Partial radial distribution functions for glassy GeSe3 from scattering experimental data using the Hopfield Neural Network

Favorite this paper
How to cite this paper?
Details
  • Presentation type: Apresentação de Pôster / Poster Communications
  • Track: Machine Learning/Artificial Intelligence
  • Keywords: Partial radial distribution function; Glassy GeSe3; Scattering experimental data; Hopfield Neural Network;
  • 1 Universidade Federal de Minas Gerais

Partial radial distribution functions for glassy GeSe3 from scattering experimental data using the Hopfield Neural Network

Felipe Carvalho

Universidade Federal de Minas Gerais

Abstract

Retrieving information from experimental data is a very difficult task, known as inverse problem. Such problems in physical chemistry has been solved using the Hopfield Neural Network. The robustness of this method in inverting scattering data for liquids has been demonstrated. Its performance will be evaluated in this work using data for a glassy solid. The preliminarly results shows a excellent outcome for the data considered.

Share your ideas or questions with the authors!

Did you know that the greatest stimulus in scientific and cultural development is curiosity? Leave your questions or suggestions to the author!

Sign in to interact

Have a question or suggestion? Share your feedback with the authors!