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Bit Selection Optimization Using Artificial Intelligence Systems

机译:使用人工智能系统进行位选择优化

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摘要

Optimizing bit selection is one of the main challenges in drilling opera tions. Bit selection is based on the recorded performance of similar bits from offset wells. There are too many parameters intervening in drilling bit selection. Therefore, developing a logical relationship between them to assist in proper bit selection is extremely necessary and complicated though. In such a case, artificial neural networks (ANNs) have proven to be helpful in recognizing the complex relationship between variables. In this new approach, two models are developed with high proficiency using ANNs. The first model provides appropriate drilling bit selection based on the desired rate of penetration (ROP) to be obtained by applying specific drilling parameters. The second model uses proper drilling parameters obtained from an optimizing procedure to select the drilling bit that provides the maximum achievable rate of penetration. Genetic algorithms (GAs), as a class of optimizing methods for complex functions, are applied to help bit optimization and its related drilling parameters. With the given data sets, these new models predicted successfully the bit types and the optimum drilling parameters. The correlation coefficients for the predicted bit types and optimum drilling parameters in testing the obtained networks are 0.96 and 0.86, respectively. MATLAB software was used to perform ANN and GA solutions.
机译:优化钻头选择是钻井作业中的主要挑战之一。位的选择是基于记录的来自偏移井的相似位的性能。选择太多参数干扰钻头的选择。因此,建立它们之间的逻辑关系以辅助正确的位选择是极其必要和复杂的。在这种情况下,人工神经网络(ANN)已被证明有助于识别变量之间的复杂关系。在这种新方法中,使用人工神经网络开发了两个熟练的模型。第一个模型基于所需的钻速(ROP),通过应用特定的钻削参数获得合适的钻头选择。第二个模型使用从优化过程中获得的合适的钻井参数来选择能够提供最大可穿透速度的钻头。遗传算法(GA)是一类复杂功能的优化方法,可用于帮助优化钻头及其相关的钻削参数。利用给定的数据集,这些新模型成功地预测了钻头类型和最佳钻井参数。在测试获得的网络时,预测钻头类型和最佳钻井参数的相关系数分别为0.96和0.86。 MATLAB软件用于执行ANN和GA解决方案。

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