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首页> 外文期刊>Journal of Petroleum Exploration and Production Technology >Drilling data quality improvement and information extraction with case studies
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Drilling data quality improvement and information extraction with case studies

机译:钻探数据质量改进和信息提取与案例研究

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Data analytics is a process of data acquiring, transforming, interpreting, modelling, displaying and storing data with an aim of extracting useful information, so that decision-making, actions executing, events detecting and incidents managing can be handled in an efficient and certain manner. However, data analytics also meets some challenges, for instance, data corruption due to noises, time delays, missing and external disturbances, etc. This paper focuses on data quality improvement to cleanse, improve and interpret the post-well or real-time data to preserve and enhance data features, like accuracy, consistency, reliability and validity. In this study, laboratory data and field data are used to illustrate data issues and show data quality improvements with using different data processing methods. Case study clearly demonstrates that the proper data quality management process and information extraction methods are essential to carry out an intelligent digitalization in oil and gas industry.
机译:数据分析是数据获取,转换,解释,建模,显示和存储数据的过程,其目的是提取有用信息,从而可以以有效且某种方式处理决策,执行执行,事件检测和事件管理。但是,数据分析也符合某些挑战,例如,由于噪音,时间延迟,缺失和外部干扰等数据损坏等。本文侧重于清洁,改进和解释后井或实时数据的数据质量改善保护和增强数据功能,如准确性,一致性,可靠性和有效性。在本研究中,实验室数据和现场数据用于说明数据问题并使用不同的数据处理方法显示数据质量改进。案例研究清楚地表明,适当的数据质量管理流程和信息提取方法对于在石油和天然气行业进行智能数字化至关重要。

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