Drilling Through Data: Automated Kick Detection Using Data Mining

R. Alouhali, M. Aljubran, S. Gharbi, A. Al-Yami
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引用次数: 16

Abstract

This paper details using advancement in data analytics and the huge amount of data generated while drilling to develop an automated system to detect kicks while drilling. Detecting kicks in early stages gives the crew additional time to control it resulting in a safer and more efficient drilling operation. Five models were developed and evaluated to optimize kick detection they are: Decision Tree, K-Nearest Neighbor (KNN), Sequential Minimal Optimization (SMO) Algorithm, Artificial Neural Network (ANN), and Bayesian Network. The models were trained to detect kicks based on actual kick cases. The models are predicting kicks using only surface parameters such as: pressure gauges, flow meters, hook load, rate of penetration, torque, pump rate, and weight on bit. The performance of the five models is then evaluated and compared. Best two models were Decision Tree and K-Nearest Neighbor.
钻穿数据:使用数据挖掘的自动井涌检测
本文详细介绍了利用先进的数据分析技术和钻井过程中产生的大量数据,开发一种自动检测井涌的系统。在早期阶段发现井涌,使工作人员有更多的时间来控制井涌,从而实现更安全、更高效的钻井作业。开发并评估了五种模型来优化井涌检测,它们是:决策树、k -最近邻(KNN)、顺序最小优化(SMO)算法、人工神经网络(ANN)和贝叶斯网络。这些模型经过训练,可以根据实际的踢腿情况来检测踢腿。该模型仅使用地面参数预测井涌,如压力表、流量计、钩载荷、钻速、扭矩、泵速和钻头重量。然后对五种模型的性能进行了评价和比较。最好的两个模型是决策树模型和k近邻模型。
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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