人工神经网络预测伊拉克南部油田漏失层

Ameen Salih, Hassan A. Abdul Hussein, S. H. Hamza
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引用次数: 0

摘要

在柔软和脆弱的区域(如高渗透、洞穴、裂缝和砂质地层)钻井有几个问题。最关键的问题之一是钻井液在整个或部分井中流失到这些地层中。钻井液漏失会导致更严重、更复杂的问题,如卡钻、井涌和关井等。钻井泥浆相对昂贵,特别是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。人工神经网络(ANN)可以根据钻井参数数据和受井漏影响的井的钻井液性质,在钻井液漏失发生之前进行预测。本文建立了两个人工神经网络模型,用于预测伊拉克南部鲁迈拉油田达曼组的钻井液损失。这两个模型具有相同的拓扑和结构。第一个模型使用提前停止技术,当我们得到全局最小值时停止训练,第二个模型使用特定的epoch来完成训练。该模型能较准确地预测各种类型的损失。第一模型和第二模型的R2实现精度分别为0.9302和0.9493。提前停止技术可以在短时间内获得精度可接受的模型,而不依赖于特定的历元数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Networks to Predict Lost Circulation Zones at Southern Iraq Oilfield
Drilling soft and fragile areas such as (high permeable, cavernous, fractured, and sandy formations) have several problems. One of the most critical problems is the loss of drilling fluid into these formations in whole or part of the well. The loss of drilling fluid can lead to more significant and complex problems, such as pipe sticking, well kick, and closing the well. The drilling muds are relatively expensive, especially oil-based mud or those that contain special additives, so it is not economically beneficial to waste and lose these muds. Artificial neural networks (ANN) can predict drilling fluid losses before they occur based on drilling parameters data and drilling fluid properties of wells effected by lost circulation problems located in the same area. This paper developed two artificial neural network models to predict drilling fluid losses in the Dammam formation- Rumaila oil field in southern Iraq. The two models have the same topology and structure. The first model used the early stopping technique to stop the training when we get the global minimum and the second model used specific epochs to complete the training. The models could predict various types of losses with high accuracy. The accuracy of implementing R2 for the first and second models was 0.9302 and 0.9493, respectively. The early stopping technique lead to obtain a model with acceptable accuracy in a short time without relying on a specific number of epochs.
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