Machine-learning-based prediction of corrosion behavior in additively manufactured inconel 718

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Abstract

This research work focuses on machine-learning-assisted prediction of the corrosion behavior of laser-powder-bed-fused (LPBF) and postprocessed Inconel 718. Corrosion testing data of these specimens were collected and fit into the following machine learning algorithms: polynomial regression, support vector regression, decision tree, and extreme gradient boosting. The model performance, after hyperparameter optimization, was evaluated using a set of established metrics: R2, mean absolute error, and root mean square error. Among the algorithms, the extreme gradient boosting algorithm performed best in predicting the corrosion behavior, closely followed by other algorithms. Feature importance analysis was executed in order to determine the postprocessing parameters that influenced the most the corrosion behavior in Inconel 718 manufactured by LPBF.

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Mythreyi, O. V., Srinivaas, M. R., Amit Kumar, T., & Jayaganthan, R. (2021). Machine-learning-based prediction of corrosion behavior in additively manufactured inconel 718. Data, 6(8). https://doi.org/10.3390/data6080080

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