通过基于集成的机器学习快速完成决策

Han Xue, R. Malpani, Shivam Agrawal, T. Bukovac, A. Mahesh, T. Judd
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引用次数: 3

摘要

随着高分辨率水力裂缝几何形状预测和后续产量预测方法的出现,通过基于科学的正演建模来表征页岩产量并评估完井设计的经济性成为可能。然而,由于模型到设计的周转周期较慢,实现基于模拟的工作流程来优化设计以跟上现场作业计划仍然是最大的挑战。该项目的目标是将基于集成学习的模型概念应用于该问题,并且为了完井设计的目的,我们将以数值模型为中心的非常规工作流程总结为一个过程,该过程最终将井台(多个水平分支)的产量建模为完井设计参数的函数。在代理模型的开发、验证和分析完成后,该模型可以用于预测模式,以响应油藏/完井管理团队提出的“假设”问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast-Track Completion Decision Through Ensemble-Based Machine Learning
With the advent of high-resolution methods to predict hydraulic fracture geometry and subsequent production forecasting, characterization of productive shale volume and evaluating completion design economics through science-based forward modeling becomes possible. However, operationalizing a simulation-based workflow to optimize design to keep up with the field operation schedule remains the biggest challenge owing to the slow model-to-design turnaround cycle. The objective of this project is to apply the ensemble learning-based model concept to this issue and, for the purpose of completion design, we summarize the numerical-model-centric unconventional workflow as a process that ultimately models production from a well pad (of multiple horizontal laterals) as a function of completion design parameters. After the development and validation and analysis of the surrogate model is completed, the model can be used in the predictive mode to respond to the "what if" questions that are raised by the reservoir/completion management team.
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