Abstract

Feedback-controlled electromigration (FCE) has been employed to control atomic junctions with quantized conductance. An FCE scheme is controlled by many parameters, such as the threshold differential conductance GTH, feedback voltage VFB, and voltage step VSTEP. It is considered possible to achieve a precise and stable control of the quantized conductance by automatically optimizing the FCE parameters. This motivated us to develop an approach based on machine learning (ML) to tune the feedback parameters of FCE. The ML system is composed of three kinds of engines, namely, learning, evaluation, and inference. The learning engine performs the FCE procedure with random parameters, collects various experimental data, and updates the database. Subsequently, four variables and a cost function are defined to evaluate the controllability of the quantized conductance. The evaluation engine scores the experimental data by using the defined cost function. Then, the control quality is evaluated in real time during the FCE procedure. The inference engine selects the new FCE parameter according to the evaluated data. These engines determine the optimal parameters without human intervention and according to the situation. Finally, we actually applied this system to the FCE procedure. The parameter is selected from sample data in the database according to the variation in controllability. As a result, the controllability gradually improves during the FCE procedure that uses the ML system. The results indicate that the proposed ML system can evaluate the controllability of the FCE procedure and change the VFB parameter in real time according to the situation.

Highlights

  • In recent years, nanotechnology has set the stage for the new industrial revolution

  • The applied VFB parameters were repeated from the first VFB parameter because of the unavailability of data in the dataset. These results indicated that the proposed machine learning (ML) system can evaluate the controllability of the feedback-controlled electromigration (FCE) procedure and change the VFB parameter in real time according to the situation

  • The inference engine selected the VFB parameters according to the controllability of the FCE procedure

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Summary

INTRODUCTION

Scitation.org/journal/adv temperature. it is necessary to optimize and control the FCE procedure according to the situation to ensure the precise and stable control of the quantized conductance of metal nanowires.. The conventional system selects optimal parameters based on human experiments. This may not necessarily be optimal for the FCE procedure. To address these problems, we focused on machine learning (ML) approaches. The learning engine performs the FCE procedure with a random parameter to collect various experimental data and update the database. The inference engine selects the FCE parameters that are adapted to the status of the FCE procedure. Using these engines, the ML system determines the optimal parameter without human intervention according to the situation

EXPERIMENTAL DETAILS
Learning engine
Evaluation engine
Inference engine
FCE procedure with the ML system
CONCLUSION
Full Text
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