| Literature DB >> 30486376 |
Pedro Cumino1, Wellington Lobato Junior2,3, Thais Tavares4, Hugo Santos5, Denis Rosário6, Eduardo Cerqueira7, Leandro A Villas8, Mario Gerla9.
Abstract
Collaboration between multiple Unmanned Aerial Vehicles (UAVs) to set up a Flying Ad Hoc Network (FANET) is a growing trend since future applications claim for more autonomous and rapid deployable systems. The user experience on watching videos transmitted over FANETs should always be satisfactory even under influence of topology changes caused by the energy consumption of UAVs. In addition, the FANET must keep the UAVs cooperating as much as possible during a mission. However, one of the main challenges in FANET is how to mitigate the impact of limited energy resources of UAVs on the FANET operation in order to monitor the environment for a long period of time. In this sense, UAV replacement is required in order to avoid the premature death of nodes, network disconnections, route failures, void areas, and low-quality video transmissions. In addition, decision-making must take into account energy consumption associated with UAV movements, since they are generally quite energy-intensive. This article proposes a cooperative UAV scheme for enhancing video transmission and global energy efficiency called VOEI. The main goal of VOEI is to maintain the video with QoE support while supporting the nodes with a good connectivity quality level and flying for a long period of time. Based on an Software Defined Network (SDN) paradigm, the VOEI assumes the existence of a centrailized controller node to compute reliable and energy-efficiency routes, as well as detects the appropriate moment for UAV replacement by considering global FANET context information to provide energy-efficiency operations. Based on simulation results, we conclude that VOEI can effectively mitigate the energy challenges of FANET, since it provides energy-efficiency operations, avoiding network death, route failure, and void area, as well as network partitioning compared to state-of-the-art algorithm. In addition, VOEI delivers videos with suitable Quality of Experience (QoE) to end-users at any time, which is not achieved by the state-of-the-art algorithm.Entities:
Keywords: UAV coordination; UAV replacement; energy-aware; energy-efficiency
Year: 2018 PMID: 30486376 PMCID: PMC6308490 DOI: 10.3390/s18124155
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Video dissemination over FANET for disaster recovery scenario.
Figure 2SDN architecture.
List of main symbol used for VOEI description.
| Symbol | Description |
|---|---|
| Controller Node | |
| Cost function for the CN to select relay and source nodes | |
| Destination node | |
| Initial UAV energy | |
| Energy required to fly to an event or ideal location | |
| Energy required to move a certain distance | |
| Energy required to trigger the battery replacement operation | |
| Energy required to fly back to the control center for battery replacement | |
| Energy spent for receiving a packet with length | |
| Current energy | |
| Energy required to transmit packets for a given video | |
| Energy required to transmit a packet of length | |
| Energy required to retrieve video frames | |
| Ideal relay node location, where | |
| Current UAV Location, where | |
| Location for the battery replacement, where | |
| Radio Range | |
| route between source and destination nodes via2 multiple relay nodes | |
| Remaining energy of each UAV | |
| Relay node for a path between the source | |
| UAV speed | |
| Maximum speed limit | |
| Source node | |
| Time needed to fly from the current location to the event location | |
| UAV mobility trajectory, which can be Stay-At, Way-point, Eight, Scan, and Oval movements | |
| A given UAV with an individual node identity |
Figure 3Number of live UAVs over time for UAVs flying with different speed limits. (a) UAVs flying with speed raging from 1 to 5 m/s; (b) UAVs flying with speed raging from 5 to 10 m/s; (c) UAVs flying with speed raging from 10 to 15 m/s; (d) UAVs flying with speed raging from 15 to 20 m/s.
Figure 4Remaining energy over time for UAVs flying with different speed limits. (a) UAV flying with speed raging from 1 to 5 m/s; (b) UAV flying with speed raging from 5 to 10 m/s; (c) UAV flying with speed raging from 10 to 15 m/s; (d) UAV flying with speed raging from 15 to 20 m/s.
Figure 5Remaining energy and number of live UAVs during the entire simulation for UAVs flying with different speed limits. (a) Nodes of live UAV; (b) Remaining Energy.
Figure 6SSIM over time for UAVs flying with different speed limits. (a) UAV flying with speed raging from 1 to 5 m/s; (b) UAV flying with speed raging from 5 to 10 m/s; (c) UAV flying with speed raging from 10 to 15 m/s; (d) UAV flying with speed raging from 15 to 20 m/s.