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Artificial Neural Network Model for Prediction of Drilling Rate of Penetration and Optimization of Parameters

机译:人工神经网络模型的钻进速率预测及参数优化。

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摘要

According to field data, there are several methods to reduce the drilling cost of new wells. One of these methods is the optimization of drilling parameters to obtain the maximum available rate of penetration (ROP). There are too many parameters affecting on ROP like hole cleaning (including drillstring rotation speed (2V), mud rheology, weight on bit (WOB) and floundering phenomena), bit tooth wear, formation hardness (including depth and type of formation), differential pressure (including mud weight) and etc. Therefore, developing a logical relationship among them to assist in proper ROP selection is extremely necessary and complicated though. In such a case, Artificial Neural Networks (ANNs) is proven to be helpful in recognizing complex connections between these variables. In literature, there were various applicable models to predict ROP such as Bourgoyne and Young's model, Bingham model and the modified Warren model. It is desired to calculate and predict the proper model of ROP by using the above models and then verify the validity of each by comparing with the field data. To optimize the drilling parameters, it is required that an appropriate ROP model to be selected until the acceptable results are obtained. An optimization program will optimize the drilling parameters which can be used in future works and also leads us to more accurate time estimation. The present study is optimizing the drilling parameters, predicting the proper penetration rate, estimating the drilling time of the well and eventually reducing the drilling cost for future wells.
机译:根据现场数据,有几种方法可以降低新井的钻井成本。这些方法之一是优化钻井参数以获得最大可用的钻速(ROP)。影响ROP的参数太多,例如井眼清洁(包括钻柱转速(2V),泥浆流变学,钻头重量(WOB)和晃动现象),钻头齿磨损,地层硬度(包括地层深度和类型),差异因此,在它们之间建立逻辑关系以帮助正确选择ROP是极为必要和复杂的。在这种情况下,人工神经网络(ANN)被证明有助于识别这些变量之间的复杂联系。在文献中,有各种适用的模型可以预测ROP,例如Bourgoyne和Young模型,Bingham模型和修正的Warren模型。期望通过使用以上模型来计算和预测ROP的适当模型,然后通过与现场数据进行比较来验证每个模型的有效性。为了优化钻井参数,要求选择合适的ROP模型,直到获得可接受的结果为止。优化程序将优化可在将来的工作中使用的钻井参数,并使我们更准确地估算时间。本研究正在优化钻井参数,预测合适的渗透率,估算井的钻井时间并最终降低未来井的钻井成本。

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