This paper utilizes a class of Mesh Adaptive Direct Search method to design an optimal path for Unmanned Aerial Vehicles (UAVs). To this end, a multi-objective optimization problem is considered for simultaneous optimization of some conflicting objective functions under different kinds of vehicle and mission constraints. Since the path planning for UAVs in a large geographical area is a typical large-scale optimization problem, to avoid memory and computational intensive issues, different techniques such as constructing an adaptive mesh, polling, and barrier approach are incorporated in the proposed algorithm. The proposed method is tested under different scenarios and various realistic terrain environments. The results show effectiveness of the proposed method in guiding UAVs to the final destination by providing near-optimal feasible paths quickly and effectively. The results will also be compared with the Genetic Algorithm approach, which has been recently used for path planning.
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