根据非密实抗压强度和钻井数据预测泥浆流失率的 ANN 模型

IF 1.3 4区 工程技术 Q3 CHEMISTRY, ORGANIC Petroleum Chemistry Pub Date : 2024-09-26 DOI:10.1134/S0965544124050116
Doaa Saleh Mahdi, Ayad A. Alhaleem A. Alrazzaq
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引用次数: 0

摘要

循环损失是增加石油勘探成本的一个主要问题。在油井规划期间,考虑泥浆流失的严重程度可能会带来显著的技术和经济效益。这将有助于在进入失循环区域之前采取预防措施,防止损失。本研究旨在利用人工神经网络(ANN)的新模型预测泥浆流失率(MLR)。建立该模型的目的是为了了解流失量与可控钻井参数之间的关系,如钻进速度(ROP)、流速(FLW)、立管压力(SPP)、钻头重量(WOB)、喷嘴面积(TFA)、每分钟转速(RPM)和扭矩(TRQ))、钻井液属性和地质力学属性(如非收缩抗压强度(UCS))。获取沿井筒的 UCS 信息对于处理钻井问题(如循环损失)至关重要。新模型的开发使用了从鲁迈拉油田达曼地层和哈塔地层 21 口油井中收集的 209 起失循环事件数据集。除其他可控钻井参数外,结果表明泥浆流失率对 UCS 值也很敏感。泥浆损失率随着 UCS 的增加而不断上升。采用建议的人工神经网络(ANN)模型预测了 21 口井的泥浆流失率。绘制了实际循环损失率与预测损失率随深度变化的对比图。结果表明,新模型能够精确预测可控钻井变量、钻井泥浆特性和 UCS 的循环损失函数,相关系数为 0.995。
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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ANN Model for Predicting Mud Loss Rate from Unconfined Compressive Strength and Drilling Data

Lost circulation is a major issue that increases the cost of petroleum exploration operations. During the well planning period, consideration of the degree of severity of mud loss may lead to significant technical and financial benefits. This will assist in the prevention of losses by putting preventative measures in place before running into lost circulation region. This study aimed to predict the amount of mud loss rate (MLR) by using new models with artificial neural networks (ANNs). This model was built in order to obtain a knowledge of the relationship between the amount of loss and the drilling parameters that can be controlled, such as (the rate of penetration (ROP), flow rate (FLW), standpipe pressure (SPP), weight on bit (WOB), nozzle area (TFA), rotation per minute (RPM), and torque (TRQ)), the drilling fluid properties and geomechanical properties like unconfined compressive strength (UCS). Gaining information about UCS along the wellbore is essential for dealing with drilling problems like lost circulation. The new model was developed using a dataset of 209 loss events that were collected from 21 oil wells in the Rumaila oil field’s Dammam and Hartha formations that encountered loss circulation events. Apart from other controllable drilling parameters, it was demonstrated that the rate of losses was also sensitive to UCS values. The amount of mud losses rate constantly rises with increasing UCS. The suggested artificial neural networks (ANN) model was employed to forecast the rate of losses for 21 wells. A comparison plot depicting the actual rate of lost circulation versus the predicted rate was generated as a function of depth. The results indicate that the new model is able to precisely forecast the lost circulation function of controllable drilling variables, drilling mud properties, and UCS with a correlation coefficient of 0.995.

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来源期刊
Petroleum Chemistry
Petroleum Chemistry 工程技术-工程:化工
CiteScore
2.50
自引率
21.40%
发文量
102
审稿时长
6-12 weeks
期刊介绍: Petroleum Chemistry (Neftekhimiya), founded in 1961, offers original papers on and reviews of theoretical and experimental studies concerned with current problems of petroleum chemistry and processing such as chemical composition of crude oils and natural gas liquids; petroleum refining (cracking, hydrocracking, and catalytic reforming); catalysts for petrochemical processes (hydrogenation, isomerization, oxidation, hydroformylation, etc.); activation and catalytic transformation of hydrocarbons and other components of petroleum, natural gas, and other complex organic mixtures; new petrochemicals including lubricants and additives; environmental problems; and information on scientific meetings relevant to these areas. Petroleum Chemistry publishes articles on these topics from members of the scientific community of the former Soviet Union.
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