Reinforcement Learning Optimization of the Charging of a Dicke Quantum Battery

被引:2
作者
Erdman, Paolo Andrea [1 ]
Andolina, Gian Marcello [2 ,3 ]
Giovannetti, Vittorio [4 ,5 ]
Noe, Frank [1 ,6 ,7 ,8 ]
机构
[1] Free Univ Berlin, Dept Math & Comp Sci, Arnimallee 6, D-14195 Berlin, Germany
[2] Barcelona Inst Sci & Technol, ICFO Inst Ciencies Foton, Av Carl Friedrich Gauss 3, Castelldefels 08860, Barcelona, Spain
[3] PSL Res Univ, Coll France, JEIP, UAR 3573,CNRS, F-75321 Paris, France
[4] Scuola Normale Super Pisa, NEST, I-56126 Pisa, Italy
[5] CNR, Ist Nanosci, I-56126 Pisa, Italy
[6] Microsoft Res AI4Sci, Karl Liebknecht Str 32, D-10178 Berlin, Germany
[7] Free Univ Berlin, Dept Phys, Arnimallee 6, D-14195 Berlin, Germany
[8] Rice Univ, Dept Chem, Houston, TX 77005 USA
基金
欧洲研究理事会;
关键词
DYNAMICS;
D O I
10.1103/PhysRevLett.133.243602
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Quantum batteries are energy-storing devices, governed by quantum mechanics, that promise high charging performance thanks to collective effects. Because of its experimental feasibility, the Dicke battery -which comprises N two-level systems coupled to a common photon mode-is one of the most promising designs for quantum batteries. However, the chaotic nature of the model severely hinders the extractable energy (ergotropy). Here, we use reinforcement learning to optimize the charging process of a Dicke battery either by modulating the coupling strength, or the system-cavity detuning. We find that the ergotropy and quantum mechanical energy fluctuations (charging precision) can be greatly improved with respect to standard charging strategies by countering the detrimental effect of quantum chaos. Notably, the collective speedup of the charging time can be preserved even when nearly fully charging the battery.
引用
收藏
页数:7
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