油田化学

降阶模型混合化学、机器学习进行水性质分析

本文提出了一系列基于机器学习的降阶模型,这些模型根据严格的第一原理热力学模拟结果进行训练,以提取物理化学性质。

预测产出水特性的 Web 应用程序原型。
图 1 - 预测产出水特性的 Web 应用程序原型。
SPE 213869。

水几乎影响着勘探和生产行业的每一项作业。到目前为止,需要耗时的实验室测试或繁琐的第三方模拟器来提取物理化学特性。在完整的论文中,提出了一系列基于机器学习的降阶模型(ROM),这些模型是根据严格的第一原理热力学模拟结果进行训练的。所开发的可预测水特性的 ROM 可实现自动化决策并改进水管理工作流程。

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原文链接/jpt
Oilfield chemistry

Reduced-Order Models Blend Chemistry, Machine Learning for Water-Property Analysis

This paper presents a family of machine-learning-based reduced-order models trained on rigorous first-principle thermodynamic simulation results to extract physicochemical properties.

Prototype of the Web application that predicts produced-water properties.
Fig. 1—Prototype of the Web application that predicts produced-water properties.
SPE 213869.

Water affects almost every operation in the exploration and production industry. Until now, time-intensive laboratory tests or cumbersome third-party simulators were required to extract physicochemical properties. In the complete paper, a family of machine-learning-based reduced-order models (ROMs) trained on rigorous first-principle thermodynamic simulation results is presented. The developed ROMs that predict water properties enable automated decision-making and improve water-management work flows.

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