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首页> 外文期刊>Egyptian journal of petroleum >Cuttings transport modeling in underbalanced oil drilling operation using radial basis neural network
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Cuttings transport modeling in underbalanced oil drilling operation using radial basis neural network

机译:径向基神经网络在欠平衡石油钻井作业中的岩屑运移建模

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Underbalanced drilling is one of the drilling methods for better drilling according to its advantages. Cuttings transport effects on cost, time, and quality of oil/gas wells in drilling operation. Inefficient cleaning of wellbore may cause many drilling problems. Prediction and measuring of the cleaning efficiency in the wellbore annulus is a complex problem according to many effective factors. The field and experimental measurements of this parameter are time consuming and costly. This paper presents the radial basis function network (RBFN) method for prediction of cuttings concentration in underbalanced drilling condition to avoid the high cost experimental and field measurements. The average absolute percent relative error (AAPE) for train and test datasets in this study is 2.9e-13%, and 5.7% for the RBFN model. The comparison results of this study with literature review show the benefit of RBFN in prediction compared to back propagation neural network (BPNN) according to higher accuracy, faster training and simple network architecture. So, this network can be used in many mathematical problems for prediction and estimation instead of BPNN. Results of this study show that implementation of this developed model can be incorporated in drilling simulators for accurate estimation of cuttings concentration in wellbore instead of field and experimental measurements for hydraulic design in drilling operation.
机译:根据其优点,欠平衡钻孔是一种更好的钻孔方法。钻屑运输对钻探作业中油/气井的成本,时间和质量有影响。井筒清洁效率低下可能会导致许多钻井问题。根据许多有效因素,预测和测量井眼环空中的清洁效率是一个复杂的问题。该参数的现场和实验测量既费时又费钱。本文提出了一种径向基函数网络(RBFN)方法来预测欠平衡钻井条件下的钻屑浓度,从而避免了昂贵的实验和现场测量。在本研究中,训练和测试数据集的平均绝对相对误差百分比(AAPE)为2.9e-13%,而RBFN模型为5.7%。这项研究与文献综述的比较结果表明,与反向传播神经网络(BPNN)相比,RBFN具有更高的准确性,更快的训练速度和更简单的网络架构,因此在预测中具有优势。因此,该网络可以代替BPNN在许多数学问题中用于预测和估计。这项研究的结果表明,该开发模型的实现可以并入钻井模拟器中,以准确估算井眼中的钻屑浓度,而无需进行钻井作业中水力设计的现场和实验测量。

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