A quantum system control method based on enhanced reinforcement learning (2310.03036v1)
Abstract: Traditional quantum system control methods often face different constraints, and are easy to cause both leakage and stochastic control errors under the condition of limited resources. Reinforcement learning has been proved as an efficient way to complete the quantum system control task. To learn a satisfactory control strategy under the condition of limited resources, a quantum system control method based on enhanced reinforcement learning (QSC-ERL) is proposed. The states and actions in reinforcement learning are mapped to quantum states and control operations in quantum systems. By using new enhanced neural networks, reinforcement learning can quickly achieve the maximization of long-term cumulative rewards, and a quantum state can be evolved accurately from an initial state to a target state. According to the number of candidate unitary operations, the three-switch control is used for simulation experiments. Compared with other methods, the QSC-ERL achieves close to 1 fidelity learning control of quantum systems, and takes fewer episodes to quantum state evolution under the condition of limited resources.
- An Z, Zhou D (2019) Deep reinforcement learning for quantum gate control. EPL (Europhysics Letters) 126(6):60002
- Bukov M (2018) Reinforcement learning for autonomous preparation of floquet-engineered states: Inverting the quantum kapitza oscillator. Physical Review B 98(22):224305
- Chakrabarti R, Rabitz H (2007) Quantum control landscapes. International Reviews in Physical Chemistry 26(4):671–735
- D’Alessandro D, Dahleh M (2001) Optimal control of two-level quantum systems. IEEE Transactions on Automatic Control 46(6):866–876
- Roslund J, Rabitz H (2009) Gradient algorithm applied to laboratory quantum control. Physical Review A 79(5):053417
- Singh SP, Sutton RS (1996) Reinforcement learning with replacing eligibility traces. Machine learning 22(1):123–158
- Sutton RS, Barto AG (2018) Reinforcement learning: An introduction. MIT press
- Tsubouchi M, Momose T (2008) Rovibrational wavepacket manipulation using shaped midinfrared femtosecond pulses toward quantum computation: Optimization of pulse shape by a genetic algorithm. Physical Review A 77(5):052326
- Watkins CJ, Dayan P (1992) Q-learning. Machine learning 8(3-4):279–292
- Zhang Y, Wang Z (2020) Hybrid malware detection approach with feedback-directed machine learning. Information Sciences 63(139103):1–139103