Abstract

Unmanned Aerial Vehicles (UAVs) play an essential role in information collection where routing and time scheduling are two critical factors and are considered sequently. Given the paths of UAVs, metaheuristic algorithms are explored to allocate searching time of UAVs, which are hard to guarantee the optimal solution for time allocation. In this paper, a novel searchinG timE allocatioN undEr coopeRative pAth pLaning (GENERAL) is proposed to solve the optimal solution of the time allocation given paths of UAVs. GENERAL adopts a semi-greedy construction and a repair procedure to initialize and amend the routing solutions during iterations. Motivated by the Newton’s method from convex optimization domains, we introduce a new Perturbed Parametric Nonlinear Complementarity Problem function (PPNCP-function), which reformulates the time allocation problem as a smoothing system of equations according to Karush-Kuhn-Tucker (KKT) theorem. Then a smoothing Newton method is introduced to obtain the optimal time allocation solution with superlinear convergence. Experimental results empirically indicate the GENERAL’s effectiveness compared to Ant Colony Optimization with Simulated Annealing (ACO-SA) and Genetic Algorithm (GA). Besides, some numerical results indicate that the smoothing Newton method with PPNCP function is promising. The emerging aspects of this paper include: 1) it integrates the path planning with time allocation problem for maximizing the information collection reward; 2) a new PPNCP-function and a smoothing Newton method have been proposed to solve the optimal time allocation under path planning of UAVs; 3) the theoretical convergence analysis of the smoothing Newton method has been provided in this paper.

Highlights

  • U NMANNED aerial vehicle (UAV) can provide a quickly deployable infrastructure for collecting information in some dull, dirty, or dangerous situations [1], such as disaster reliefs [2] and forest fire detections [3]

  • The information collection of UAVs is usually regarded as the integration of combinatorial optimization and nonlinear programming, where routing and time allocation decisions are the critical decisions, the optimization of which can significantly improve the efficiency of UAVs

  • Experiments based on randomly generated instances are carried out to explore the performance of GENERAL algorithm, comparing with Ant Colony Optimization (ACO)-Simulated Annealing (SA) and Genetic Algorithm (GA)

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Summary

Introduction

U NMANNED aerial vehicle (UAV) can provide a quickly deployable infrastructure for collecting information in some dull, dirty, or dangerous situations [1], such as disaster reliefs [2] and forest fire detections [3]. Multiple UAVs are often sent out to search for and collect information since multiple. Following the outbreak of the COVID-19, researchers are attempting to deploy UAVs equipped with infrared cameras to collect the large-scale temperature measurements information [5]. The information collection of UAVs is usually regarded as the integration of combinatorial optimization and nonlinear programming, where routing and time allocation decisions are the critical decisions, the optimization of which can significantly improve the efficiency of UAVs. Traditional methods for UAVs scheduling follow the paradigm that develops a two-stage solution to consider paths and time sequentially

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