학술논문

基于XGBoost的钻井液体系分类预测模型研究 / Study on Prediction Model for Drilling Fluid Classification Based on XGBoost
Document Type
Academic Journal
Source
钻井液与完井液 / Drilling Fluid & Completion Fluid. 40(6):765-770
Subject
钻井液体系设计
XGBoost
机器学习
灰色关联度分析
Design of drilling fluid system
Machine learning
Grey relation analysis
Language
Chinese
ISSN
1001-5620
Abstract
根据钻井液体系设计的原则,结合实际钻井液设计资料,应用一种新的机器学习方法建立了钻井液体系分类预测模型.钻井液体系分类数据经过独热编码(one-hot)之后,通过灰色关联度分析方法,选择出钻井液体系分类预测的20 个特征参数,其中压力的关联度最大,为 0.8233.将选择的地质设计参数和工程设计参数,基于一种极端梯度增强算法(XGBoost)针对 4种钻井液体系进行分类预测.结果显示,基于XGBoost的钻井液体系分类预测模型 4类钻井液体系训练集的准确率都为 100%,测试集的平均准确率为 99.89%,精确率为 99.97%,召回率为 98.89%,F1值为 0.98.将该模型应用于胜利油田M区块,分类结果符合实际钻井要求,能够辅助选择钻井液体系,为实现钻井液智能化设计提供了帮助.
A model for predicting the type of a drilling fluid system was established using a new machine learning method based on the principles of mud system design and by referencing the actual drilling fluid designs.By one-hot coding of the data concerning the classification of drilling fluid systems,twenty parameters for predicting the type of a drilling fluid were selected through grey relation analysis.Of these parameters pressure has the highest correlation degree,which is 0.8233.The selected geological parameters and engineering design parameters were used based on an extreme gradient boost(XGBoost)algorithm to predict the types of 4 drilling fluids.The results show that the accuracy of the training sets of the 4 drilling fluids are all 100%,the average percent accuracy of the test sets is 99.89%,the precision 99.97%,the recall rate 98.89%,and the F1 value 0.98.Applying this model to the M block in the Shengli Oilfield,the classification results met the drilling requirements,and was of help in selecting the suitable drilling fluids.This study has provided a help to the intelligent design of drilling fluid.