Auto-Regressive U-Net for Full-Field Prediction of Shrinkage-Induced Damage in Concrete
This paper proposes a computationally efficient dual-network architecture combining an auto-regressive U-Net and a CNN to predict time-dependent full-field damage evolution and key mechanical properties in concrete, thereby enabling insights into aggregate effects and optimizing mix designs for improved durability.