Title :
Fuzzy Q learning based UAV autopilot
Author_Institution :
Netaji Subhas Inst. of Technol., New Delhi, India
Abstract :
Navigation and control of an unmanned aerial vehicle (UAV) is a challenging problem and could be framed as a Reinforcement Learning (RL) task. Herein, we propose to use reinforcement learning for designing a UAV autopilot based on the Fuzzy Q Learning (FQL) approach. Proposed control scheme envisages an amalgamation of proportional (P) control that stabilizes the UAV and an action triggering Fuzzy Inference system (FIS) control that learns the correct control action to achieve the desired flight trajectory for a UAV flight. We test the proposed RL based UAV control for three cases: (i) Altitude control (ii) Trajectory Tracking, and (iii) Reconnaissance flight of a UAV. Results demonstrate the viability and effectiveness of a UAV autopilot designed using FQL.
Keywords :
aerospace control; autonomous aerial vehicles; fuzzy control; fuzzy reasoning; learning (artificial intelligence); trajectory control; UAV autopilot; UAV reconnaissance flight; flight trajectory; fuzzy Q learning approach; fuzzy inference system control; proportional control amalgamation; reinforcement learning task; trajectory tracking; unmanned aerial vehicle; Computational intelligence; Fuzzy logic; Learning (artificial intelligence); Navigation; Reconnaissance; Trajectory; Vectors; FQL; Reinforcement Learning; UAV;
Conference_Titel :
Computational Intelligence on Power, Energy and Controls with their impact on Humanity (CIPECH), 2014 Innovative Applications of
Conference_Location :
Ghaziabad
DOI :
10.1109/CIPECH.2014.7019067