首页> 外文会议>SPE Deepwater Drilling and Completions Conference >Drilling Optimization:Utilizing Lifetime Prediction to Improve Drilling Performance and Reduce Downtime
【24h】

Drilling Optimization:Utilizing Lifetime Prediction to Improve Drilling Performance and Reduce Downtime

机译:钻井优化:利用寿命预测来提高钻井性能并减少停机时间

获取原文

摘要

The capability to optimize drilling performance by predicting the life of drilling components is integral to preventing costly downhole tool failures and ensuring success of any drilling operation.Drilling tools are subject to various parameters such as vibration,temperature,revolutions per minute(RPM)and torque.These parameters can greatly fatigue even the most robust tool depending on the where and how the tool is operated.As a result,there is a need to predict time to failure of components operating in a downhole drilling environment.Analyzing operational data,inclusive of the parameters above,prior to or during maintenance actions and before starting drilling jobs,provides unique insight into how to improve the drilling performance of tools and to reduce downtime.Life prediction provides a cutting-edge way to identify precursors to costly failures in the field and enables proactive guidance during maintenance periods for parts which may otherwise have been disregarded strictly on maintenance procedures. Statistical models that relate operating environment to the component life and are derived from failure data of fielded components,introduce a new way to optimize the efficiency of drilling tools.Utilizing lifetime prediction to optimize drilling performance is a groundbreaking methodology developed to determine life of components operating in benign and harsh drilling environments by incorporating statistical aspects such as those caused because of variation in operating stress and maintenance upgrades.Since the algorithm utilizes field data,the need for costly laboratory experiments are also eliminated.Each model developed is unique to the specified part and can be calibrated for the best fit.In this methodology,a Bayesian-based model selection technique is developed that incorporates operating environment variables after each successful drilling run to dynamically select a model that gives the best survival probability for that component.Dynamic model selection ensures maximum utilization of a component,while avoiding failure to improve the overall reliability of the tool while in the field.The paper describes the methodology used to estimate the life of components in drilling systems by employing operational data,drilling dynamics and historical information.
机译:通过预测钻井部件的寿命来优化钻井性能的能力是不可或缺的,以防止昂贵的井下工具故障,并确保任何钻孔操作的成功。滴答工具受到各种参数,例如振动,温度,每分钟转速(RPM)和扭矩。这些参数可以大大疲劳,即使是最强大的工具,也可以根据工具的Where和方式运行。结果,需要预测在井下钻井环境中运行的部件失败的时间。分析运营数据,包括上面的参数,在维护行动之前和在开始钻井作业之前,提供了独特的深入了解如何提高工具的钻井性能并减少停机时间.Life预测提供了一种尖端的方法来识别现场昂贵的故障的前兆并且在维护期间能够主动指导,否则可能严格忽视m AIntance程序。将操作环境与部件寿命相关并导出的统计模型引入了用于优化钻孔工具的效率的新方法。illize寿命预测优化钻井性能是一种开发的,用于确定操作的部件寿命的开发方法在良性和恶劣的钻井环境中通过合并统计方面,例如由于操作应力和维护升级的变化而导致的统计方面。算法利用现场数据,还消除了对昂贵的实验室实验的需求。所开发的模型对指定部分是独一无二的并且可以校准最佳拟合。在此方法中,开发了一种基于贝叶斯的模型选择技术,该技术在每个成功的钻井运行后结合了操作环境变量,以动态选择一个为该组件提供最佳生存概率的模型.Dynamic模型选择确保最大利才组件的zation,同时避免未能提高工具的整体可靠性,而在该领域。纸张描述了通过采用运营数据,钻探动力学和历史信息来估算钻井系统中组件寿命的方法。

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