Comprehensive analysis and machine learning-based solutions for drift behavior in ambient Atomic Force Microscope conditions

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Date

2025

Authors

D. Gemici Deveci
T. Karakoyun Barandir
O. Unverdi
C. Celebi
L. O. Temur
D. C. Atilla

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Volume Title

Publisher

PERGAMON-ELSEVIER SCIENCE LTD

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Green Open Access

No

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Abstract

This study outlines the effectiveness of combining numerical methods Computer Vision (CV) and Machine Learning (ML) approaches to analyze and predict drift behavior in high-resolution Atomic Force Microscope (AFM) scanning procedures. Using Long Short-Term Memory (LSTM) models for time series analysis and the Light Gradient Boosting Machine (LightGBM) algorithm for predictive modeling significant progress was achieved in understanding the dynamic and variable nature of drift and mitigating its impact on scanning. The models demonstrated a robust predictive capability achieving approximately 94% accuracy in drift predictions. The study emphasizes the nonstationary characteristics of drift and demonstrates how the selection of features directly related to the target variable enhances the efficiency of the model and enables adaptive real-time correction. These findings confirm the predictive strength of the models and highlight the potential for integrating ML predictions with real-time feedback mechanisms to improve the resolution and stability of AFM imaging in both scientific and industrial applications.

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Keywords

Atomic Force Microscope, Drift, Computer Vision, Machine Learning, Deep learning, Artificial Intelligence, SCANNING PROBE MICROSCOPY, IMAGE, CALIBRATION, ELIMINATION, COMPENSATION, SPECTROSCOPY, DISTORTION, TRACKING, Atomic Force Microscope, Deep Learning, Machine Learning, Artificial Intelligence, Computer Vision, Drift, Machine Learning, Drift, Artificial Intelligence, Computer Vision, Deep learning, Atomic Force Microscope

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N/A

Source

Engineering Applications of Artificial Intelligence

Volume

159

Issue

Start Page

111678

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CrossRef : 1

Scopus : 1

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Mendeley Readers : 2

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