Hybridization of Optimized Supervised Machine Learning Algorithms for Effective Lithology

Ebenezer Aniyom, A. Chikwe, J. Odo
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Abstract

Lithology identification is an important aspect in reservoir characterization with one of its main purpose of well planning and drilling activities. A faster and more effective lithology identification could be obtained from an ensemble of optimized models using voting classifiers. In this study, a voting classifier machine learning model was developed to predict the lithology of different lithologies using an assembly of different classification algorithms: Support Vector Machine (SVM), Logistic Regression, Random Forest Classifier, K-Nearest Neighbor, and Multilayer Perceptron (MLP) models. The result of the comparative analysis shows that the implementation of the voting classifier model helped to increase the prediction performance by 1.50% compared to the individual models. Despite a small significance at deployment in real scenario it improves the chances of classifying the lithology.
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有效岩性的优化监督机器学习算法的杂交
岩性识别是储层表征的一个重要方面,是进行井规划和钻井活动的主要目的之一。利用投票分类器对优化后的模型集合进行岩性识别,可以获得更快、更有效的岩性识别效果。在本研究中,开发了一个投票分类器机器学习模型,使用不同分类算法的集合来预测不同岩性的岩性:支持向量机(SVM)、逻辑回归、随机森林分类器、k近邻和多层感知器(MLP)模型。对比分析结果表明,投票分类器模型的实现比单个模型的预测性能提高了1.50%。尽管在实际应用中意义不大,但它提高了岩性分类的机会。
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