2022
DOI: 10.48550/arxiv.2210.01162
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Learning Minimally-Violating Continuous Control for Infeasible Linear Temporal Logic Specifications

Abstract: This paper explores continuous-time control synthesis for target-driven navigation to satisfy complex highlevel tasks expressed as linear temporal logic (LTL). We propose a model-free framework using deep reinforcement learning (DRL) where the underlying dynamic system is unknown (an opaque box). Unlike prior work, this paper considers scenarios where the given LTL specification might be infeasible and therefore cannot be accomplished globally. Instead of modifying the given LTL formula, we provide a general D… Show more

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