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Maximized atom number for a grating magneto-optical trap via machine-learning assisted parameter optimization

Sangwon Seo, Jae Hoon Lee, Sang-Bum Lee, Sang Eon Park, Meung Ho Seo, Jongcheol Park, Taeg Yong Kwon, Hyun-Gue Hong

2021Optics Express17 citationsDOIOpen Access PDF

Abstract

We present a parameter set for obtaining the maximum number of atoms in a grating magneto-optical trap (gMOT) by employing a machine learning algorithm. In the multi-dimensional parameter space, which imposes a challenge for global optimization, the atom number is efficiently modeled via Bayesian optimization with the evaluation of the trap performance given by a Monte-Carlo simulation. Modeling gMOTs for six representative atomic species - 7 Li, 23 Na, 87 Rb, 88 Sr, 133 Cs, 174 Yb - allows us to discover that the optimal grating reflectivity is consistently higher than a simple estimation based on balanced optical molasses. Our algorithm also yields the optimal diffraction angle which is independent of the beam waist. The validity of the optimal parameter set for the case of 87 Rb is experimentally verified using a set of grating chips with different reflectivities and diffraction angles.

Topics & Concepts

GratingBayesian optimizationOpticsTrap (plumbing)Magneto-optical trapMonte Carlo methodParameter spaceDiffraction gratingPhysicsAtom (system on chip)DiffractionAlgorithmComputational physicsComputer scienceMathematicsLaserArtificial intelligenceEmbedded systemMeteorologyStatisticsCold Atom Physics and Bose-Einstein CondensatesAdvanced Frequency and Time StandardsQuantum Information and Cryptography
Maximized atom number for a grating magneto-optical trap via machine-learning assisted parameter optimization | Litcius