The Proceedings of The Computational Mechanics Conference
Online ISSN : 2424-2799
2022.35
Session ID : 16-13
Conference information

Construction of a model for predicting the maximum reaction force of a crash box
*Kakeru SUGIYAMAYoshitaka WADA
Author information
CONFERENCE PROCEEDINGS RESTRICTED ACCESS

Details
Abstract

The structural strength evaluation of crash boxes is predicted by machine learning in this study. The training data was obtained from the dynamic elastic plastic analysis of the crash box. The input physical quantities are barrier angle, box thickness, material properties and mass equivalent to vehicle weight. The output physical quantity is the reaction force. Buckling occurs in the analysis and different directions of corruptions are one of the most interesting phenomenon from a point of engineering view. Physically meaningful features that take into account physical laws, physical properties, shape, and so on were added. As a result, we showed that learning by CNN is possible with higher accuracy. In addition, data design and data augmentation that takes physical phenomena into account are necessary to deal with large outlier. We would like to propose an adaptive method for machine learning in structural evaluation that can be used for a wide range of structural evaluations.

Content from these authors
© 2022 The Japan Society of Mechanical Engineers
Previous article Next article
feedback
Top