Abstract

Unmanned aerial vehicles (UAVs) can provide remote data collection services with quality of service guarantees. The typical application fields include geographic information systems, such as topological survey and natural disasters and hazards monitoring. In the bad geographic environment, wireless communication performance of UAVs cannot be guaranteed. Therefore, the efficiency of remote data collection cannot be guaranteed. This paper proposes a collaborative framework of UAVs and fog computing for remote data collection. Our goal is to maximize the revenue of UAVs with the support of fog computing, so we need to find the optimal computation resources allocation and task assignment scheme. This is a mixed integer nonlinear programming problem. The block coordinate descent method is used to solve this problem, which allows the original problem to be divided into the optimal task assignment sub-problem and the optimal computation resource allocation sub-problem. The greedy algorithm, heuristic algorithm and brute force algorithm are proposed to solve the optimal task assignment sub-problem. The convex optimization analysis method is used to solve the optimal resource allocation sub-problem. The genetic algorithm is used as a benchmark to compare with the heuristic-based block coordinate descent algorithm. The numerical simulation and network simulator based-simulation results show that the proposed UAV-Fog collaborative data collection problem can be efficiently solved by the block coordinate descent algorithm based on the heuristic strategy.

Highlights

  • According to the results of the numerical simulation and the network simulator based simulation, based on the proposed Unmanned aerial vehicles (UAVs)-fog collaborative remote data collection framework (UFDC) and the corresponding optimization model, the corresponding optimization algorithm can effectively improve the revenue of UAV-enabled remote data collection

  • In the simulation based on the ONE simulator, the heuristic-based block coordinate descent algorithm outperforms the genetic algorithm

  • Different from the previous research work, this paper does not assume that the UAV has enough computing power, but rather it assumes that the UAV needs to send the collected data to the ground base station for processing

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Summary

INTRODUCTION

A framework of remote data collection based on the cooperation of UAVs and fog computing is proposed, and a formal model is established to describe the problem of maximizing the revenue of UAV cluster under the constraints of time delay and resources. This is a mixed-integer nonlinear programming (MINLP) problem. In the scenario proposed in this paper, because the data collection point is located in a remote area, the broadband wireless network does not cover the area, after the UAV collects the data, it needs to fly back to the ground base station to transmit the data, which brings the flight time delay and costs.

COMPUTATION RESOURCE ALLOCATION
NUMERICAL SIMULATION
NETWORK SIMULATOR BASED SIMULATION
DISCUSSION AND CONCLUSION
Full Text
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