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Counter-example guided Imitation Learning of Feedback Controllers from Temporal Logic Specifications
Published 25 Mar 2024 in cs.RO, cs.SY, and eess.SY | (2403.16593v1)
Abstract: We present a novel method for imitation learning for control requirements expressed using Signal Temporal Logic (STL). More concretely we focus on the problem of training a neural network to imitate a complex controller. The learning process is guided by efficient data aggregation based on counter-examples and a coverage measure. Moreover, we introduce a method to evaluate the performance of the learned controller via parameterization and parameter estimation of the STL requirements. We demonstrate our approach with a flying robot case study.
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