Skip to main content

Research Repository

Advanced Search

Modeling of equivalent strain in 2D cross-sections of open die forged components using neural networks

Jagtap, Nikhil Vijay; Reinisch, Niklas; Abdusalamov, Rasul; Bailly, David; Itskov, Mikhail

Authors

Nikhil Vijay Jagtap

Niklas Reinisch

Rasul Abdusalamov

David Bailly

Mikhail Itskov



Abstract

Open die forging is one of the oldest manufacturing methods known to remove defects in the ingot resulting from the casting process. The improved properties of the final component are highly dependent on the strain distribution. Although sinusoidal equations and empirical formulations have been already used to estimate the strain, they have been applied only to the core of the workpiece. In this work, a novel approach is presented to model the equivalent strain distribution in 2D cross-sections, in the direction of the press, of open die forged components using neural networks. The proposed method efficiently combines a parametric sinusoidal function with a neural network to learn the complex relationships between the process parameters and the resulting local strain. The neural network is trained on a dataset of finite element (FE) simulations of rectangular geometries that cover a wide range of aspect ratios, bite ratios, and height reductions. The presented methodology with near real-time prediction capabilities shows good agreement with FE results. Moreover, the parametric function captures the characteristic pattern of the strain distribution and reveals certain physical relationships affecting the deformation of the material. These patterns are later examined by analyzing the parameters identified in the parametric sinusoidal function.

Citation

Jagtap, N. V., Reinisch, N., Abdusalamov, R., Bailly, D., & Itskov, M. (2024). Modeling of equivalent strain in 2D cross-sections of open die forged components using neural networks. Advances in Industrial and Manufacturing Engineering, 9, Article 100152. https://doi.org/10.1016/j.aime.2024.100152

Journal Article Type Article
Acceptance Date Oct 10, 2024
Online Publication Date Oct 16, 2024
Publication Date Oct 28, 2024
Deposit Date Nov 27, 2024
Journal Advances in Industrial and Manufacturing Engineering
Electronic ISSN 2666-9129
Peer Reviewed Peer Reviewed
Volume 9
Article Number 100152
DOI https://doi.org/10.1016/j.aime.2024.100152
Keywords Open die forging; Equivalent strain; Neural networks; Metal forming; Digital shadow
Public URL https://keele-repository.worktribe.com/output/955526
Publisher URL https://www.sciencedirect.com/science/article/pii/S2666912924000175?via%3Dihub