Publication | Closed Access
Physics-Informed Neural Networks for Quantum Control
41
Citations
70
References
2024
Year
Quantum ScienceEngineeringQuantum ComputingPhysicsQuantum SystemsNatural SciencesQuantum Machine LearningQuantum Optimization AlgorithmApplied PhysicsQuantum AlgorithmQuantum InformationQuantum ControlQuantum FeedbackQuantum PhysicsQuantum EntanglementOptimization ProcessesQuantum AlgorithmsPhysics-informed Neural Networks
Quantum control is a ubiquitous research field that has enabled physicists to delve into the dynamics and features of quantum systems, delivering powerful applications for various atomic, optical, mechanical, and solid-state systems. In recent years, traditional control techniques based on optimization processes have been translated into efficient artificial intelligence algorithms. Here, we introduce a computational method for optimal quantum control problems via physics-informed neural networks (PINNs). We apply our methodology to open quantum systems by efficiently solving the state-to-state transfer problem with high probabilities, short-time evolution, and using low-energy consumption controls. Furthermore, we illustrate the flexibility of PINNs to solve the same problem under changes in physical parameters and initial conditions, showing advantages in comparison with standard control techniques.
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