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arxiv: 2202.01358 · v4 · pith:4U5HVB4Q · submitted 2022-02-03 · eess.SY · cs.SY

Safe Learning for Uncertainty-Aware Planning via Interval MDP Abstraction

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classification eess.SY cs.SY
keywords imdpboundsdynamicshigh-confidenceintervalpathsplanningprocess
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We study the problem of refining satisfiability bounds for partially-known stochastic systems against planning specifications defined using syntactically co-safe Linear Temporal Logic (scLTL). We propose an abstraction-based approach that iteratively generates high-confidence Interval Markov Decision Process (IMDP) abstractions of the system from high-confidence bounds on the unknown component of the dynamics obtained via Gaussian process regression. In particular, we develop a synthesis strategy to sample the unknown dynamics by finding paths which avoid specification-violating states using a product IMDP. We further provide a heuristic to choose among various candidate paths to maximize the information gain. Finally, we propose an iterative algorithm to synthesize a satisfying control policy for the product IMDP system. We demonstrate our work with a case study on mobile robot navigation.

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