In this paper we present a method to obtain a near optimal neuro-controller for the autonomous helicopter flight by means
of an ad hoc evolutionary reinforcement learning method. The method presented here was developed for the Second Annual Reinforcement
Learning Competition (RL2008) held in Helsinki-Finland. The present work uses a Helicopter Hovering simulator created in the
Stanford University that simulates a Radio Control XCell Tempest helicopter in the flight regime close to hover. The objective
of the controller is to hover the helicopter by manipulating four continuous control actions based on a 12-dimensional state
space.
Keywords Reinforcement Learning - Evolutionary Computation - Autonomous Helicopter
This work has been partially funded by the Spanish Ministry of Science and Technology, project DPI2006-15346-C03-02.