Akbar Priyo Santosa, Muhammad Reesa, Lubna Mawaddah, Muhamad Akrom
{"title":"Harnessing Quantum SVR on Quantum Turing Machine for Drug Compounds Corrosion Inhibitors Analysis","authors":"Akbar Priyo Santosa, Muhammad Reesa, Lubna Mawaddah, Muhamad Akrom","doi":"10.26877/asset.v6i3.601","DOIUrl":null,"url":null,"abstract":"Corrosion is an issue that has a significant impact on the oil and gas industry, resulting in significant losses. This is worth investigating because corrosion contributes to a large part of the total annual costs of oil and gas production companies worldwide, and can cause serious problems for the environment that will impact society. The use of inhibitors is one way to prevent corrosion that is quite effective. This study is an experimental study that aims to implement machine learning (ML) on the efficiency of corrosion inhibitors. In this study, the use of the Quantum Support Vector Regression (QSVR) algorithm in the ML approach is used considering the increasingly developing quantum computing technology with the aim of producing better evaluation matrix values than the classical ML algorithm. From the experiments carried out, it was found that the QSVR algorithm with a combination of (TrainableFidelityQuantumKernel, ZZFeatureMap/ PauliFeatureMap, and linear entanglement) obtained better Root Mean Square Error (RMSE) and model training time with a value of 6,19 and 92 compared to other models in this experiment which can be considered in predicting the efficiency of corrosion inhibitors. The success of the research model can provide a new insights of the ability of quantum computer algorithms to increase the evaluation value of the matrix and the ability of ML to predict the efficiency of corrosion inhibitors, especially on a large industrial scale.","PeriodicalId":414022,"journal":{"name":"Advance Sustainable Science Engineering and Technology","volume":"3 12","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Advance Sustainable Science Engineering and Technology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.26877/asset.v6i3.601","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Corrosion is an issue that has a significant impact on the oil and gas industry, resulting in significant losses. This is worth investigating because corrosion contributes to a large part of the total annual costs of oil and gas production companies worldwide, and can cause serious problems for the environment that will impact society. The use of inhibitors is one way to prevent corrosion that is quite effective. This study is an experimental study that aims to implement machine learning (ML) on the efficiency of corrosion inhibitors. In this study, the use of the Quantum Support Vector Regression (QSVR) algorithm in the ML approach is used considering the increasingly developing quantum computing technology with the aim of producing better evaluation matrix values than the classical ML algorithm. From the experiments carried out, it was found that the QSVR algorithm with a combination of (TrainableFidelityQuantumKernel, ZZFeatureMap/ PauliFeatureMap, and linear entanglement) obtained better Root Mean Square Error (RMSE) and model training time with a value of 6,19 and 92 compared to other models in this experiment which can be considered in predicting the efficiency of corrosion inhibitors. The success of the research model can provide a new insights of the ability of quantum computer algorithms to increase the evaluation value of the matrix and the ability of ML to predict the efficiency of corrosion inhibitors, especially on a large industrial scale.
腐蚀是一个对石油和天然气行业有重大影响的问题,会造成重大损失。这一点值得研究,因为腐蚀在全球石油和天然气生产公司的年度总成本中占了很大一部分,而且会对环境造成严重问题,对社会产生影响。使用抑制剂是一种相当有效的防腐蚀方法。本研究是一项实验研究,旨在对缓蚀剂的效率实施机器学习(ML)。考虑到量子计算技术的日益发展,本研究在 ML 方法中使用了量子支持向量回归(QSVR)算法,旨在产生比经典 ML 算法更好的评估矩阵值。实验发现,与其他模型相比,QSVR 算法结合(TrainableFidelityQuantumKernel、ZZFeatureMap/PauliFeatureMap 和线性纠缠)获得了更好的均方根误差(RMSE)和模型训练时间,其值分别为 6、19 和 92,可用于预测缓蚀剂的效率。该研究模型的成功可以为量子计算机算法提高矩阵评估值的能力和 ML 预测缓蚀剂效率的能力提供新的启示,特别是在大型工业规模上。