Machine learning the Biot-Savart law from quantum sensor data
ORAL
Abstract
We use a supervised neural network to reconstruct current distributions from magnetic field maps provided by a quantum diamond microscope (QDM). The neural network employs a U-Net architecture. We train the network with more than 104 simulated and real training data sets consisting of QDM magnetic images of 2D patterns of current-carrying wires. We find that the trained network can reproduce with high fidelity a heretofore unseen current distribution from the associated QDM magnetic image, thereby learning the Biot-Savart law. We anticipate that this Q4ML technology (quantum data for machine learning) will have wide-ranging applications, including the study of hydrodynamic electron flow in graphene, activity within integrated circuits, and electrical activity in biological systems.
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Presenters
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Mark Ku
Physics and Astronomy & Materials Science and Engineering, University of Delaware, University of Delaware
Authors
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Mark Ku
Physics and Astronomy & Materials Science and Engineering, University of Delaware, University of Delaware
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Matthew J Turner
Quantum Technology Center, University of Maryland, University of Maryland, College Park
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Danyal Bhutto
Biomedical Engineering, Boston University
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Bo Zhu
Athinoula A. Martinos Center for Biomedical Imaging, Harvard Medical School and Massachusetts General Hospital
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Matthew Rosen
Athinoula A. Martinos Center for Biomedical Imaging, Harvard Medical School and Massachusetts General Hospital
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Ronald L Walsworth
Quantum Technology Center, University of Maryland, University of Maryland, College Park