1. Identification of experienced temperature in mortar and concrete using microstructural image and deep learning.
- Author
-
Wang, Haodong, Lyu, Hanxiong, Liu, Tiejun, Li, Ye, and Qian, Hanjie
- Subjects
- *
MORTAR , *DEEP learning , *CONVOLUTIONAL neural networks , *IMAGE recognition (Computer vision) , *CONCRETE , *SCANNING electron microscopy , *HIGH temperatures - Abstract
• A deep learning model was proposed to estimate the temperature exposure of mortar and concrete samples based on their SEM images. • A large dataset of 16,484 SEM images with temperature labels ranging from 20 to 800 °C was collected. • The generalizability of the model was evaluated by testing it on different mix proportions of mortar and concrete. • Visualization was applied to analyze the features learned by the model and to identify the regions of interest for different temperature levels. This study presents a framework for identifying the temperature experienced by fire-damaged mortar and concrete using scanning electron microscopy (SEM) images and deep learning. A dataset of 16,484 SEM images of cement paste mixes with varying water-to-binder ratios and pozzolanic materials, exposed to temperatures ranging from 200 to 800 °C was established. Then a deep-learning model based on a convolutional neural network (CNN) for SEM image classification was trained, achieving a high accuracy above 98 %. To test the method's generalizability, cement paste mixture with a different water-to-binder ratio, mortar mixture with sand inclusion, and concrete mixture with coarse aggregates were prepared and exposed to different temperatures. The predicted temperatures deviated from the target temperatures within 8.6 %. Finally, visualization of the deep learning model was used to identify the critical features that influenced the prediction. The outer hydration products with smaller pores had a higher influence on samples before heating, whereas porous dehydrated products were more influential in samples exposed to high temperatures. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF