4.2 Article

Solving quantum master equations with deep quantum neural networks

期刊

PHYSICAL REVIEW RESEARCH
卷 4, 期 1, 页码 -

出版社

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevResearch.4.013097

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资金

  1. National Natural Science Foundation of China [12075128]
  2. Tsinghua University
  3. Ministry of Education of China
  4. Shanghai Qi Zhi Institute

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Deep quantum neural networks provide a promising way to achieve a quantum learning advantage with noisy intermediate-scale quantum devices. This approach uses deep quantum feed-forward neural networks to represent the mixed states of open quantum many-body systems, and introduces a variational method with quantum derivatives to solve the dynamics and stationary states. The special structure of the quantum networks allows for efficient quantum analog of back-propagation algorithm, resource-saving reuse of hidden qubits, general applicability, and convenient implementation of symmetries.
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) -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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