Intelligent prediction and key factor analysis to lost circulation from drilling data based on machine learning

Guangyao Wen, Huailong Chen, T. Zhou, Cheng Gao, B. Baletabieke, Haiqiu Zhou, Shan-shan Wang
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Abstract

Lost circulation during drilling wells is very detrimental since it greatly increases the non-productive time and operational cost, also seriously lead to wellbore instability, pipe sticking, blow out, etc.. However, in the process of drilling wells, geological characteristics and operational drilling parameters all may have impacts to the lost circulation. This makes the establishment of the relations between the lost circulation and drilling factors very challenging. In this paper, we tested five different kernel function (linear, quadratic, cubic, medium Gaussian and fine Gaussian) derived support vector regression (SVR) models and four-layer artificial neural network (ANN). By combining their accuracy and time efficiency, the ANN is regarded as the optimal predictor of lost circulation. By training ANN using different combination of drilling features, we concluded that depth, torque, hanging weight, displacement, entrance density and export density are the key factors to accurate predict the lost circulation. The corresponding trained ANN network can achieve 99.2% accuracy and evaluate whether a drilling feature vector corresponds to lost circulation or not in milliseconds.
基于机器学习的钻井数据漏失智能预测和关键因素分析
钻井过程中的漏失是非常有害的,因为它大大增加了非生产时间和作业成本,也严重导致井筒不稳定、管柱卡钻、井喷等问题。然而,在钻井过程中,地质特征和钻井作业参数都可能对漏失产生影响。这使得建立漏失与钻井因素之间的关系非常具有挑战性。在本文中,我们测试了五种不同核函数(线性、二次、三次、中高斯和细高斯)衍生的支持向量回归(SVR)模型和四层人工神经网络(ANN)。结合人工神经网络的精度和时间效率,认为人工神经网络是最优的漏失预测器。通过使用不同的钻井特征组合训练人工神经网络,我们得出深度、扭矩、吊重、排量、入口密度和出口密度是准确预测漏失的关键因素。相应的训练ANN网络可以达到99.2%的准确率,并在毫秒内评估钻井特征向量是否对应漏失。
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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