An AI-Extended Prediction of Erosion-Corrosion Degradation of API 5L X65 Steel

Author:

Espinoza-Jara Ariel12ORCID,Wilk Igor3,Aguirre Javiera45ORCID,Walczak Magdalena1ORCID

Affiliation:

1. Department of Mechanical and Metallurgical Engineering, Escuela de Ingeniería, Pontificia Universidad Católica de Chile, Vicuña Mackenna 4860, Macul, Santiago 7820436, Chile

2. Department of Civil and Environmental Engineering, Politecnico di Milano, 20133 Milano, Italy

3. Department of Technical Physics, Computer Science and Applied Mathematics, Lodz University of Technology, 90-005 Lodz, Poland

4. Corrosion and Wear of Materials Unit, DICTUC, Vicuña Mackenna 4860, Santiago 7820436, Chile

5. Escuela de Construcción Civil, Facultad de Ingeniería, Pontificia Universidad Católica de Chile, Av. Vicuña Mackenna 4860, Macul, Santiago 7820436, Chile

Abstract

The application of Artificial Neuronal Networks (ANN) offers better statistical accuracy in erosion-corrosion (E-C) predictions compared to the conventional linear regression based on Multifactorial Analysis (MFA). However, the limitations of ANN to require large training datasets and a high number of inputs pose a practical challenge in the field of E-C due to the scarcity of data. To address this challenge, a novel ANN method is proposed, structured to a small training dataset and trained with the aid of synthetic data to produce an E-C neural network (E-C NN), applied for the first time in the study of E-C wear synergy. In the process, transfer learning is applied by pre-training and fine-tuning the model. The initial dataset is created from experimental data produced in a slurry pot setup, exposing API 5L X65 steel to a turbulent copper tailing slurry. To the previously known E-C scenario for selected values of flow velocity, particle concentration, temperature, pH, and the content of the dissolved Cu2+, new experimental data of stand-alone erosion and stand-alone corrosion is added. The prediction of wear loss by E-C NN considers individual parameters and their interactions. The main result is that E-C ANN provides better prediction than MFA as evaluated by a mean squared error (MSE) values of 2.5 and 3.7, respectively. The results are discussed in the context of the cross-effect between the proposed prediction model and the resulting estimation of relative contribution to E-C synergy, which is better predicted by the E-C NN. The E-C NN model is concluded to be a viable alternative to MFA, delivering similar prediction with better sensitivity to E-C synergy at shorter computation times when using the same experimental dataset.

Funder

ANID

Pontificia Universidad Católica de Chile

Publisher

MDPI AG

Subject

Surfaces, Coatings and Films,Mechanical Engineering

Reference48 articles.

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2. (2021). Standard Guide for Determining Synergism Between Wear and Corrosion (Standard No. ASTM G119-09).

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5. An electrochemical and microstructural assessment of erosion–corrosion of cast iron;Neville;Wear,1999

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