EcoFlight: Finding Low-Energy Paths Through Obstacles for Autonomous Sensing Drones

Leyva, Jordan, Vera, Nahim J. Moran, Xu, Yihan, Durasno, Adrien, Romero, Christopher U., Chimuka, Tendai, Ramirez, Gabriel O. Huezo, Dong, Ziqian, Rojas-Cessa, Roberto

arXiv.org Artificial Intelligence 

Obstacle avoidance path planning for uncrewed aerial vehicles (UAVs), or drones, is rarely addressed in most flight path planning schemes, despite obstacles being a realistic condition. Obstacle avoidance can also be energy-intensive, making it a critical factor in efficient point-to-point drone flights. To address these gaps, we propose EcoFlight, an energy-efficient pathfinding algorithm that determines the lowest-energy route in 3D space with obstacles. The algorithm models energy consumption based on the drone propulsion system and flight dynamics. We conduct extensive evaluations, comparing EcoFlight with direct-flight and shortest-distance schemes. The simulation results across various obstacle densities show that EcoFlight consistently finds paths with lower energy consumption than comparable algorithms, particularly in high-density environments. We also demonstrate that a suitable flying speed can further enhance energy savings.

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