Title :
Path Planning for UAVs for Maximum Information Collection
Author :
Ergezer, H. ; Leblebicioglu, Kemal
Author_Institution :
MIKES Inc., Akyurt/Ankara, Turkey
Abstract :
Path planning considers the problem of designing the path a vehicle is supposed to follow. Along the designed path the objectives are to maximize the collected information (CI) from desired regions (DR), while avoiding flying over forbidden regions (FR) and reaching the destination. The path planning problem for a single unmanned air vehicle (UAV) is studied with the proposal of novel evolutionary operators: pull-to-desired-region (PTDR), push-from-forbidden-region (PFFR), and pull-to-final-point (PTFP). In addition to these newly proposed operators, standard mutation and crossover operators are used. The initial population seed-path is obtained by both utilizing the pattern search method and solving the traveling salesman problem (TSP). Using this seed-path the initial population of paths is generated by randomly selected heading angles. It should be emphasized that all of the paths in population in any generation of the genetic algorithm (GA) are constructed using the dynamical mathematical model of a UAV equipped with the autopilot and guidance algorithms. Simulations are realized in the MATLAB/Simulink environment. The path planning algorithm is tested with different scenarios, and the results are presented in Section VI. Although there are previous studies in this field, the focus here is on maximizing the CI instead of minimizing the total mission time. In addition it is observed that the proposed operators generate better paths than classical evolutionary operators.
Keywords :
autonomous aerial vehicles; genetic algorithms; mathematical operators; path planning; random processes; search problems; travelling salesman problems; CI maximization; MATLAB/Simulink environment; PFFR; PTDR; PTFP; TSP; UAV; autopilot; collected information; crossover operators; desired regions; dynamical mathematical model; evolutionary operators; forbidden regions; genetic algorithm; guidance algorithm; initial path population; initial population seed-path; maximum information collection; path planning algorithm; pattern search method; pull-to-desired region; pull-to-final point; push-from-forbidden region; randomly selected heading angles; seed-path; single unmanned air vehicle; standard mutation operators; total mission time minimization; traveling salesman problem; vehicle path planning; Aircraft; Cameras; Image resolution; Linear programming; Mathematical model; Path planning; Unmanned aerial vehicles;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2013.6404117