| Literature DB >> 29751662 |
Sara Arabi1, Essaid Sabir2, Halima Elbiaze3, Mohamed Sadik4.
Abstract
Recently, Unmanned Aerial Vehicles (UAVs) have emerged as an alternative solution to assist wireless networks, thanks to numerous advantages they offer in comparison to terrestrial fixed base stations. For instance, a UAV can be used to embed a flying base station providing an on-demand nomadic access to network services. A UAV can also be used to wirelessly recharge out-of-battery ground devices. In this paper, we aim to deal with both data collection and recharging depleted ground Internet-of-Things (IoT) devices through a UAV station used as a flying base station. To extend the network lifetime, we present a novel use of UAV with energy harvesting module and wireless recharging capabilities. However, the UAV is used as an energy source to empower depleted IoT devices. On one hand, the UAV charges depleted ground IoT devices under three policies: (1) low-battery first scheme; (2) high-battery first scheme; and (3) random scheme. On the other hand, the UAV station collects data from IoT devices that have sufficient energy to transmit their packets, and in the same phase, the UAV exploits the Radio Frequency (RF) signals transmitted by IoT devices to extract and harvest energy. Furthermore, and as the UAV station has a limited coverage time due to its energy constraints, we propose and investigate an efficient trade-off between ground users recharging time and data gathering time. Furthermore, we suggest to control and optimize the UAV trajectory in order to complete its travel within a minimum time, while minimizing the energy spent and/or enhancing the network lifetime. Extensive numerical results and simulations show how the system behaves under different scenarios and using various metrics in which we examine the added value of UAV with energy harvesting module.Entities:
Keywords: Internet-of-Things; UAV trajectory planning; data collection; energy harvesting; scheduling time; unmanned aerial vehicle (UAV); wireless recharging
Year: 2018 PMID: 29751662 PMCID: PMC5982466 DOI: 10.3390/s18051519
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1System model.
Figure 2The frame structure.
Figure 3IoT device’s battery level as a Birth-Death process.
Figure 4Battery recharging evolution over time.
Figure 5The rate of charge
Figure 6Scheduling policy.
Simulation settings.
| Parameter | Value |
|---|---|
| Maximum number of devices within a single island | 200 |
| Maximum transmit power of a ground IoT device | 500 mW |
| Maximum battery level | |
| Threshold battery level | |
| Critical threshold | |
| Channel gain | Rayleigh with mean 1 |
| Path loss exponent | 3 |
Figure 7Total energy harvested by UAV and received by IoT devices.
Figure 8The average battery charge.
Figure 9Energy harvesting gain versus .
Figure 10UAV trajectory in one travel.