Investigasi Model Machine Learning Berbasis QSPR pada Inhibitor Korosi Pirimidin

Eksergi Pub Date : 2023-07-03 DOI:10.31315/e.v20i2.9864
Muhamad Akrom, T. Sutojo
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引用次数: 0

Abstract

Since corrosion causes considerable losses in many fields, including the economy, environment, society, industry, security, and safety, it is a major concern for the industrial and academic sectors. Damage control of materials based on organic compounds is currently a field of great interest. Because it is non-toxic, affordable, and effective in a variety of corrosive situations, pyrimidine has potential as a corrosion inhibitor. It takes a lot of time and resources to carry out experimental investigations in the exploration of potential corrosion inhibitor candidates. In this study, we evaluate the gradient boosting regressor (GBR), support vector regression (SVR), and k-nearest neighbor (KNN) algorithms as predictive models for corrosion inhibition efficiency using a machine learning (ML) approach based on the quantitative structure-property relationship model (QSPR). Based on the metric coefficient of determination (R2) and root mean square error (RMSE), we found that the GBR model had the best predictive performance compared to the SVR and KNN models as well as models from the literature for pyrimidine compound datasets. Overall, our study offers a new perspective on the ability of ML models to predict corrosion inhibition of iron surfaces
Investigasi模型机器学习小檗QSPR pada抑制剂Korosi Pirimidin
由于腐蚀在许多领域造成了相当大的损失,包括经济、环境、社会、工业、安全和保障,因此它是工业和学术界关注的一个主要问题。基于有机化合物的材料的损伤控制目前是一个备受关注的领域。因为嘧啶无毒、价格合理,在各种腐蚀情况下都有效,所以它有潜力成为一种腐蚀抑制剂。在探索潜在的缓蚀剂候选者方面进行实验研究需要大量的时间和资源。在本研究中,我们使用基于定量结构-性能关系模型(QSPR)的机器学习(ML)方法,评估了梯度增强回归(GBR)、支持向量回归(SVR)和k近邻(KNN)算法作为缓蚀效率的预测模型。基于度量确定系数(R2)和均方根误差(RMSE),我们发现与SVR和KNN模型以及嘧啶化合物数据集的文献模型相比,GBR模型具有最佳的预测性能。总之,我们的研究为ML模型预测铁表面缓蚀作用的能力提供了一个新的视角
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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