Abstract

Using unmanned aerial vehicles (UAVs) in emergency communications is a promising technology because of their flexible deployment, low cost, and high mobility. However, due to the limited energy of the onboard battery, the service duration of the UAV is greatly limited. In this paper, we study an emerging energy-efficient UAV emergency network, where a UAV works as an aerial base station to serve a group of users with different statistical quality-of-service (QoS) constraints in the downlink. In particular, the energy efficiency of the UAV is defined as the sum effective capacity of the downlink users divided by the energy consumption of the UAV, which includes the energy consumed by communication and the energy consumed by hovering. Then, we formulate an optimization problem to maximize the energy efficiency of the UAV by jointly optimizing the UAV’s altitude, downlink transmit power, and bandwidth allocation while meeting a statistical delay QoS requirement for each user. The formulated optimization problem is a nonlinear nonconvex optimization problem of fractional programming, which is difficult to solve. In order to deal with the nonconvex optimization problem, the following two steps are used. First, we transform the fractional objective function into a tractable subtractive function. Second, we decompose the original optimization problem into three subproblems, and then, we propose an efficient iterative algorithm to obtain the energy efficiency maximization value by using the Dinkelbach method, the block coordinate descent, and the successive convex optimization technique. Extensive simulation results show that our proposed algorithm has significant energy savings compared with a benchmark scheme.

Highlights

  • IntroductionWe jointly consider the influence of the unmanned aerial vehicles (UAVs) altitude, bandwidth, and power allocation, as well as time-varying channels on the UAV energy consumption

  • We consider that N = 3 ground users are randomly distributed in the disaster area of 1 km × 1 km, whose center coordinate is ð0, 0, 0Þ

  • It can be interpreted that user 3 has the smallest QoS exponent θ3, and as P increases, the greater the power allocated to user 3, the more the effective capacity increases, so the maximum energy efficiency is obtained

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Summary

Introduction

We jointly consider the influence of the UAV altitude, bandwidth, and power allocation, as well as time-varying channels on the UAV energy consumption For this reason, we propose to maximize the energy efficiency of the UAV by jointly optimizing the UAV altitude, downlink transmit power, and bandwidth allocation while meeting a statistical delay QoS requirement for each user. We formulate an optimization problem to maximize the energy efficiency of the UAV by jointly optimizing the UAV altitude, downlink transmit power, and bandwidth allocation while meeting a statistical delay QoS requirement for each user (ii) Because the formulated problem is a nonlinear nonconvex optimization problem of fractional programming, it is very difficult to find its optimal solution directly.

The Theory of Effective Capacity
System Model and Problem Formulation
Proposed Algorithm
Numerical Results
Conclusion
Full Text
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