RUS  ENG
Full version
JOURNALS // Chelyabinskiy Fiziko-Matematicheskiy Zhurnal // Archive

Chelyab. Fiz.-Mat. Zh., 2024 Volume 9, Issue 1, Pages 134–143 (Mi chfmj364)

Physics

Recursive neural network as a high-speed plate collision emulator

V. V. Pogorelko, A. E. Mayer, E. V. Fedorov

Chelyabinsk State University, Chelyabinsk, Russia

Abstract: Based on a database obtained using a high-speed plate impact model that relates impact parameters and material model parameters to the free surface velocity profile, the study compares the learning process and accuracy of a feedforward artificial neural network and a recursive neural network. A recursive neural network provides a significantly greater accuracy and requires less training time. Using a recursive neural network as a fast model emulator and Bayesian calibration can make it possible to solve the inverse problem of determining the substance model parameters from the free surface velocity profile with a greater accuracy.

Keywords: recursive neural network, artificial neural network, artificial neural network training, high-speed plate collision.

UDC: 532.5; 004.032.26; 004.85

Received: 01.12.2023
Revised: 19.02.2024

DOI: 10.47475/2500-0101-2024-9-1-134-143



© Steklov Math. Inst. of RAS, 2025