Changwen Liang, Shaojun Gao, Jixun Liu, Guochao Wang, Shuhua Yan, Jun Yang, Lingxiao Zhu, Xiaoxiao Ma
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引用次数: 0
摘要
偏振梯度冷却(PGC)在许多冷原子应用中发挥着重要作用,包括玻色-爱因斯坦凝聚体(BEC)的形成和单原子冷却。传统的 PGC 参数优化通常依赖于主观的专业知识,在精细操作方面面临挑战,并且优化效率较低。在这里,我们提出了一种有别于传统 PGC 过程的分段控制方法,将实验参数从 3 个扩展到 30 个。随后,传统的定时优化问题被重新表述为马尔可夫决策过程(MDP),并使用强化学习模型对实验参数进行优化。通过适当的超参数设置,学习过程表现出良好的收敛性和强大的参数探索能力。最后,我们在 ∼18.8 分钟内捕获了 ∼4.3 × 108 个冷原子,相空间密度为 ∼7.1 × 10-4,温度为 ∼3.7 µK。我们的工作为智能制备退化量子气体铺平了道路。
Multi-parameter optimization of polarization gradient cooling for 87Rb atoms based on reinforcement learning.
Polarization gradient cooling (PGC) plays an important role in many cold atom applications including the formation of Bose-Einstein condensates (BECs) and cooling of single atoms. Traditional parameter optimization of PGC usually relies on subjective expertise, faces challenges in fine manipulation, and exhibits low optimization efficiency. Here, we propose a segmented control method that differs from the traditional PGC process by expanding the experiment parameters from 3 to 30. Subsequently, the conventional timing optimization problem is reformulated as a Markov decision process (MDP), and the experiment parameters are optimized using a reinforcement learning model. With proper settings of hyperparameters, the learning process exhibits good convergence and powerful parameter exploration capabilities. Finally, we capture ∼4.3 × 108 cold atoms, with a phase space density of ∼7.1 × 10-4 at a temperature of ∼3.7 µK in ∼18.8 min. Our work paves the way for the intelligent preparation of degenerate quantum gas.
期刊介绍:
Optics Express is the all-electronic, open access journal for optics providing rapid publication for peer-reviewed articles that emphasize scientific and technology innovations in all aspects of optics and photonics.