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Robust Satisfaction of Temporal Logic Specifications via Reinforcement Learning

Austin Jones, Derya Aksaray, Zhaodan Kong, Mac Schwager, Călin Belta

Year
2015
Citations
14
Access
Open access

Abstract

We consider the problem of steering a system with unknown, stochastic dynamics to satisfy a rich, temporally layered task given as a signal temporal logic formula. We represent the system as a Markov decision process in which the states are built from a partition of the state space and the transition probabilities are unknown. We present provably convergent reinforcement learning algorithms to maximize the probability of satisfying a given formula and to maximize the average expected robustness, i.e., a measure of how strongly the formula is satisfied. We demonstrate via a pair of robot navigation simulation case studies that reinforcement learning with robustness maximization performs better than probability maximization in terms of both probability of satisfaction and expected robustness.

Keywords

Reinforcement learningComputer scienceTemporal logicReinforcementArtificial intelligencePsychologyProgramming languageSocial psychology

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