Publication | Open Access
Solving quantum master equations with deep quantum neural networks
17
Citations
72
References
2022
Year
Quantum ScienceEngineeringQuantum ComputingPhysicsQuantum Master EquationsNatural SciencesQuantum Machine LearningQuantum Optimization AlgorithmQuantum DerivativesStationary StatesQuantum AlgorithmQuantum DevicesQuantum EntanglementQuantum Networks
Deep quantum neural networks may provide a promising way to achieve a quantum learning advantage with noisy intermediate-scale quantum devices. Here, we use deep quantum feed-forward neural networks capable of universal quantum computation to represent the mixed states for open quantum many-body systems and introduce a variational method with quantum derivatives to solve the master equation for dynamics and stationary states. Owning to the special structure of the quantum networks, this approach enjoys a number of notable features, including an efficient quantum analog of the back-propagation algorithm, resource-saving reuse of hidden qubits, general applicability independent of dimensionality and entanglement properties, as well as the convenient implementation of symmetries. As proof-of-principle demonstrations, we apply this approach to both one-dimensional transverse field Ising and two-dimensional ${J}_{1}\text{\ensuremath{-}}{J}_{2}$ models with dissipation, and show that it can efficiently capture their dynamics and stationary states with a desired accuracy.
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