Optimizing atom transfer in a double magneto-optical trap system with machine learning
POSTER
Abstract
A push beam is a common tool for transferring atoms from a vapor chamber magneto-optical trap (MOT) to an ultra-high vacuum MOT (UHV-MOT) in ultracold atomic experiments. Many of these experiments leave the push beam on continuously during UHV-MOT loading, but there is documented evidence that, for a narrow set of parameters, pulsing the push beam during loading results in increased atom capture at the UHV-MOT. Additionally, while the performance of continuous loading is explained by atomic two-level models, pulsing introduces time-dependent behavior which is non-trivial to account for when optimizing loading in the double-MOT system. For these reasons, we choose to improve the performance of our 39K double MOT with a machine learning (ML) algorithm which efficiently scans the full parameter space by using a combination of online optimization and offline modeling of the apparatus response. Future plans include further ML-optimization of cooling steps on the road to quantum degeneracy while optimizing for appropriate figures of merit (e.g. atom number, temperature).
Presenters
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Thomas M Bersano
Los Alamos National Laboratory
Authors
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Thomas M Bersano
Los Alamos National Laboratory
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Ceren Uzun
Los Alamos National Laboratory
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Michael McKerns
Los Alamos National Laboratory
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Michael J Martin
Los Alamos National Laboratory
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Malcolm G Boshier
Los Alamos Natl Lab, Los Alamos National Laboratory