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K-means聚类优化井底压力修正模型研究
引用本文:张禾,全锐.K-means聚类优化井底压力修正模型研究[J].西南石油大学学报(自然科学版),2021,43(3):155-164.
作者姓名:张禾  全锐
作者单位:西南石油大学机电工程学院, 四川 成都 610500
基金项目:四川省应用基础研究基金(2016JY0049)
摘    要:在钻井过程中,由于井底压力计算模型误差大,而井下实测井底压力时数据容易失真、甚至无数据,因而不能准确测定井底压力,对钻井作业带来极大的安全风险.针对此类问题,提出了一种用K-means聚类方法优化朴素贝叶斯模型,结合井底压力监测原理,形成一套实现井底压力智能动态分析K-means聚类优化的朴素贝叶斯模型,利用该模型修正...

关 键 词:井底压力  K-means聚类  朴素贝叶斯  水力学模型  压力修正
收稿时间:2019-01-14

Optimization of a Bottom-hole Pressure Correction Model Using K-means Clustering
ZHANG He,QUAN Rui.Optimization of a Bottom-hole Pressure Correction Model Using K-means Clustering[J].Journal of Southwest Petroleum University(Seience & Technology Edition),2021,43(3):155-164.
Authors:ZHANG He  QUAN Rui
Institution:College of Mechanical and Electrical Engineering, Southwest Petroleum University, Chengdu, Sichuan 610500, China
Abstract:In the process of drilling, owing to problems such as data distortion during the measurement of bottom-hole pressure, absence of return data, and incapacity of bottom-hole pressure calculation models to accurately reflect the measurements, the bottom-hole pressure cannot be accurately monitored, and this results in a substantial safety risk for drilling operations. To provide an effective overall monitoring of the bottom-hole pressure, a K-means clustering optimization method was established to improve the Naive Bayesian model. Combined with the principle of bottom-hole pressure monitoring, a Naive Bayesian model optimized by K-means clustering was designed, which could perform intelligent dynamic analysis of the bottom-hole pressure. This model was adopted to correct the bottom-hole pressure calculated by the traditional hydraulic model, and the results of both these models were compared to minimize the calculation error. Analysis of field data suggested that the calculated bottom-hole pressure corrected using the optimized model demonstrated a smaller error. This error was within the safe range of the pressure monitoring of drilling operation, indicating that the model was able to satisfy the requirements of regular drilling practices.
Keywords:bottom hole pressure  K-means clustering  Naive Bayesian  hydraulic model  pressure correction  
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