Binary vs partial offloading in wireless powered mobile edge computing systems with fairness guarantees

Marija Poposka, Zoran Hadzi-Velkov
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引用次数: 1

Abstract

Mobile Edge Computing (MEC) has recently emerged as a new communications/computing concept that amends the limited computing of IoT devices by completely or partially offloading the computational tasks to the MEC servers at the network edge (typically co-located with the base stations). Because IoT devices are typically power limited, the potential of the MEC is further enhanced by its integration with wireless power transfer technology, especially for those IoT devices with a high duty cycle that requires frequent battery replacement. This paper develops fairness-aware resource allocation schemes for a WPT-assisted MEC system whose Energy Harvesting Users (EHUs) employ either binary or partial offloading. Specifically, the proposed schemes optimize the computational speeds and the energy harvesting and offloading durations of the EHUs with the aim to maximize the minimum of their computed bits (sum of locally and remotely processed bits of each EHU), subject to the RF energy harvested from the base station. When EHUs are concentrated closer to the base station, remote processing is preferred over local processing, as local processing consumes more energy than the Radio Frequency (RF) power for offloading data to the MEC server, but this effect diminishes for lower values of the computational effort needed for the processing of a single bit. Interestingly, in terms of the sum computation rate, the partial offloading scheme only slightly outperforms the binary offloading scheme, but only when the EHUs are moderately away from the base station.
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具有公平性保证的无线供电移动边缘计算系统中的二进制与部分卸载
移动边缘计算(MEC)最近作为一种新的通信/计算概念出现,它通过将计算任务全部或部分卸载到网络边缘的MEC服务器(通常与基站位于同一位置)来修正物联网设备的有限计算。由于物联网设备通常功率有限,因此MEC的潜力通过与无线电力传输技术的集成进一步增强,特别是对于那些需要频繁更换电池的高占空比物联网设备。针对能量收集用户采用二进制或部分卸载的wpt辅助MEC系统,提出了一种具有公平性意识的资源分配方案。具体而言,所提出的方案优化了EHU的计算速度和能量收集和卸载持续时间,目的是最大化其计算位的最小值(每个EHU的本地和远程处理位的总和),并受到从基站收集的射频能量的影响。当eu集中在离基站更近的地方时,远程处理比本地处理更受欢迎,因为本地处理比将数据卸载到MEC服务器所需的射频(RF)功率消耗更多的能量,但是这种影响会随着处理单个比特所需的计算工作量的降低而减弱。有趣的是,就总和计算率而言,部分卸载方案仅略优于二进制卸载方案,但前提是ehu与基站的距离适中。
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