Metal Corrosion Rate Prediction of Small Samples Using an Ensemble Technique

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Abstract

Accurate prediction of the internal corrosion rates of oil and gas pipelines could be an effective way to prevent pipeline leaks. In this study, a proposed framework for predicting corrosion rates under a small sample of metal corrosion data in the laboratory was developed to provide a new perspective on how to solve the problem of pipeline corrosion under the condition of insufficient real samples. This approach employed the bagging algorithm to construct a strong learner by integrating several KNN learners. A total of 99 data were collected and split into training and test set with a 9:1 ratio. The training set was used to obtain the best hyperparameters by 10-fold cross-validation and grid search, and the test set was used to determine the performance of the model. The results showed that theMean Absolute Error (MAE) of this framework is 28.06% of the traditional model and outperforms other ensemblemethods. Therefore, the proposed framework is suitable formetal corrosion prediction under small sample conditions.

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Yang, Y., Zheng, P., Zeng, F., Xin, P., He, G., & Liao, K. (2023). Metal Corrosion Rate Prediction of Small Samples Using an Ensemble Technique. CMES - Computer Modeling in Engineering and Sciences, 134(1), 267–291. https://doi.org/10.32604/cmes.2022.020220

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