Разработка искусственной нейронной сети для прогнозирования прихватов колонн бурильных труб

Sh.Sh. Qodirov, A. L. Shestakov
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引用次数: 3

Abstract

Stuck piping is a common problem with tremendous impact on drilling efficiency and costs in oil industry. Prediction of stuck at the stage of designing and in the process of drilling wells, minimizes the risk of the occurrence of sticking, due to the choice of the optimal method of prevention for specific geological and technical conditions. The article is devoted to the development of an artificial neural network for prediction of sticking of drill pipe columns. The paper provides a literature review of existing methods of prediction of sticks. As input data elements are used important and generalizing factors influencing the emergence of all types of sticks, which allows predicting all types of sticks of drill pipe columns. In order to increase the susceptibility of the input data to the neural network, the data elements are transformed and normalized. The type and architecture of the network, as well as its hyperparameters, are chosen by the experimental method. Assessment of the quality of the network is made by the method of k-fold cross-validation. In order to find the optimal combination of activation function with various optimizers, experimental research is carried out with the analysis of their results. The experiments were implemented in the Python programming language with KERAS, TensorFlow and Matplotlib library packages, as well as in the cloud platform Colaboratory from Google. A distinctive feature of the proposed method is that the resulting forecasting model can be easily adapted to new data, which often occurs when drilling wells in new fields.
设计一个人工神经网络来预测钻孔管支架
卡钻是石油工业中常见的问题,严重影响钻井效率和成本。在设计阶段和钻井过程中对卡钻进行预测,可以根据具体的地质和技术条件选择最佳的预防方法,从而最大限度地降低卡钻发生的风险。本文研究了一种用于预测钻杆柱卡钻的人工神经网络。本文对现有的棍棒预测方法进行了文献综述。由于输入的数据元素是影响所有类型钻杆出现的重要的和一般化的因素,因此可以预测所有类型的钻杆柱。为了提高输入数据对神经网络的敏感性,对数据元素进行了转换和归一化处理。通过实验方法选择网络的类型和结构,以及网络的超参数。通过k-fold交叉验证的方法对网络的质量进行评估。为了找到激活函数与各种优化器的最优组合,进行了实验研究,并对其结果进行了分析。实验采用Python编程语言,使用KERAS、TensorFlow和Matplotlib库包,并在Google的云平台协作实验室中实现。该方法的一个显著特点是,所得到的预测模型可以很容易地适应新数据,这在新油田钻井时经常出现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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