2021
DOI: 10.22541/au.163832733.36418193/v1
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A Machine Learning Model for Predicting Progressive Crack Extension based on Direct Current Potential Drop Fatigue Data

Abstract: Time history data collected from a Direct Current Potential Drop (DCPD) fatigue experiment at a range of temperatures was used to train a Bidirectional Long-Short Term Memory Neural Network (BiLSTM) model. The model was trained on high sampling rate experimental data from crack initiation up through the Paris regime. The BiLSTM model was able to predict the progressive crack extension at intermediate temperatures and stress intensities. The model was able to reproduce crack jumps and overall crack progression.… Show more

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