MAM-STM: A software for autonomous control of single moieties towards specific surface positions
In this publication we introduce MAM-STM, a software to autonomously manipulate arbitrary moieties towards specific positions on a metal surface utilizing the tip of a scanning tunneling microscope (STM). Finding the optimal manipulation parameters for a specific moiety is challenging and time consu...
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Zusammenfassung: | In this publication we introduce MAM-STM, a software to autonomously
manipulate arbitrary moieties towards specific positions on a metal surface
utilizing the tip of a scanning tunneling microscope (STM). Finding the optimal
manipulation parameters for a specific moiety is challenging and time
consuming, even for human experts. MAM-STM combines autonomous data acquisition
with a sophisticated Q-learning implementation to determine the optimal bias
voltage, the z-approach distance, and the tip position relative to the moiety.
This then allows to arrange single molecules and atoms at will. In this work,
we provide a tutorial based on a simulated response to offer a comprehensive
explanation on how to use and customize MAM-STM. Additionally, we assess the
performance of the machine learning algorithm by benchmarking it within a
simulated stochastic environment. |
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DOI: | 10.48550/arxiv.2404.09694 |