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Zhurnal Tekhnicheskoi Fiziki, 2023 Volume 93, Issue 12, Pages 1732–1735 (Mi jtf7147)

International Conference PhysicA.SPb 23-27 October, 2023 St. Petersburg
Mathematical physics and numerical methods

Research of feedforward neural network applicability in computer simulation of polymers

D. V. Shein, D. V. Zavialov, V. I. Kontchenkov

Volgograd State Technical University, Volgograd, Russia

Abstract: In this paper we investigate the adequacy of deep learning force field models for modeling amorphous bodies. A polymer with the studied physical properties, polyphenylene sulfide, was chosen as a test substance. The simulation results shows that the forces predicted by neural networks acting on polymer atoms are significantly different from the forces calculated by ab initio molecular dynamics methods. A qualitative comparison with the force field model of a simpler compound, black phosphorene, shows that feedforward neural networks are unsuitable for modeling complex amorphous substances.

Keywords: molecular dynamics, feedforward neural networks, force fields, polyphenylene sulfide, black phosphorene.

Received: 19.05.2023
Revised: 28.08.2023
Accepted: 30.10.2023

DOI: 10.61011/JTF.2023.12.56806.f242-23



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© Steklov Math. Inst. of RAS, 2025