基于动态模拟的柱塞举升气井生产诊断改进数据挖掘

Jianjun Zhu, Guangqiang Cao, Wei Tian, Qingqi Zhao, Haiwen Zhu, Jie Song, Jianlin Peng, Zimo Lin, Hong-quan Zhang
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引用次数: 6

摘要

柱塞举升技术已广泛应用于非常规气井中,用于清除井筒积液。生产监控提供了大量生产过程和正常、异常操作的数据,可用于机器学习(ML)和人工智能(AI),开发异常诊断和操作优化算法。然而,在监测数据中,大部分与日常运行有关,故障案例的数据很少。此外,故障案例可能不可重复,并且许多故障案例签名在发生之前是不可用的。为了提高机器学习模型的准确性,需要大量的异常案例数据。柱塞举升过程的动态模拟提供了另一种方法来生成特定异常的合成数据,用于训练ML模型。它还有助于更好地了解监测数据所反映的趋势及其根本原因。根据配备柱塞举升的气井的监测数据,可以分析正常和异常情况下生产系统不同点不同参数的同时测量结果,并识别相应的趋势/特征。可以获得符合预先确定的异常模式的典型特征。使用商用瞬态多相流模拟器,可以通过调整过程匹配油管/套管压力的实际现场数据。通过调整油藏动态、柱塞参数或地面管道边界条件,改进动态柱塞举升模型需要反复试验,以便与生产数据很好地吻合。在不同流动条件下进行验证后,可以通过进行参数研究生成各种操作和流动条件的合成数据集。与现场数据不同,动态模拟的合成数据主要包括异常特征(如油管破裂、柱塞未到达等),可以将其添加到ML数据池中,以减少数据协方差,增加独立性。
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Improved Data Mining for Production Diagnosis of Gas Wells with Plunger Lift through Dynamic Simulations
Plunger lift has been widely used in unconventional gas wells to remove liquid accumulation from the well.. Production surveillance provides large amount of data of production process and normal and abnormal operations, which can be used in machine learning (ML) and Artificial Intelligence (AI) to develop algorithms for anomaly diagnosis and operation optimization. However, in the surveillance data the majority is related to daily operation and the data of failure cases are rare. Also the failure cases may not be repeatable and many failure case signatures are not available until they happen. Large data size of anomaly cases are needed to improve the ML model accuracy. Dynamic simulation of the plunger lift process offers an alternative way to generate synthetic data on the specified anomalies to be used to train the ML model. It also helps better understand the trends reflected in the surveillance data and their root causes. From the available surveillance data of gas wells equipped with plunger lift, the simultaneous measurements of different parameters at different points in a production system with normal and abnormal occurrences can be analyzed and the correspondent trends/signatures can be identified. The typical signatures that conform to pre-determined anomalous patterns can be obtained. Using a commercial transient multiphase flow simulator, the actual field data of tubing/casing pressures can be matched through a tuning process. Trial-and-error is needed to improve the dynamic plunger lift model so that a good agreement with the production data can be achieved by adjusting the reservoir performance, plunger parameters or surface pipeline boundary conditions. Following the validation under different flow conditions, synthetic datasets for various operational and flow conditions can be generated by performing parametric studies. Unlike the field data, the synthetic data from the dynamic simulations mainly comprise anomaly signatures (e.g. tubing rupture, missed arrival of plunger, etc.), which can be added to the ML data pool to reduce the data covariance and increase independency.
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