Efficient Location Aware Protocol for Multi-UAV Networks
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Abstract
Unmanned aerial vehicles (UAVs), generally known as drones, have gained considerable
attention from the research community and business organizations over the past
few years. Indeed, UAVs are being widely deployed to provide on-demand wireless
coverage in extreme conditions such as disaster-prone areas and delivery of essential
products such as medicines and food during rescue operations. For this purpose,
multiple UAVs can form a web of drones, geo-distributed across a large coverage
area to perform ad hoc and distributed operations quickly and cost-e↵ectively. The
UAVs can also collaborate and coordinate with other cutting edge technologies such
as Software Defined Networking (SDN), Internet of Things (IoT) and Blockchain to
realization various futuristic on-demand consumer applications and service across
the smart city. The popular UAV-based applications can be categorized into domains
like UAV-assisted data relaying, UAV-assisted monitoring and data collection
and UAV-assisted product delivery.
Despite various advantages of using UAVs, there are associated challenges while
utilizing them in on-demand applications. The key challenges are deployment, data
o✏oading and bandwidth, power consumption, energy efficiency, accuracy, latency
etc. Thus, it is consequential to formalize an efficient solution, which can provide
sustainable connectivity in drone networks with efficient control as well as provisioning
of the high Quality of Service (QoS). So, far the drone to drone and drone to
ground communication, the work is presented on four major challenges: (i) collision
(ii) network congestion (iii) energy consumption (iv) location-aware and Quality of
Service (QoS) (v) energy optimization of UAVs at the time of charging, discharging,
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and information transmission. To resolve the above mentioned challenges, the task
has been accomplished in this research work with three di↵erent approaches.
The first approach presents a Medium Access Control (MAC) protocol is proposed
that utilizes the firefly optimization algorithm for operating the timing cycle
of the network. To support the proposed protocol, three algorithms are designed
to accomplish the challenges related to collision, network congestion, and energy
consumption. The first algorithm deals with collision avoidance and is designed
on the basis of the light intensity property of the firefly optimization. The second
algorithm handles the network congestion by controlling the size of the congestion
window. The third algorithm computes the nearby optimal route with minimum
energy consumption along with the QoS requirements. The performance analysis
suggests that the proposed approach provides an efficient congestion-free, collisionfree,
and energy efficient MAC with signaling quality amended up to 59.04% along
with 80.1% conservation of energy.
The second approach focused on QoS provisioning in a multi-UAV ecosystem.
The parameters considered for the improvement of QoS provisioning are network
throughput, end-to-end delay, and handover latency. Thus, the proposed approach
works in two phases. In the first phase, an opportunistic o✏oading scheme based
on SDN adaptive controller is proposed to handle congestion issues in the network.
The SDN controller automatically reacts to the suspicious change of the network
state and thereby maintains a high level of security. The second phase focused on
the network selection to be coordinated by priority manager and network manager.
Priority manager helps in deciding the data priority to be o✏oaded, whereas the
network managers provide the information of the available uncongested heterogeneous
network so that the SDN controller can perform data o✏oading. The proposed
scheme minimizes the handover latency upto 47% in comparison to other schemes.
In addition, the proposed scheme increases the network throughput upto 14% and
minimizes the end-to-end delay upto 25%.
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Finally, the third approach considered the challenge of energy optimization. In
UAVs network, the charging of UAVs batteries while performing their operations
without being grounded, referred as energy replenishment is one of the major issues
when they are deployed in civilian applications. For the purpose, an opportunistic
SDN-enabled wireless energy charging scheme is proposed. The proposed solution
of the energy charging system works in two parts, (i) the first part is solar energy
harvesting model using solar cells, and (ii) the second part is wireless charging of
UAVs through geo-located charging points in a grid-based layout. The solar energy
harvesting model helps the UAVs to replenish their batteries during the day time,
while the wireless charging model perfectly works in the night time or in extreme
conditions. The proposed wireless energy-charging scheme helps to elongate the
flight time of UAVs and sustain the flight whenever the battery state of charge is
low.
