2022
DOI: 10.48550/arxiv.2201.11647
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Data-Driven Time Propagation of Quantum Systems with Neural Networks

James Nelson,
Luuk Coopmans,
Graham Kells
et al.

Abstract: We investigate the potential of supervised machine learning to propagate a quantum system in time. While Markovian dynamics can be learned easily, given a sufficient amount of data, non-Markovian systems are non-trivial and their description requires the memory knowledge of past states. Here we analyse the feature of such memory by taking a simple 1D Heisenberg model as manybody Hamiltonian, and construct a non-Markovian description by representing the system over the single-particle reduced density matrix. Th… Show more

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