Publication | Open Access
Partial Offloading in Energy Harvested Mobile Edge Computing: A Direct Search Approach
61
Citations
13
References
2020
Year
Wireless CommunicationsEngineeringEdge DeviceEnergy EfficiencyMobile Edge CloudLow Power DevicesInternet Of ThingsWireless SystemsEnergy-efficient CommunicationMobile Data OffloadingElectrical EngineeringDirect Search ApproachComputer EngineeringMobile ComputingEdge ArchitectureEnergy ManagementEdge ComputingPartial OffloadingCloud ComputingMulti-access Edge ComputingWireless Power TransferPower-efficient ComputingResource OptimizationEnergy-efficient Networking
In the next generation wireless communication paradigm, the number of devices are expected to increase exponentially after the concept of Internet of Things (IoT). These devices are power constrained, with limited processing capability. Therefore, in order to get the maximum advantage from these low power IoT sensing devices, it is of utmost need to empower them. Similarly, the devices are not able to process the computationally intensive applications. In this work, Wireless Power Mobile Edge Cloud (WPMEC) is considered, which is an integration of Wireless Power Transfer (WPT) and Mobile Edge Cloud (MEC) to address low power devices’ battery and computational capabilities. The WPMEC is charging the devices in the first phase using the WPT and in the second phase, the devices are offloading their computational intensive data to the MEC. Partial offloading scheme is first time introduced and analyzed with WPMEC. Performance of proposed solution is evaluated in terms of overall network computational energy efficiency. Extensive simulations have been carried out to validate the proposed solution. It is shown that the proposed partial offloading scheme with WPMEC outperforms the binary and local computational schemes.
| Year | Citations | |
|---|---|---|
Page 1
Page 1