首页> 外文会议>ASME international conference on ocean, offshore and arctic engineering >DRILLING DATA QUALITY MANAGEMENT: CASE STUDY WITH A LABORATORY SCALE DRILLING RIG
【24h】

DRILLING DATA QUALITY MANAGEMENT: CASE STUDY WITH A LABORATORY SCALE DRILLING RIG

机译:钻井数据质量管理:实验室规模钻井平台的案例研究

获取原文

摘要

Drilling industry operations heavily depend on digital information. Data analysis is a process of acquiring, transforming, interpreting, modelling, displaying and storing data with an aim of extracting useful information, so that the decision-making, actions executing, events detecting and incident managing of a system can be handled in an efficient and certain manner. This paper aims to provide an approach to understand, cleanse, improve and interpret the post-well or realtime data to preserve or enhance data features, like accuracy, consistency, reliability and validity. Data quality management is a process with three major phases. Phase I is an evaluation of pre-data quality to identify data issues such as missing or incomplete data, non-standard or invalid data and redundant data etc. Phase Ⅱ is an implementation of different data quality managing practices such as filtering, data assimilation, and data reconciliation to improve data accuracy and discover useful information. The third and final phase is a post-data quality evaluation, which is conducted to assure data quality and enhance the system performance. In this study, a laboratory-scale drilling rig with a control system capable of drilling is utilized for data acquisition and quality improvement. Safe and efficient performance of such control system heavily relies on quality of the data obtained while drilling and its sufficient availability. Pump pressure, top-drive rotational speed, weight on bit, drill string torque and bit depth are available measurements. The data analysis is challenged by issues such as corruption of data due to noises, time delays, missing or incomplete data and external disturbances. In order to solve such issues, different data quality improvement practices are applied for the testing. These techniques help the intelligent system to achieve better decision-making and quicker fault detection. The study from the laboratory-scale drilling rig clearly demonstrates the need for a proper data quality management process and clear understanding of signal processing methods to carry out an intelligent digitalization in oil and gas industry.
机译:钻井行业运营依赖于数字信息。数据分析是通过提取有用信息的目的获取,转换,解释,建模,显示和存储数据的过程,从而可以在高效地处理决策,执行执行,事件检测和事件管理系统和某种方式。本文旨在提供一种理解,清洁,改进和解释后井或实时数据的方法,以保护或增强数据特征,如准确性,一致性,可靠性和有效性。数据质量管理是一个三个主要阶段的过程。阶段I是对预数据质量的评估,以识别数据问题,例如缺失或不完整的数据,非标准或无效数据和冗余数据等。阶段Ⅱ是不同数据质量管理实践的实现,如过滤,数据同化,和数据对帐,以提高数据准确性并发现有用的信息。第三个和最终阶段是数据后质量评估,以确保数据质量并增强系统性能。在该研究中,利用能够钻探的控制系统进行实验室型钻机,用于数据采集和质量改进。这种控制系统的安全有效性能严重依赖于钻井时获得的数据质量及其足够的可用性。泵压,顶部驱动的转速,钻头上的重量,钻弦扭矩和位深度可获得测量。由于噪声,时间延迟,缺失或不完整的数据和外部干扰,诸如数据损坏等问题挑战的数据分析。为了解决这些问题,应用了不同的数据质量改进实践进行测试。这些技术有助于智能系统实现更好的决策和更快的故障检测。实验室规模钻机的研究清楚地表明了需要适当的数据质量管理流程,并清楚地了解信号处理方法,以开展石油和天然气行业的智能数字化。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号