Artificial Intelligent Models for Detection and Prediction of Lost Circulation Events: A Review

Ameen Salih, Hassan A. Abdul Hussein
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Abstract

Lost circulation or losses in drilling fluid is one of the most important problems in the oil and gas industry, and it appeared at the beginning of this industry, which caused many problems during the drilling process, which may lead to closing the well and stopping the drilling process. The drilling muds are relatively expensive, especially the muds that contain oil-based mud or that contain special additives, so it is not economically beneficial to waste and lose these muds. The treatment of drilling fluid losses is also somewhat expensive as a result of the wasted time that it caused, as well as the high cost of materials used in the treatment such as heavy materials, cement, and others. The best way to deal with drilling fluid losses is to prevent them. Drilling fluid loss is a complex problem that is difficult to predict using simple and traditional methods. Artificial intelligence represents a modern and accurate technology for solving complex problems such as drilling fluid loss. Artificial intelligence through supervised machine learning provides the possibility of predicting these losses before they occur based on field data such as drilling fluid properties, drilling parameters, rock properties, and geomechanical parameters that are related to the loss of circulation of the wells suffered from losses problem located in the same area.    In this paper, several supervised machine learning models have been reviewed that were used for detecting and predicting of loss of drilling fluids during the drilling process. The paper provides an inclusive review of drilling fluid prediction and detection from simplest to more complected intelligent models.
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漏失事件检测与预测的人工智能模型综述
钻井液漏失或漏失是油气行业中最重要的问题之一,它出现于该行业的起步阶段,在钻井过程中造成了许多问题,可能导致油井关闭和钻井过程停止。钻井泥浆价格相对昂贵,特别是含有油基泥浆或含有特殊添加剂的泥浆,因此浪费和损失这些泥浆在经济上是不划算的。由于钻井液漏失造成的时间浪费,以及在处理过程中使用的材料(如重质材料、水泥等)的高成本,处理钻井液漏失的费用也有些昂贵。处理钻井液漏失的最好方法是预防。钻井液漏失是一个复杂的问题,很难用简单的传统方法进行预测。人工智能代表了解决钻井液漏失等复杂问题的现代精确技术。通过有监督的机器学习,人工智能可以根据钻井液性质、钻井参数、岩石性质和地质力学参数等现场数据,提前预测这些损失,这些数据与同一地区遭受损失问题的井的循环损失有关。本文综述了几种用于检测和预测钻井过程中钻井液漏失的有监督机器学习模型。本文从最简单的智能模型到更复杂的智能模型,对钻井液预测和检测进行了全面的综述。
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审稿时长
12 weeks
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