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Developing an innovative corrosion and scaling index for industrial cooling water using artificial intelligence

The present study developed an intelligent model to predict the corrosion and scaling potential (CSP) of industrial cooling water circuits using artificial intelligence (AI) techniques. AI techniques have attracted a lot of attention due to the high accuracy and speed of calculations, as well as pos...

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Published in:Journal of water process engineering 2024-08, Vol.65, p.105838, Article 105838
Main Authors: Khaledi, Masoud, Mehrabadi, Abdollah Rashidi, Mirabi, Maryam
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description The present study developed an intelligent model to predict the corrosion and scaling potential (CSP) of industrial cooling water circuits using artificial intelligence (AI) techniques. AI techniques have attracted a lot of attention due to the high accuracy and speed of calculations, as well as possible analysis of large datasets. The study analyzed nine years of data on cooling water quality parameters, including pH, alkalinity, hardness, dissolved solids, chloride, turbidity, suspended solids, and iron, from electric arc furnaces at the Khuzestan Steel Company. Multiple linear regression (MLR), multiple nonlinear regression (MNLR), and multi-layer perceptron neural network (ANN-MLP) models were applied to predict CSP. The ANN-MLP model achieved the best performance with an R2 of 0.75, Mean Absolute Error of 0.34, and Mean Squared Error of 0.35, demonstrating that neural networks can effectively predict CSP in industrial cooling water. The results also showed that total hardness and chloride have the greatest impact on CSP in the circulating water circuits. •practical and real data of an important operational and practical unit has been used.•Artificial intelligence models was used to predict corrosion and scaling.•ANN-MLP has better performance than MLR and MNLR in predicting corrosion and scaling.•Corrosion inhibitors reduce the prediction accuracy of artificial intelligence models.•TH and Clhave the greatest effect on corrosion and scaling.
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subjects Artificial intelligence
Corrosion and scaling
Industrial water
Linear regression
Neural network-MLP
Nonlinear regression
title Developing an innovative corrosion and scaling index for industrial cooling water using artificial intelligence
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