Artificial Neural Network ANN Approach to Predict Fracture Pressure

S AbdulmalekAhmed, S. Elkatatny, Abdulwahab Ali, A. Abdulraheem, M. Mahmoud
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引用次数: 8

Abstract

Fracture pressure is a critical formation condition that affects efficiency and economy of drilling operations. The knowledge of the fracture pressure is significant to control the well. It will assist in avoiding problems associated with drilling operation and decreasing the cost of drilling operation. It is essential to predict fracture pressure accurately prior to drilling process to prevent various issues for example fluid loss, kicks, fracture the formation, differential pipe sticking, heaving shale and blowouts. Many models are used to estimate the fracture pressure either from log information or formation strengths. However, these models have some limitations such as some of the models can only be used in clean shales, applicable only for the pressure generated by under-compaction mechanism and some of them are not applicable in unloading formations. Few papers used artificial intelligence (AI) to estimate the fracture pressure. In this work, a real filed data that contain only the real time surface drilling parameters were utilized by artificial neural network (ANN) to predict the fracture pressure. The results indicated that artificial neural network (ANN) predicted the fracture pressures with an excellent precision where the coefficient of determination (R2) is greater than 0.99. In addition, the artificial neural network (ANN) was compared with other fracture pressure models such as Matthews and Kelly model, which is one of the most used models in the prediction of the fracture pressure in the field. Artificial neural network (ANN) model outperformed the fracture models by a high margin and by its simple prediction of fracture pressure where it can predict the fracture pressure from only the real time surface drilling parameters, which are easily available.
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基于人工神经网络的裂缝压力预测方法
裂缝压力是影响钻井作业效率和经济性的关键地层条件。了解裂缝压力对井的控制具有重要意义。它将有助于避免与钻井作业相关的问题,并降低钻井作业的成本。在钻井之前准确预测压裂压力至关重要,以防止各种问题,例如漏液、井涌、地层破裂、差压钻杆卡钻、页岩隆起和井喷。根据测井信息或地层强度估算裂缝压力的模型有很多。然而,这些模型也存在一定的局限性,如有些模型仅适用于清洁页岩,有些模型仅适用于欠压实机制产生的压力,有些模型不适用于卸载地层。很少有论文使用人工智能(AI)来估计裂缝压力。利用仅包含实时地面钻井参数的真实现场数据,利用人工神经网络(ANN)对裂缝压力进行预测。结果表明,人工神经网络(ANN)预测断裂压力具有良好的精度,其决定系数(R2)大于0.99。此外,将人工神经网络(ANN)与马修斯(Matthews)、凯利(Kelly)等其他裂缝压力模型进行了比较,后者是目前现场应用最多的裂缝压力预测模型之一。人工神经网络(ANN)模型在预测裂缝压力方面优于传统的裂缝模型,而且其预测裂缝压力简单,仅根据实时的地面钻井参数即可预测裂缝压力,这很容易获得。
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