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Approaching the adiabatic timescale with machine learning

dc.contributor.authorHenson, Bryce
dc.contributor.authorShin, David
dc.contributor.authorThomas, Kieran F.
dc.contributor.authorRoss, Jacob
dc.contributor.authorHush, Michael R.
dc.contributor.authorHodgman, Sean
dc.contributor.authorTruscott, Andrew
dc.date.accessioned2020-07-09T04:17:58Z
dc.date.issued2018-12-07
dc.date.updated2020-07-06T08:20:44Z
dc.description.abstractThe control and manipulation of quantum systems without excitation are challenging, due to the complexities in fully modeling such systems accurately and the difficulties in controlling these inherently fragile systems experimentally. For example, while protocols to decompress Bose–Einstein condensates (BECs) faster than the adiabatic timescale (without excitation or loss) have been well developed theoretically, experimental implementations of these protocols have yet to reach speeds faster than the adiabatic timescale. In this work, we experimentally demonstrate an alternative approach based on a machine-learning algorithm which makes progress toward this goal. The algorithm is given control of the coupled decompression and transport of a metastable helium condensate, with its performance determined after each experimental iteration by measuring the excitations of the resultant BEC. After each iteration the algorithm adjusts its internal model of the system to create an improved control output for the next iteration. Given sufficient control over the decompression, the algorithm converges to a solution that sets the current speed record in relation to the adiabatic timescale, beating out other experimental realizations based on theoretical approaches. This method presents a feasible approach for implementing fast-state preparations or transformations in other quantum systems, without requiring a solution to a theoretical model of the system. Implications for fundamental physics and cooling are discussed.en_AU
dc.description.sponsorshipWe thank Marcus Doherty for careful reading of the manuscript. This work was supported through Australian Research Council (ARC) Discovery Project Grant DP160102337. S.S.H. is supported by ARC Discovery Early Career Researcher Award DE150100315. D.K.S. is supported by an Australian Government Research Training Program Scholarship.en_AU
dc.format.mimetypeapplication/pdfen_AU
dc.identifier.issn0027-8424en_AU
dc.identifier.urihttp://hdl.handle.net/1885/205973
dc.language.isoen_AUen_AU
dc.provenancehttp://v2.sherpa.ac.uk/id/publication/10338..."Author Accepted Manuscript can be made open access on non-commercial institutional repository after 6 month embargo" from SHERPA/RoMEO site (as at 10/7/20).
dc.publisherNational Academy of Sciences (USA)en_AU
dc.relationhttp://purl.org/au-research/grants/arc/DP160102337en_AU
dc.relationhttp://purl.org/au-research/grants/arc/DE150100315en_AU
dc.rights© 2018 The Author(s)en_AU
dc.sourcePNAS - Proceedings of the National Academy of Sciences of the United States of Americaen_AU
dc.subjectmachine learningen_AU
dc.subjectshortcuts to adiabaticityen_AU
dc.subjectoptimal quantum controlen_AU
dc.subjectBose–Einstein condensatesen_AU
dc.subjectquantum transporten_AU
dc.titleApproaching the adiabatic timescale with machine learningen_AU
dc.typeJournal articleen_AU
dcterms.accessRightsOpen Access
dcterms.dateAccepted2018-11-06
local.bibliographicCitation.issue52en_AU
local.bibliographicCitation.lastpage13221en_AU
local.bibliographicCitation.startpage13216en_AU
local.contributor.affiliationHenson, Bryce, College of Science, ANUen_AU
local.contributor.affiliationShin, David, College of Science, ANUen_AU
local.contributor.affiliationThomas, Kieran F., University of Queenslanden_AU
local.contributor.affiliationRoss, Jacob, College of Science, ANUen_AU
local.contributor.affiliationHush, Michael R., UNSW- ADFAen_AU
local.contributor.affiliationHodgman, Sean, College of Science, ANUen_AU
local.contributor.affiliationTruscott, Andrew, College of Science, ANUen_AU
local.contributor.authoruidHenson, Bryce, u5488352en_AU
local.contributor.authoruidShin, David, u5708831en_AU
local.contributor.authoruidRoss, Jacob, u5646157en_AU
local.contributor.authoruidHodgman, Sean, u4114272en_AU
local.contributor.authoruidTruscott, Andrew, u4040705en_AU
local.description.notesImported from ARIESen_AU
local.identifier.absfor080602 - Computer-Human Interactionen_AU
local.identifier.absseo970109 - Expanding Knowledge in Engineeringen_AU
local.identifier.ariespublicationu3102795xPUB173en_AU
local.identifier.citationvolume115en_AU
local.identifier.doi10.1073/pnas.1811501115en_AU
local.identifier.scopusID2-s2.0-85059208021
local.publisher.urlhttps://www.pnas.org/en_AU
local.type.statusAccepted Versionen_AU

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