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Development of Artificial Neural Networks To Predict Differential Pipe Sticking in Iranian Offshore Oil Fields

机译:人工神经网络的发展,预测伊朗海上油田的差异管卡死

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Differential sticking is known to be influenced by drilling fluid properties and other parameters, such as the characteristics of rock formations. In the past, multivariate statistical analysis techniques and simulated sticking testes using different drilling fluids have been performed to identify and modify parameters that lead to differential pipe sticking in order to minimize or prevent sticking. Recently, an application of neural network methodology to predict differential pipe sticking incidents in Gulf of Mexico has been published by Halliburton1. This paper presents two different types of artificial neural network that can provide solutions for problems associated with differential pipe sticking. A stuck pipe database was developed with data from 64 side tracked and horizontal wells drilled in reservoir section using oil based and synthetic drilling fluid from different fields in the Persian Gulf. Two three-layers feed forward networks; Multi Layer Perceptron (MLP) and Radial Basis Functions (RBF) with back propagation training algorithm were used to develop stuck pipe predictive models for oil base and synthetic drilling fluid together. Using these models, prediction of the probability of stuck pipe may be undertaken to monitor drilling operations for stuck pipe avoidance. A sensitivity analysis was also done by applying data of different fields separately to identify the parameters that had more effect on tendency to differential pipe sticking. The proposed methodology can be used for optimum drilling fluid design during well development in Persian Gulf, Offshore Iran.
机译:众所周知,差速器粘滞受钻井液性质和其他参数(例如岩层的特征)的影响。过去,已经进行了使用不同钻井液的多元统计分析技术和模拟黏附睾丸,以识别和修改导致差异管黏附的参数,从而最大程度地减少或防止黏附。最近,Halliburton1发表了将神经网络方法应用于预测墨西哥湾的差异管道粘连事件的应用。本文提出了两种不同类型的人工神经网络,它们可以为与差分管卡塞相关的问题提供解决方案。利用来自波斯湾不同油田的油基和合成钻井液,利用在储层段钻探的64口侧向和水平井的数据,开发了一个管卡数据库。两个三层前馈网络;使用带有反向传播训练算法的多层感知器(MLP)和径向基函数(RBF)来共同开发油基和合成钻井液的卡钻预测模型。使用这些模型,可以进行卡钻概率的预测,以监视钻井作业以避免卡钻。还通过分别应用不同字段的数据来进行灵敏度分析,以识别对差异管道粘滞趋势影响更大的参数。拟议的方法可用于伊朗海上波斯湾的钻井开发过程中的最佳钻井液设计。

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