Weighing unequal parameter importance and measurement expense in adaptive quantum sensing.

IF 2.7 3区 物理与天体物理 Q2 PHYSICS, APPLIED
M Kelley, R D McMichael
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引用次数: 0

Abstract

A large class of experiments consists of measuring the parameters of physical models. In these experiments, the goal is to learn about these parameters as accurately and, often, quickly as possible. Adaptive experiment design works by yielding instrument control to Bayesian-based algorithms that alter instrument settings based on potential information gain about the parameters. By actively learning from data in real-time where to measure instead of determining instrument settings a priori, striking improvements in experiment efficiency are possible. Here, two new algorithms that improve upon previous implementations of adaptive experiment design are introduced. The first algorithm focuses on learning the model parameters that matter the most. The second algorithm considers the expense of a measurement and prioritizes information that can be gained at a lower cost. We demonstrate the remarkable improvement in efficiency and sensitivity that these algorithms provide for quantum sensing, specifically magnetometry, with nitrogen-vacancy centers in diamond. Most notably, we find an almost five-fold improvement in magnetic field sensitivity.

自适应量子传感中不等参数重要性和测量费用的权衡。
有一大类实验是测量物理模型的参数。在这些实验中,目标是尽可能准确、经常、快速地了解这些参数。自适应实验设计的工作原理是将仪器控制交给基于贝叶斯的算法,该算法根据参数的潜在信息增益来改变仪器设置。通过主动实时地从数据中学习测量的位置,而不是先验地确定仪器设置,可以显著提高实验效率。本文介绍了两种改进自适应实验设计的新算法。第一种算法侧重于学习最重要的模型参数。第二种算法考虑测量的费用,并优先考虑可以以较低成本获得的信息。我们展示了这些算法在效率和灵敏度上的显著改进,这些算法为量子传感提供了效率和灵敏度,特别是磁强计,在金刚石中有氮空位中心。最值得注意的是,我们发现磁场灵敏度提高了近五倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Applied Physics
Journal of Applied Physics 物理-物理:应用
CiteScore
5.40
自引率
9.40%
发文量
1534
审稿时长
2.3 months
期刊介绍: The Journal of Applied Physics (JAP) is an influential international journal publishing significant new experimental and theoretical results of applied physics research. Topics covered in JAP are diverse and reflect the most current applied physics research, including: Dielectrics, ferroelectrics, and multiferroics- Electrical discharges, plasmas, and plasma-surface interactions- Emerging, interdisciplinary, and other fields of applied physics- Magnetism, spintronics, and superconductivity- Organic-Inorganic systems, including organic electronics- Photonics, plasmonics, photovoltaics, lasers, optical materials, and phenomena- Physics of devices and sensors- Physics of materials, including electrical, thermal, mechanical and other properties- Physics of matter under extreme conditions- Physics of nanoscale and low-dimensional systems, including atomic and quantum phenomena- Physics of semiconductors- Soft matter, fluids, and biophysics- Thin films, interfaces, and surfaces
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