Predictability of machine learning framework in cross-section data

被引:0
|
作者
Isik, Nimet [1 ]
Eskicioglu, Omer Can [2 ]
机构
[1] Burdur Mehmet Akif Ersoy Univ, Math & Sci Educ Dept, Burdur, Turkiye
[2] Burdur Mehmet Akif Ersoy Univ, Software Engn Dept, Burdur, Turkiye
来源
OPEN PHYSICS | 2023年 / 21卷 / 01期
关键词
differential cross section; machine learning algorithm; regression algorithms; autoencoders; deep learning algorithm; ELECTRON-IMPACT IONIZATION; PREDICTION; MOLECULES; ATOMS; E; 2E;
D O I
10.1515/phys-2022-0261
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Today, the use of artificial intelligence in electron optics, as in many other fields, has begun to increase. In this scope, we present a machine learning framework to predict experimental cross-section data. Our framework includes 8 deep learning models and 13 different machine learning algorithms that learn the fundamental structure of the data. This article aims to develop a machine learning framework to accurately predict double-differential cross-section values. This approach combines multiple models such as convolutional neural networks, machine learning algorithms, and autoencoders to create a more robust prediction system. The data for training the models are obtained from experimental data for different atomic and molecular targets. We developed a methodology for learning tasks, mainly using rigorous prediction error limits. Prediction results show that the machine learning framework can predict the scattering angle and energy of scattering electrons with high accuracy, with an R-squared score of up to 99% and a mean squared error of <0.7. This performance result demonstrates that the proposed machine learning framework can be used to predict electron scattering events, which could be useful for applications such as medical physics.
引用
收藏
页数:11
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