首页> 外文会议>SPE Kingdom of Saudi Arabia Annual Technical Symposium and Exhibition >A Business Intelligence Approach to Maximize Value of l-Field Data by Managing Data Quality
【24h】

A Business Intelligence Approach to Maximize Value of l-Field Data by Managing Data Quality

机译:通过管理数据质量来最大限度地提高L-Field数据价值的商业智能方法

获取原文

摘要

With the advent of I-filed (Intelligent Field) data and the increasing volume of various data sources, reservoir simulation engineers aim and work on capitalizing on all of those data-in addition to the regular monthly averages. Due to the time scale variation and data frequency, a tool is needed to assist engineers to maximize the value from the data sets and at the same time ensure accuracy and representativeness of the simulation input. This paper discusses a workflow that utilizes Business Intelligence capabilities to compare both data sets, the I-field and monthly averages, and visually identify the anomalies. Several issues can be recognized in and between the data sets that arc of different sources and timescales, which will create a struggle for simulation engineers to synchronize both data sets and select the reliable data source to be incorporated into the simulation model, especially when they are working on I-fields where they will be represented with two sets of data. The developed workflow capitalizes on Business Intelligence functionalities that will use an equation to compare the data sets against each other and represent the results in charts to graphically identify the discrepancies. Since the average monthly measurements are stored in monthly format and daily measurements, I-field real-time data, are stored in daily format, the workflow will transform the daily measurements format to match the monthly measurements before the comparison. The workflow will assist simulation engineers to QC (Quality Check) the large sets of data automatically and graphically by locating the areas to focus on in the data, which will reduce human errors, the time needed to examine the data sets and the time needed to alter the format of the daily measurements. Simulation engineers need to QC the data sets before they are integrated into the simulation model to enhance the quality of the model, produce accurate results and reduce the time for simulation engineers to manage the data quality. There are many methods to manage data quality; however, Business Intelligence offers a wide range of data acquisition and mining techniques for QCing. This paper will present how these techniques are used to enhance and streamline the process of data QC for the monthly and daily measurements.
机译:随着I-exed(智能领域)数据的出现和各种数据源的数量,水库模拟工程师的旨在利用所有这些数据的旨在除了正常的每月平均值。由于时间尺度变化和数据频率,需要一种工具来帮助工程师从数据集中最大化值,同时确保模拟输入的精度和代表性。本文讨论了一个使用商业智能功能来比较数据集,I字段和每月平均值的工作流程,并在视觉上识别异常。可以在数据集之间识别几个问题,这些问题是不同源和时间尺的弧形,这将为模拟工程师创建斗争,以同步两个数据集并选择要结合到模拟模型中的可靠数据源,尤其是当它们时在I-Fields上工作,在那里他们将以两组数据表示。开发的工作流程利用商业智能功能,将使用等式将数据集与彼此进行比较,并表示图表中的结果以图形识别差异。由于平均每月测量以每月格式存储,并且每日测量,I字段实时数据,以日常格式存储,工作流程将转换日常测量格式以匹配比较前的每月测量。工作流程将通过定位在数据中专注于数据的区域来帮助模拟工程师对QC(质量检查)自动和以图形方式为基础,这将减少人为错误,检查数据集所需的时间和所需的时间改变日常测量的格式。仿真工程师需要QC数据集在集成到仿真模型之前,以增强模型的质量,产生准确的结果,减少模拟工程师管理数据质量的时间。有许多方法可以管理数据质量;但是,商业智能提供了广泛的数据采集和挖掘技术。本文将介绍这些技术如何用于增强和简化每月和日测量的数据QC过程。

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