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Autonomous Scanning Probe Microscopy in Situ Tip Conditioning through Machine Learning

机译:自主扫描探针显微镜通过机器学习原位尖端调节

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摘要

Atomic-scale characterization and manipulation with scanning probe microscopy rely upon the use of an atomically sharp probe. Here we present automated methods based on machine learning to automatically detect and recondition the quality of the probe of a scanning tunneling microscope. As a model system, we employ these techniques on the technologically relevant hydrogen terminated silicon surface, training the network to recognize abnormalities in the appearance of surface dangling bonds. Of the machine learning methods tested, a convolutional neural network yielded the greatest accuracy, achieving a positive identification of degraded tips in 97% of the test cases. By using multiple points of comparison and majority voting, the accuracy of the method is improved beyond 99%.
机译:扫描探针显微镜的原子尺度表征和操纵依赖于原子尖锐探头的使用。 在这里,我们提出了基于机器学习的自动化方法来自动检测和重新处理扫描隧道显微镜探头的质量。 作为模型系统,我们在技术相关的氢封端硅表面上采用这些技术,训练网络以识别表面悬空粘合的外观异常。 在测试的机器学习方法中,卷积神经网络产生了最大的准确性,实现了97%的测试用例的降解提示的肯定识别。 通过使用多个比较和大多数投票,该方法的准确性得到提高超过99%。

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