Publication | Closed Access
Reachability-based safe learning with Gaussian processes
260
Citations
12
References
2014
Year
Unknown Venue
Artificial IntelligenceRobotic SystemsEngineeringMachine LearningReachability ProblemField RoboticsIntelligent SystemsLearning ControlTrajectory PlanningUncertainty QuantificationSystems EngineeringRobot LearningGaussian ProcessesProbability TheoryComputer ScienceRobotic ApplicationsConservative Safety ConstraintsReachability AnalysisRobot ControlConstraint SatisfactionGaussian ProcessAutomationRoboticsTrajectory Optimization
Reinforcement learning for robotic applications faces the challenge of constraint satisfaction, which currently impedes its application to safety critical systems. Recent approaches successfully introduce safety based on reachability analysis, determining a safe region of the state space where the system can operate. However, overly constraining the freedom of the system can negatively affect performance, while attempting to learn less conservative safety constraints might fail to preserve safety if the learned constraints are inaccurate. We propose a novel method that uses a principled approach to learn the system's unknown dynamics based on a Gaussian process model and iteratively approximates the maximal safe set. A modified control strategy based on real-time model validation preserves safety under weaker conditions than current approaches. Our framework further incorporates safety into the reinforcement learning performance metric, allowing a better integration of safety and learning. We demonstrate our algorithm on simulations of a cart-pole system and on an experimental quadrotor application and show how our proposed scheme succeeds in preserving safety where current approaches fail to avoid an unsafe condition.
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