Machine Learning Estimation of Plateau Stress of Aluminum Foam Using X-ray Computed Tomography Images

Materials (Basel). 2023 Feb 24;16(5):1894. doi: 10.3390/ma16051894.

Abstract

Owing to its lightweight and excellent shock-absorbing properties, aluminum foam is used in automotive parts and construction materials. If a nondestructive quality assurance method can be established, the application of aluminum foam will be further expanded. In this study, we attempted to estimate the plateau stress of aluminum foam via machine learning (deep learning) using X-ray computed tomography (CT) images of aluminum foam. The plateau stresses estimated by machine learning and those actually obtained using the compression test were almost identical. Consequently, it was shown that plateau stress can be estimated by training using the two-dimensional cross-sectional images obtained nondestructively via X-ray CT imaging.

Keywords: X-ray computed tomography (CT); cellular materials; deep learning; foam; machine learning; mechanical properties; neural network; plateau stress.