论文标题

融合在线高斯流程基于过程的学习和控制扫描量子点显微镜

Fusing Online Gaussian Process-Based Learning and Control for Scanning Quantum Dot Microscopy

论文作者

Pfefferkorn, Maik, Maiworm, Michael, Wagner, Christian, Tautz, F. Stefan, Findeisen, Rolf

论文摘要

阐明静电表面电位有助于更深入地了解物质及其物理化学特性,这是广泛应用领域的基础。扫描量子点显微镜是一种最近开发的技术,可以通过原子分辨率测量此类电位。但是,要在科学实践中进行有效的部署,必须加快扫描过程。为此,我们采用了两度自由控制范式,其中使用高斯工艺作为前馈部分。我们提出了适合扫描量子点显微镜的高斯过程的量身定制的在线学习方案,其中包括操作过程中的超参数优化,以便对任意表面结构进行快速,精确的扫描。对于实践中的潜在应用,随附的计算成本会降低评估不同的稀疏近似方法。完全独立的训练条件近似(用于减少的活跃训练数据集)被发现是最有前途的方法。

Elucidating electrostatic surface potentials contributes to a deeper understanding of the nature of matter and its physicochemical properties, which is the basis for a wide field of applications. Scanning quantum dot microscopy, a recently developed technique allows to measure such potentials with atomic resolution. For an efficient deployment in scientific practice, however, it is essential to speed up the scanning process. To this end we employ a two-degree-of-freedom control paradigm, in which a Gaussian process is used as the feedforward part. We present a tailored online learning scheme of the Gaussian process, adapted to scanning quantum dot microscopy, that includes hyperparameter optimization during operation to enable fast and precise scanning of arbitrary surface structures. For the potential application in practice, the accompanying computational cost is reduced evaluating different sparse approximation approaches. The fully independent training conditional approximation, used on a reduced set of active training data, is found to be the most promising approach.

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