Application of Genetic Algorithm on Data Driven Models for Optimized ROP Prediction

David Duru, A. Kerunwa, J. Odo
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引用次数: 3

Abstract

The demand for cost-effective drilling operations in oil and gas exploration is ever growing. One of the important aspects to tackling the aforementioned difficulty is determining the optimal rate of penetration (ROP) of the drill bit. The most important optimization objective is to achieve a high optimal rate of penetration in safe and stable drilling conditions. Several machine learning models have been developed to predict ROP, however, there have been few studies that consider the different optimization algorithms needed to optimize the conventional developed models other than the conventional grid search and random search techniques. Genetic algorithm (GA) has gained much attention as methods of optimizing the predictions of machine learning algorithms in different fields of study. In this study, GA optimization algorithm was implemented to optimize 5 machine learning algorithms: Linear Regression, Decision Tree, Support Vector Machine, Random Forest, and Multilayer Perceptron algorithm while using torque, weight on bit, surface RPM, mud flow, pump pressure, downhole temperature and pressure, etc, as input parameters. Three scenarios were analyzed using a train-test split ratio of 70-30, 80-20 and 85-15 percent on all the developed models. The results from the comparative study of all models developed shows that the implementation of the GA optimization algorithms increased the individual ROP models, with the multilayer perceptron model having the highest coefficient of determination of 0.989% after GA optimization.
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遗传算法在数据驱动模型优化ROP预测中的应用
在石油和天然气勘探中,对具有成本效益的钻井作业的需求不断增长。解决上述困难的一个重要方面是确定钻头的最佳钻速(ROP)。最重要的优化目标是在安全稳定的钻井条件下获得较高的最佳钻进速率。已经开发了几种机器学习模型来预测ROP,然而,除了传统的网格搜索和随机搜索技术之外,很少有研究考虑优化传统开发模型所需的不同优化算法。遗传算法作为一种优化机器学习算法预测的方法,在不同的研究领域受到了广泛的关注。本研究采用GA优化算法,以扭矩、钻头压、地面转速、泥浆流量、泵压力、井下温度压力等为输入参数,对线性回归、决策树、支持向量机、随机森林、多层感知器5种机器学习算法进行优化。对所有已开发的模型使用70-30、80-20和85- 15%的列车测试分割率对三种场景进行了分析。所有模型的对比研究结果表明,GA优化算法的实施增加了单个ROP模型,其中GA优化后的多层感知器模型的决定系数最高,为0.989%。
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