Variational quantum algorithm for Gaussian discrete solitons and their boson sampling
Academic Article
Publication Date:
2022
abstract:
In the context of quantum information, highly nonlinear regimes, such as those supporting solitons, are marginally investigated. We miss general methods for quantum solitons, although they can act as entanglement generators or as self-organized quantum processors. We develop a computational approach that uses a neural network as a variational ansatz for quantum solitons in an array of waveguides. By training the resulting phase space quantum machine-slearning model, we find different soliton solutions, varying the number of particles and interaction strength. We consider Gaussian states that enable measuring the degree of entanglement and sampling the probability distribution of many-particle events. We also determine the probability of generating particle pairs and unveil that soliton bound states emit correlated pairs. These results may have a role in boson sampling with nonlinear systems and in quantum processors for entangled nonlinear waves.
Iris type:
01.01 Articolo in rivista
Keywords:
Phase space methods; Probability distributions; Quantum entanglement; Quantum optics; Solitons
List of contributors:
Conti, Claudio
Published in: