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Abstract The optimal control of open quantum systems is a challenging task but has a key role in improving existing quantum information processing technologies. We introduce a general framework based on reinforcement learning to discover optimal thermodynamic cycles that maximize the power of out-of-equilibrium quantum heat engines and refrigerators. We apply our method, based on the soft actor-critic algorithm, to three systems: a benchmark two-level system heat engine, where we find the optimal known cycle; an experimentally realistic refrigerator based on a superconducting qubit that generates coherence, where we find a non-intuitive control sequence that outperforms previous cycles proposed in literature; a heat engine based on a quantum harmonic oscillator, where we find a cycle with an elaborate structure that outperforms the optimized Otto cycle. We then evaluate the corresponding efficiency at maximum power.
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Paolo Andrea Erdman
Scuola Normale Superiore
Frank Noé
Microsoft (United States)
npj Quantum Information
Rice University
Freie Universität Berlin
Microsoft Research (United Kingdom)
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Erdman et al. (Mon,) studied this question.
synapsesocial.com/papers/6a200c077110a651dc04ea16 — DOI: https://doi.org/10.1038/s41534-021-00512-0