Satellite Fields Digitalization & ALS Optimization with EDGE & Advance Analytics Application

Nitin Johri, N. Pandey, S. Kadam, S. Vermani, Shubham Agarwal, Debashis Gupta
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引用次数: 0

Abstract

Data monitoring in remote satellite field without any DOF platform is a challenging task but critical for ALS monitoring and optimization. In SRP wells the VFD data collection is important for analysis of downhole pump behavior and system health. SRP maintenance crew collects data from VFDs daily, but it is time consuming and can target only few wells in a day. The steps from requirement of dyna to final decision taken for ALS optimization are mobilizing team, permits approvals, download data, e-mail dynacards, dyna visualization, final decision. The problems with above process were: - Insufficient and discrete data for any post-failure analysis or ALS-optimization Minimal data to investigate the pre failure events The lack of real time monitoring was resulting in well downtime and associated production loss. The combination of IOT, Cloud Computing and Machine learning was implemented to shift from the reactive to proactive approach which helped in ALS Optimization and reduced production loss. The data was transmitted to a Cloud server and further it was transmitted to web-based app. Since thousands of Dynacards are generated in a day, hence it requires automated classification using computer driven pattern recognition techniques. The real time data is used for analysis involving basic statistic and Machine learning algorithms. The critical pump signatures were identified using machine learning libraries and email is generated for immediate action. Several informative dashboards were developed which provide quick analysis of ALS performance. The types of dashboard are as below Well Operational Status Dynacards Interpretation module SRP parameters visualization Machine Learning model calibration module Pump Performance Statistics After collection of enough data and creation of analytical dashboards on the three wells using domain knowledge the gained insights were used for ALS optimization. To keep the model in an evergreen high-confidence prediction state, inputs from domain experts are often required. After regular fine-tuning the prediction accuracy of the ML model increased to 80-85 %. In addition, system was made flexible so that a new algorithm can be deployed when required. Smart Alarms were generated involving statistic and Machine Learning by the system which gives alerts by e-mail if an abnormal behavior or erratic dynacards were identified. This helped in reduction of well downtime in some events which were treated instinctively before. The integration of domain knowledge and digitalization enables an engineer to take informed and effective decisions. The techniques discussed above can be implemented in marginal fields where DOF implementation is logistically and economically challenged. EDGE along with advanced analytics will gain more technological advances and can be used in other potential domains as well in near future.
卫星场数字化和ALS优化与EDGE和先进的分析应用程序
在没有任何自由度平台的遥感卫星现场进行数据监测是一项具有挑战性的任务,但对ALS监测和优化至关重要。在SRP井中,VFD数据的收集对于分析井下泵的行为和系统的健康状况非常重要。SRP维护人员每天都会从vfd中收集数据,但这非常耗时,而且每天只能针对几口井。从dyna的需求到ALS优化的最终决策的步骤是动员团队,许可审批,下载数据,电子邮件动态卡片,dyna可视化,最终决策。上述过程存在以下问题:失效后分析或als优化的数据不足且离散,调查失效前事件的数据最少,缺乏实时监控导致油井停工和相关的生产损失。将物联网、云计算和机器学习相结合,实现了从被动到主动的转变,有助于ALS优化并减少生产损失。数据被传输到云服务器,并进一步传输到基于web的应用程序。由于每天生成数千个Dynacards,因此需要使用计算机驱动的模式识别技术进行自动分类。实时数据用于涉及基本统计和机器学习算法的分析。使用机器学习库识别关键泵签名,并生成电子邮件以立即采取行动。开发了几个信息仪表板,提供ALS性能的快速分析。仪表板的类型如下:井况动态卡解释模块SRP参数可视化机器学习模型校准模块泵性能统计在收集了足够的数据并使用领域知识创建了三口井的分析仪表板后,获得的见解用于ALS优化。为了使模型保持常绿的高置信度预测状态,通常需要领域专家的输入。经过定期微调,ML模型的预测精度提高到80- 85%。此外,系统具有灵活性,可以在需要时部署新的算法。智能警报由系统生成,涉及统计和机器学习,如果识别出异常行为或不稳定的动态表,则通过电子邮件发出警报。这有助于减少一些事故的停机时间,而这些事故以前都是凭直觉处理的。领域知识和数字化的集成使工程师能够做出明智和有效的决策。上面讨论的技术可以在边缘油田实施,在这些油田中,DOF的实施在后勤和经济上都受到挑战。在不久的将来,EDGE和高级分析技术将获得更多的技术进步,并可用于其他潜在的领域。
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