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Designing neural networks for the prediction of the drilling parameters for Kuwait oil and gas fields.

机译:设计神经网络以预测科威特油气田的钻井参数。

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In this study a new methodology was developed to predict the drilling parameters using the Artificial Neural Network. Three models were developed to predict bit type, rate of penetration (ROP), and cost-per-foot (cost/ft), respectively.; The prediction of bit type and other drilling parameters from the current available data is an important criterion in selecting the most cost efficient bit. History of bit runs plays an important factor in bit selection and bit design. Based on field data, the selection of bit type can be accomplished by the use of a neural network as an alternative bit selection method.; Three drilling parameters were modeled with data from different fields located in Kuwait. Results show that the drilling parameters of the new well can be predicted with the neural network models developed from the previous wells, a cost efficient alternative.
机译:在这项研究中,开发了一种新的方法来使用人工神经网络预测钻井参数。开发了三种模型来分别预测钻头类型,钻速(ROP)和每英尺成本(cost / ft)。根据当前可用数据预测钻头类型和其他钻探参数,是选择最具成本效益的钻头的重要标准。钻头行程的历史在钻头选择和钻头设计中起着重要的作用。根据现场数据,可以通过使用神经网络作为替代的位选择方法来完成位类型的选择。使用来自科威特不同领域的数据对三个钻井参数进行了建模。结果表明,新井的钻井参数可以使用以前的井开发的神经网络模型进行预测,这是一种经济高效的选择。

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