LEARNING
Reinforcement learning and planning for preference balancing tasks
Aleksandra Faust
- Year
- 2015
- Citations
- 3
Abstract
Many robotic motion tasks, such as UAV control, have non-linear and high-dimensional dynamics. Difficult for both human demonstration and explicit solutions, these tasks can be described with opposing preferences. This thesis develops PEARL, a real-time solution for such tasks on acceleration-controlled systems with unknown dynamics, and finds PEARL's safety conditions.
Keywords
Reinforcement learningPreferenceAccelerationPearlComputer scienceDynamics (music)Motion (physics)Task (project management)Control (management)Artificial intelligence
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