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Enhanced prediction of corrosion rates of pipeline steels using simulated annealing-optimized ANFIS models

Ali Hussein Khalaf, Bing Lin, Ahmed N. Abdalla, Zhongzhi Han, Ying Xiao, Junlei Tang

2024Results in Engineering22 citationsDOIOpen Access PDF

Abstract

Accurate prediction of corrosion rates is crucial for preventing infrastructure failures, reducing maintenance costs, and ensuring operational safety. Traditional models often struggle to account for the complex, non-linear interactions between environmental factors and material properties. This study presents a novel approach integrating Simulated Annealing (SA) with an Adaptive Network-based Fuzzy Inference System (ANFIS) to improve corrosion rate predictions for pipeline steels. The SA-ANFIS model features six input neurons representing temperature, H₂S pressure, CO₂ pressure, salinity, moisture content, and material type. These factors influence corrosion rates, represented by a single output neuron. The SA algorithm optimizes the ANFIS model's parameters, enhancing its ability to handle non-linear relationships. Historical corrosion data for P110SS, L80, and 2205 Duplex steel were used, incorporating environmental variables such as temperature, pH, and gas pressures. The SA-ANFIS model achieved superior accuracy, with a maximum error of 2.8424 % and an average error of 1.2536 %, outperforming the GA-ANFIS model and conventional ANFIS and SVR models. The SA-ANFIS model offers a robust, optimized tool for predicting corrosion in petroleum pipelines, significantly improving prediction accuracy under harsh conditions. • Integration of Simulated Annealing with ANFIS significantly reduces maximum error and improves R-squared values, enhancing predictive precision. • The model targets crucial petroleum industry alloys—L80, P110, and 2205 stainless steel. • The model adeptly manages non-linear relationships among variables like temperature, pH, and pressures, improving corrosion rate predictions.

Topics & Concepts

Adaptive neuro fuzzy inference systemMaterials sciencePipeline (software)CorrosionAnnealing (glass)MetallurgyComputer scienceArtificial intelligenceFuzzy logicProgramming languageFuzzy control systemCorrosion Behavior and InhibitionStructural Integrity and Reliability AnalysisNon-Destructive Testing Techniques