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Joint Sensor Selection and Energy Allocation for Tasks-Driven Mobile Charging in Wireless Rechargeable Sensor Networks

机译:无线可充电传感器网络中任务驱动移动充电的联合传感器选择和能量分配

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摘要

Wireless power transfer (WPT) has emerged as a promising paradigm to charge devices due to the high reliability and efficiency of continuous power supply. Recent studies usually focus on relatively general charging patterns and metrics but neglect the collaborated task execution of nodes that incur charging inefficiency. In this article, we respect the energy requirement diversity among nodes to investigate the collaborated and tasks-driven mobile charging problem. Our goal is to maximize the overall task utility that concerns sensor selection and task cooperation. To address this problem, we propose a (1-1/e)/4-approximation algorithm. First, we propose a novel energy allocation scheme with a specific theoretical analysis of the submodularity and gap property for the surrogate function. Then, we approximate the traveling cost to transform the formulated problem into an essentially monotone submodular function optimization subject to a general routing constraint and propose a greedy algorithm to address this problem. We conduct extensive simulations to validate our theoretical results and the results show our algorithm can achieve a near-optimal solution covering at least 84.9% of the optimal result achieved by the OPT algorithm. Furthermore, field experiments in an office room and a soccer field environment are implemented, respectively, to validate our proposed algorithm.
机译:由于连续电源的高可靠性和效率,无线电力传输(WPT)作为充满电压的电荷设备。最近的研究通常侧重于相对普遍的充电模式和指标,而是忽略了引发收费低效率的节点的合作任务执行。在本文中,我们尊重节点之间的能源需求多样性,以调查协作和任务驱动的移动收费问题。我们的目标是最大限度地提及传感器选择和任务合作的整体任务实用程序。为了解决这个问题,我们提出了一种(1-1 / e)/ 4近似算法。首先,我们提出了一种新的能量分配方案,具有对替代函数的潜水线和差距性质的特异性理论分析。然后,我们估计将配制的问题转换为基本上单调的子模块函数优化,这是经过一般路由约束的基本单调的子模块函数优化,并提出一种贪婪算法来解决这个问题。我们进行广泛的模拟以验证我们的理论结果,结果表明我们的算法可以实现覆盖OPT算法所实现的最佳结果的近84.9%的近乎最佳解决方案。此外,分别实施了办公室房间和足球场环境的现场实验,以验证我们所提出的算法。

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