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Reinforcement Learning of Control Policy for Linear Temporal Logic Specifications Using Limit-Deterministic Generalized Büchi Automata

Ryohei Oura, Ami Sakakibara, Toshimitsu Ushio

2020IEEE Control Systems Letters28 citationsDOIOpen Access PDF

Abstract

This letter proposes a novel reinforcement learning method for the synthesis of a control policy satisfying a control specification described by a linear temporal logic formula. We assume that the controlled system is modeled by a Markov decision process (MDP). We convert the specification to a limit-deterministic generalized Büchi automaton (LDGBA) with several accepting sets that accepts all infinite sequences satisfying the formula. The LDGBA is augmented so that it explicitly records the previous visits to accepting sets. We take a product of the augmented LDGBA and the MDP, based on which we define a reward function. The agent gets rewards whenever state transitions are in an accepting set that has not been visited for a certain number of steps. Consequently, sparsity of rewards is relaxed and optimal circulations among the accepting sets are learned. We show that the proposed method can learn an optimal policy when the discount factor is sufficiently close to one.

Topics & Concepts

Reinforcement learningMarkov decision processLimit (mathematics)Büchi automatonAutomatonLinear temporal logicComputer scienceState (computer science)Set (abstract data type)Function (biology)Markov processProduct (mathematics)Control (management)Mathematical optimizationTemporal logicBellman equationMathematicsTheoretical computer scienceArtificial intelligenceAlgorithmProgramming languageDeterministic automatonStatisticsMathematical analysisBiologyGeometryEvolutionary biologyFormal Methods in VerificationMachine Learning and AlgorithmsReinforcement Learning in Robotics