【24h】

Improving Data Quality in WITS ML Data

机译:提高WITS ML数据中的数据质量

获取原文

摘要

Data quality issues have for many decades been a problem for drilling data. To some extent, development of data transfer standards has helped out in achieving better data quality and data transport. In the early stages of WITSML, poor data quality was a concern and in this paper we will be looking at various steps that have been taken to improve data quality. Sensor technology has improved a lot in recent years with fieldbus options which allow for remote calibration and diagnostic. In addition calibration routines are streamlined and range checks can be implemented at point of acquisition. The data acquisition software now has some inbuilt quality control to addresses errors in manual data input. In addition we have developed software at the rig-site that will perform several data quality checks in the database. After acquisition, the data is converted and transferred to a central hosted WITSML 1.4.1.1 server. Here several applications will perform data quality assurance on the data, e.g. to check for data gaps. In addition the data flow is monitored 24/7 from an operation center before data is consumed by several applications. We have been working closely with one operator for several years to improve processes in WITSML data deliveries. To ensure there is an agreement of what data is expected to be delivered, this company has established electronic order forms that will be sent to us for quality check before the section starts. In addition this operator has developed a sophisticated data quality monitoring system that will produce KPI scores linked to the SLA. Some results from research in using statistics to uncover abnormal sensor response in acquired data will also be presented. Statistic will show how data quality is improving while the amount of data is acquired from one rig is increasing year by year.
机译:数据质量问题多十年来钻取数据的问题。在某种程度上,数据传输标准的发展有助于实现更好的数据质量和数据传输。在WITSML的早期阶段,数据质量差是一个关注的问题,本文我们将看出已采取的各种步骤来提高数据质量。近年来,传感器技术在现场总线选项允许远程校准和诊断方面提高了很多。另外,校准例程被简化,并且可以在采集点实施范围检查。数据采集​​软件现在具有一些内置质量控制来解决手动数据输入中的错误。此外,我们在钻机站点开发了软件,该软件将在数据库中执行多个数据质量检查。获取后,将数据转换并传输到中央托管Witsml 1.4.1.1服务器。这里有几个应用程序将对数据进行数据质量保证,例如,检查数据差距。此外,在多个应用程序消耗数据之前,从操作中心监视数据流程的24/7。我们一直与一个运营商密切合作数年时间以改进WITSML数据交付的流程。为确保有望交付哪些数据的协议,这家公司已建立在该部分开始之前将向我们发送给我们的电子订单表格。此外,此操作员开发了一种复杂的数据质量监控系统,可以生成与SLA相关的KPI分数。还将呈现来自使用统计数据来揭示收购数据中的异常传感器响应的一些结果。统计数据将显示数据质量如何改善,而从一台钻机获取的数据量逐年增加。

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