预测深水井异常出砂的机器学习工作流程

Mustafa Can Kara, Malina Majeran, Bret Peterson, Tom Wimberly, G. Sinclair
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引用次数: 0

摘要

深水井中砂粒从储层进入生产系统的风险很高。出砂是一个常见的操作问题,它会导致潜在的设备损坏,从而导致产品污染。过度的砂蚀会导致井下设备(水下阀门、节流器、弯管等)的管腔堵塞,导致水下设备的维护成本每年高达数百万美元。在这项工作中,建立了一个可扩展的机器学习(ML)模型,可以轻松访问传感器和仿真数据的历史和实时馈报,以开发预测解决方案。部署的工作流可以在重大损坏发生之前通知控制室操作员。部署了异常检测体系结构,这是一种用于维护分析的通用无监督学习框架。异常检测模型包括降维范围内的方法。利用主成分分析(PCA)和长短期记忆(LSTM)自编码器对原始输入进行重构来解决问题。在工作流程中,通过批量训练计算阈值,并随异常错误分数实时传递。当实时异常评分超过批量训练时计算的阈值时,会触发告警。ML输出几乎实时地流线到数据库。在这项研究中,部署的ML模型的性能以墨西哥湾深水井为基准,该井已知经常发生出砂。ML模型架构可以处理OSI PI历史记录捕获的数据,提前预测异常出砂事件,并且可以扩展到墨西哥湾的其他井。从这项研究中可以看出,简化的机器学习架构和输出简化了陆上和海上业务单元的探索性数据分析和模型部署。此外,出砂相关方可以提前得到通知,在井口或井下设备发生重大损坏之前采取早期缓解措施,而不是对海上可能发生的出砂事件做出反应。所使用的机器学习算法和过程的新颖之处在于,它能够通过机器学习批量训练提前预测出出砂异常,推断出接近实时的预测值,并扩展到其他资产。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Workflow to Predict Anomalous Sanding Events in Deepwater Wells
Deepwater wells possess a high risk of sand escaping the reservoir into the production systems. Sand production is a common operational issue which results in potential equipment damage and hence product contamination. Excessive sand erosion causes blockage in tubulars and cavities in downhole equipment (subsea valves, chokes, bends etc.), resulting in maintenance costs for subsea equipment that adds up to millions of dollars yearly to operators. In this work, a scalable Machine Learning (ML) model readily accessing historical and real-time feed of sensor and simulation data is built to develop a predictive solution. Deployed workflow can inform Control Room Operators before significant damage occurs. An anomaly detection architecture, a common unsupervised learning framework for maintenance analytics, is deployed. Anomaly detection models include methods within the scope of dimensionality reduction. Principle Component Analysis (PCA) and Long Short-Term Memory (LSTM) Autoencoders are deployed to tackle the problem through reconstruction of the original input. During the workflow, a threshold is calculated after batch training and passed along with anomaly error scores in real-time. An alarm is triggered once the real-time anomaly score passes the threshold calculated during batch training. ML outputs are streamlined in near real-time to the database. In this study, deployed ML model performance is benchmarked against a GOM Deepwater well where sanding is known to occur often. The ML Model architecture can process data that is captured by OSI PI historian, predict anomalous sanding events in advance, and is shown to be scalable to other wells in GOM. It is noted from this study that streamlined ML architecture and outputs simplify exploratory data analysis and model deployment across Onshore and Offshore Business Units. In addition, sanding stakeholders are notified in advance and can take early mitigative action before significant damage to wellhead or downhole equipment occurs instead of reacting to a possible sanding event offshore. The novelty of the utilized ML algorithm and process is in the ability to predict sanding anomalies in advance through ML batch training, infer prediction values near real-time, and scale to other assets.
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