Abstract Accurate prediction of corrosion rates and optimization of inhibitor strategies are vital for enhancing material durability and operational efficiency in oilfield environments. This study pioneers the use of Response Surface Methodology (RSM) to predict corrosion behavior and optimize inhibitor efficiency for L80-1 steel compared to L80-3Cr, L80-13Cr, and 2205 duplex stainless steel in oil reservoirs. Through immersion weight loss tests and electrochemical measurements, L80-1 was found to be the most corrosion-prone, with high salinity and temperature accelerating degradation. RSM innovatively modeled the impacts of inhibitor concentration, temperature, pH, and exposure time, achieving a remarkable R 2 value of 0.972 for corrosion rate predictions and 0.8927 for inhibitor efficiency predictions, demonstrating exceptional model accuracy. These robust predictive models provide new insights into the complex interplay of environmental factors and inhibitor performance. The findings enable optimized material selection and corrosion control strategies, significantly improving the safety and efficiency of oil well operations, particularly in Iraqi oilfields. This novel application of RSM offers a systematic approach to corrosion management, advancing the field of materials engineering in challenging oilfield conditions.
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Surface Science and Technology
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Khalaf et al. (Mon,) studied this question.