries, can process (some of) the data locally, and the quality grade or performance of how data analytics tasks are carried out depends on where these are executed. The goal is to design a resource allocation algorithm that jointly maximizes the network lifetime and the performance of the data analytics tasks subject to energy constraints. This joint maximization problem is challenging with coupled resource constraints that induce non-convexity. We first show that the problem can be mapped to an equivalent convex problem, and then propose an online algorithm that provably solves the problem and does not require any a priori knowledge of the time-varying wireless link capacities and data analytics arrival process statistics. The algorithm's optimality properties are derived using an analysis which, to the best of our knowledge, proves for the first time the convergence of the dual subgradient method with time-varying sets. Our simulations seeded by real IoT device energy measurements, show that the network connectivity plays a crucial role in network lifetime maximization, that the algorithm can obtain both maximum network lifetime and maximum data analytics performance in addition to maximizing the joint objective, and that the algorithm increases the network lifetime by approximately 50% compared to an algorithm that minimizes the total energy consumption.
机译:本文研究了在物联网(IoT)网络中为数据分析任务分配带宽和计算资源的问题。物联网节点由电池供电,可以在本地处理(部分)数据,数据分析任务的质量等级或性能取决于在何处执行。目标是设计一种资源分配算法,该算法可共同最大化网络寿命和受能源限制的数据分析任务的性能。这个联合最大化问题对于导致非凸性的耦合资源约束具有挑战性。我们首先显示该问题可以映射到一个等效的凸问题,然后提出一种在线算法,该算法可证明可解决该问题,并且不需要时变无线链路容量和数据分析到达过程统计信息的任何先验知识。该算法的最优性是通过分析得出的,据我们所知,该分析首次证明了时变集对偶次梯度法的收敛性。我们从真实的IoT设备能量测量结果中得出的模拟结果表明,网络连通性在网络寿命最大化中起着至关重要的作用,除了最大化联合目标之外,该算法还可以获得最大的网络寿命和最大的数据分析性能,并且该算法与将总能耗降至最低的算法相比,该方法可将网络寿命延长大约50%。

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