首页> 外文会议>SPE Oklahoma City Oil and Gas Symposium >Prediction of Lost Circulation Prior to Drilling for Induced Fractures Formations Using Artificial Neural Networks
【24h】

Prediction of Lost Circulation Prior to Drilling for Induced Fractures Formations Using Artificial Neural Networks

机译:利用人工神经网络钻探诱导骨折形成前损失循环预测

获取原文
获取外文期刊封面目录资料

摘要

Lost circulation is a complicated problem to be predicted with conventional statistical tools. As the drilling environment is getting more complicated nowadays, more advanced techniques such as artificial neural networks (ANNs) are required to help to estimate mud losses prior to drilling. The aim of this work is to estimate mud losses for induced fractures formations prior to drilling to assist the drilling personnel in preparing remedies for this problem prior to entering the losses zone. Once the severity of losses is known, the key drilling parameters can be adjusted to avoid or at least mitigate losses as a proactive approach. Lost circulation data were extracted from over 1500 wells drilled worldwide. The data were divided into three sets; training, validation, and testing datasets. 60% of the data are used for training, 20% for validation, and 20% for testing. Any ANN consists of the following layers, the input layer, hidden layer(s), and the output layer. A determination of the optimum number of hidden layers and the number of neurons in each hidden layer is required to have the best estimation, this is done using the mean square of error (MSE). A supervised ANNs was created for induced fractures formations. A decision was made to have one hidden layer in the network with ten neurons in the hidden layer. Since there are many training algorithms to choose from, it was necessary to choose the best algorithm for this specific data set. Ten different training algorithms were tested, the Levenberg-Marquardt (LM) algorithm was chosen since it gave the lowest MSE and it had the highest R-squared. The final results showed that the supervised ANN has the ability to predict lost circulation with an overall R-squared of 0.925 for induced fractures formations. This is a very good estimation that will help the drilling personnel prepare remedies before entering the losses zone as well as adjusting the key drilling parameters to avoid or at least mitigate losses as a proactive approach. This ANN can be used globally for any induced fractures formations that are suffering from the lost circulation problem to estimate mud losses. As the demand for energy increases, the drilling process is becoming more challenging. Thus, more advanced tools such as ANNs are required to better tackle these problems. The ANN built in this paper can be adapted to commercial software that predicts lost circulation for any induced fractures formations globally.
机译:丢失的循环是用常规统计工具预测的复杂问题。当钻井环境变得更加复杂时,需要更先进的技术,例如人工神经网络(ANNS),以帮助在钻井前估计泥浆损失。这项工作的目的是在钻探之前估计诱导骨折形成的泥浆损失,以帮助钻井人员在进入损失区域之前为这个问题做准备解决方案。一旦已知损失的严重程度,可以调整关键钻井参数以避免或至少减轻损耗作为主动方法。丢失的循环数据从全世界钻出的1500多个井中提取。数据分为三组;培训,验证和测试数据集。 60%的数据用于培训,验证20%,测试20%。任何ANN由以下层,输入层,隐藏层和输出层组成。确定每个隐藏层中的隐藏层的最佳数量和每个隐藏层中的神经元数是最佳估计,这是使用误差(MSE)的均线进行的。为诱导的骨折形成而产生了监督的Ann。决定在网络中具有一个隐藏层,隐藏层中有十个神经元。由于有许多培训算法可供选择,因此有必要为此特定数据集选择最佳算法。测试了十种不同的训练算法,选择了Levenberg-Marquardt(LM)算法,因为它给出了最低的MSE,并且它具有最高的R线。最终结果表明,监督ANN能够预测遗传循环,诱导骨折形成为0.925的整体R平方。这是一个非常好的估计,可以帮助钻探人员在进入损失区域之前准备补救措施,以及调整关键钻探参数以避免或至少减轻损失作为主动方法。该ANN可以全球用于任何诱导的骨折形成,患有丢失的循环问题估计泥浆损失。随着对能源的需求增加,钻井过程变得越来越具有挑战性。因此,需要更先进的工具,例如ANNS,以更好地解决这些问题。本文建立的ANN可以适用于商业软件,预测全球任何诱导骨折形成的损失。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号