Sepasdar, Reza2021-05-212021-05-212021-05-17http://hdl.handle.net/10919/103427This thesis proposes a deep learning approach to predict stress at various stages of mechanical loading in 2-D representations of fiber-reinforced composites. More specifically, the full-field stress distribution at elastic and at an early stage of damage initiation is predicted based on the microstructural geometry. The required data set for the purposes of training and validation are generated via high-fidelity simulations of several randomly generated microstructural representations with complex geometries. Two deep learning approaches are employed and their performances are compared: fully convolutional generator and Pix2Pix translation. It is shown that both the utilized approaches can well predict the stress distributions at the designated loading stages with high accuracy.ETDapplication/pdfen-USCreative Commons Attribution 4.0 InternationalDeep learning (Machine learning)CNNFull-Field PredictionImage-to-Image TranslationAdversarial LearningA Deep Learning Approach to Predict Full-Field Stress Distribution in Composite MaterialsThesis