Prediction of residual life and critical crack length using the forward/inverse machine learning based on the configurational force fatigue model
Key Points
Predicting residual life shows promise for improving safety and maintenance schedules in engineering applications.
The model effectively estimated critical crack length in materials using a machine learning approach, enhancing predictive capabilities.
Observational analysis blends forward and inverse machine learning with a configurational force fatigue model to derive valuable insights.
These findings highlight the potential of machine learning in optimizing material life, suggesting new avenues for research in predictive modeling.
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Prediction of residual life and critical crack length using the forward/inverse machine learning based on the configurational force fatigue model | Synapse