人工举升

机器学习优化二叠纪盆地自主 ESP 的使用

本文介绍了一个案例研究,重点介绍了机器学习算法的演示、改进和实施,以优化二叠纪盆地的多个电潜泵井。

图 1——能力实施成熟度矩阵示例。
图 1——能力实施成熟度矩阵示例。
来源:SPE 219528。

本文重点介绍了一种机器学习 (ML) 算法的演示、改进和实施,该算法用于优化二叠纪盆地的多口电潜泵(ESP) 井。全文介绍了两个由该 ML 模型驱动的自主 ESP 优化案例研究。本文讨论了每个研究中的关键经验,旨在帮助运营商在数字化转型过程中,有效实施现场作业。

数字化成熟度框架

该框架是一个双变量矩阵,阐明了能力成熟度和解决方案实施的重要里程碑(见上图1)。为了实现机器学习推理模型(MLIM)以提供设定点建议,从而优化ESP井的生产,接下来定义了能力和实施成熟度路径。

解决方案能力的成熟度

  • 测量——以及时、一致和全面的方式收集重新定义的传感器和遥测数据。
  • 优化的关键人工举升调节参数,包括 ESP 频率和井流油管压力 (FTP) 均来自 MLIM。
  • 自动化——LIM 设定点建议自主写入现场控制设备。

解决方案实施的成熟度

  • 开发——配置现场数据捕获,创建 MLIM,通过用户界面 (UI) 自主生成 ESP 频率和井 FTP 的设定点建议。
  • 展示米德兰盆地部分油井的 ML 能力。
  • 改进——通过领域专家的强化和反馈来改进 MLIM 并增强 UI。
  • 部署——在整个领域大规模分发技术并转变为核心业务。

MLIM 概述。在构建并测试成熟的数据采集环境后,自主 ESP 优化的下一步是开发 MLIM,以提供高质量的 ESP 设定点建议。之前的一篇出版物重点介绍了如何使用来自 193 口 ESP 作业井的大量数据集开发用于 ESP 优化的 ML 模型。

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Artificial lift

Machine Learning Optimizes Autonomous ESP Use in the Permian

This paper presents a case study highlighting the demonstration, refinement, and implementation of a machine-learning algorithm to optimize multiple electrical-submersible-pump wells in the Permian Basin.

Fig. 1—Example of capability-implementation maturity matrix.
Fig. 1—Example of capability-implementation maturity matrix.
Source: SPE 219528.

This paper highlights the demonstration, refinement, and implementation of a machine-learning (ML) algorithm to optimize multiple electrical-submersible-pump (ESP) wells in the Permian Basin. The complete paper presents two case studies for autonomous ESP optimization driven by this ML model. The paper discusses key learnings from each study to assist operators in their digital journey with considerations for effective field implementation.

Digital Maturity Framework

The framework is a two-variable matrix clarifying important milestones for both maturity of capability and solution implementation (Fig. 1 above). For the scope of implementing an ML inference model (MLIM) to source set-point recommendations to optimize a well producing with an ESP, the capability and implementation maturity paths are defined next.

Maturity of Solution Capability

  • Measure—Predefined sensor and telemetry data are collected in a timely, consistent, and holistic manner.
  • Optimize—Key artificial lift tuning parameters, including ESP frequency and well flowing tubing pressure (FTP) are sourced from the MLIM.
  • Automate—MLIM set-point recommendations autonomously write to field control devices.

Maturity of Solution Implementation

  • Develop—Configure field-data capture, create MLIM that autonomously generates set-point recommendations of ESP frequency and well FTP with a user interface (UI).
  • Demonstrate—Use ML capabilities on a subset of wells producing in the Midland Basin.
  • Refine—Improve the MLIM with reinforcement and feedback from domain experts and enhance UI.
  • Deploy—Distribute the technology at scale across the field and transition into core business.

MLIM Overview. After building and testing a mature data-acquisition environment, the next step in autonomous ESP optimization was to develop an MLIM to deliver high-quality ESP set‑point recommendations. A previous publication focused on developing an ML model for ESP optimization using an extensive data set from 193 ESP-operated wells.

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