Learning Minimum-Energy Controls from Heterogeneous Data

18 Jun 2020Giacomo BaggioFabio Pasqualetti

In this paper we study the problem of learning minimum-energy controls for linear systems from heterogeneous data. Specifically, we consider datasets comprising input, initial and final state measurements collected using experiments with different time horizons and arbitrary initial conditions... (read more)

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