S. Borozdin, A. Dmitrievsky, N. Eremin, A. Arkhipov, A. Sboev, O. Chashchina-Semenova, L. Fitzner
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引用次数: 0
摘要
本文提出并解决了利用人工智能方法对地质和技术测量站的大量地质数据进行处理,以识别和预测钻井过程中的复杂问题。钻井期间,来自地质和技术测量站的大量地质数据从单位到数十tb不等。利用机器学习方法实现油井建设生命周期的数字化现代化,有助于提高油气井的钻井效率。对钻井过程中用于测量参数的各种来源和类型的传感器的大量地理数据进行了聚类。在利用人工神经网络创建、训练和应用软件组件的过程中,达到了规定的计算精度,揭示了大量地质、地球物理、技术和工艺参数中隐藏的和不明显的规律。为了预测钻井作业效果,采用人工智能方法建立了分类模型。高性能计算集群的使用大大减少了评估并发症概率和提前7-10分钟预测这些概率所花费的时间。利用SQL server (Microsoft)建立了一个分层分布式数据仓库,以WITSML格式存储实时钻井数据。用于预处理和上传地理数据到WITSML存储库的模块使用Energistics Standards DevKit API和Energistic数据对象来处理WITSML格式的地理数据。该系统已达到钻井问题预测精度,可显著减少用于消除卡钻、泥浆漏失和油气流入事件的非生产时间。
Drilling Problems Forecast Based on Neural Network
This paper poses and solves the problem of using artificial intelligence methods for processing big volumes of geodata from geological and technological measurement stations in order to identify and predict complications during well drilling. Big volumes of geodata from the stations of geological and technological measurements during drilling varied from units to tens of terabytes. Digital modernization of the life cycle of well construction using machine learning methods contributes to improving the efficiency of drilling oil and gas wells. The clustering of big volumes of geodata from various sources and types of sensors used to measure parameters during drilling has been carried out. In the process of creating, training and applying software components with artificial neural networks, the specified accuracy of calculations was achieved, hidden and non-obvious patterns were revealed in big volumes of geological, geophysical, technical and technological parameters. To predict the operational results of drilling wells, classification models were developed using artificial intelligence methods. The use of a high-performance computing cluster significantly reduced the time spent on assessing the probability of complications and predicting these probabilities for 7-10 minutes ahead. A hierarchical distributed data warehouse has been formed, containing real-time drilling data in WITSML format using the SQL server (Microsoft). The module for preprocessing and uploading geodata to the WITSML repository uses the Energistics Standards DevKit API and Energistic data objects to work with geodata in the WITSML format. Drilling problems forecast accuracy which has been reached with developed system may significantly reduce non-productive time spent on eliminating of stuck pipe, mud loss and oil and gas influx events.