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Prediction of penetration rate in drilling operations: a comparative study of three neural network forecast methods

机译:钻井作用渗透率预测:三种神经网络预测方法的比较研究

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Optimizing purposes of the drilling process include reduction in time, saving costs, and increasing efficiency, which requires optimization of controllable variables and variables affecting the drilling process. Drilling optimization is directly related to maximizing the rate of penetration (ROP). However, estimation of ROP is difficult due to the complexity of the relationship between the variables affecting the drilling process. The main goal of this study is to develop three computational intelligence (CI)-based models including multilayer perceptron neural network optimized by backpropagation algorithm (BP-MLPNN), cascade-forward neural network optimized by backpropagation algorithm, and radial basis function neural network optimized by biogeography-based optimization algorithm (BBO-RBFNN) to estimate ROP. Also, in order to broaden the comparisons, some conventional ROP models from the literature were employed. The required data were collected from the well log unit and the final drilling reports of four drilled wells in two different oil fields in southwestern Iran. Firstly, all data were preprocessed to remove outliers; then the overall noises of the data were reduced by implementing Savitzky–Golay smoothing filter. In the next stage, nine input variables were selected during a feature selection step by combining the BP-MLPNN and NSGA-II algorithm. The results of this study showed that developed CI-based models more accurate than conventional ROP models. Also, a survey of statistical indices and graphical error tools proved that BBO-RBFNN model has the highest performance to predict ROP with values of APRE, AAPRE, RMSE and?R2?equal to ???0.603, 5.531, 0.490 and 0.948, respectively.
机译:优化钻井过程的目的包括减少时间,节省成本和提高效率,这需要优化可控变量和影响钻井过程的变量。钻井优化与最大化渗透率(ROP)直接相关。然而,由于影响钻井过程的变量与影响钻井过程之间的关系的复杂性,难以估计。本研究的主要目标是开发三种计算智能(CI)基础的模型,包括由BackPropagation算法(BP-MLPNN),级联神经网络优化的多层Perceptron神经网络,通过BackProcation算法优化,径向基函数神经网络优化通过基于生物地理的优化算法(BBO-RBFNN)来估算ROP。此外,为了拓宽比较,采用了一些来自文献的传统ROP模型。从伊朗西南部两种不同的油田中收集所需的数据和四个钻井井的最终钻井报告。首先,所有数据都被预处理以删除异常值;然后通过实施Savitzky-Golay平滑过滤器来减少数据的整体噪声。在下一阶段,通过组合BP-MLPNN和NSGA-II算法在特征选择步骤期间选择九个输入变量。该研究的结果表明,基于CI的模型比传统的ROP模型更准确。此外,对统计指数和图形误差工具的调查证明,BBO-RBFNN模型具有最高的性能,可预测APRE,AAPRE,RMSE和ΔR2的值,分别等于??? 0.603,5.531,0.490和0.948 。

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