D. Palossi, M. Furci, R. Naldi, A. Marongiu, L. Marconi, L. Benini
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An energy-efficient parallel algorithm for real-time near-optimal UAV path planning
We propose a shortest trajectory planning algorithm implementation for Unmanned Aerial Vehicles (UAVs) on an embedded GPU. Our goal is the development of a fast, energy-efficient global planner for multi-rotor UAVs supporting human operator during rescue missions. The work is based on OpenCL parallel non-deterministic version of the Dijkstra algorithm to solve the Single Source Shortest Path (SSSP). Our planner is suitable for real-time path re-computation in dynamically varying environments of up to 200 m2. Results demonstrate the efficacy of the approach, showing speedups of up to 74x, saving up to ~ 98% of energy versus the sequential benchmark, while reaching near-optimal path selection, keeping the average path cost error smaller than 1.2%.