Successful Implementation of Artificial Intelligence and Machine Learning in Multiphase Flow Smart Proxy Modeling: Two Case Studies of Gas-Liquid and Gas-Solid CFD Models

A. Ansari, S. S. H. Boosari, S. Mohaghegh
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引用次数: 7

Abstract

It is almost impossible to solve the modern fluid flow problems without the use of Computational Fluid Dynamics (CFD). In petroleum industry, flow simulations assist engineers to develop the most efficient well design and it is essential to understand the multiphase flow details. However, despite the high accuracy, performing the numerical simulation fall short in providing the required results in timely manner. This article presents two case studies of Smart Proxy Models (SPM) utilizing artificial intelligence (AI) and Machine Learning (ML) techniques to appraise the behavior of the chaotic system and predict the dynamic features including pressure, velocity and the evolution of phase fraction within the process at each time-step at a much lower run time. Proposed cases concentrate on 2-D dam-break and 3-D fluidized bed problems, using OpenFOAM and MFiX, CFD software applications, respectively. This paper focuses on building and improving the artificial neural network (ANN) models characterized by feedforward back propagation method and Levenberg-Marquardt algorithm (LMA). Each case study contains multiple scenarios to gradually enhance the model capabilities to forecast the dynamic parameters. Results for both cases indicate that 8-10 hours of computational time for running CFD simulation, reduces to a few minutes when is done by developed AI-based models along with less than 10% error for entire process.
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人工智能和机器学习在多相流智能代理建模中的成功实现——以气-液和气-固CFD模型为例
不使用计算流体动力学(CFD)几乎不可能解决现代流体流动问题。在石油工业中,流动模拟可以帮助工程师开发最有效的井设计,并且对于了解多相流的细节至关重要。然而,尽管进行数值模拟的精度很高,但在及时提供所需结果方面存在不足。本文介绍了智能代理模型(SPM)的两个案例研究,该模型利用人工智能(AI)和机器学习(ML)技术来评估混沌系统的行为,并在更低的运行时间内预测过程中每个时间步的动态特征,包括压力,速度和相分数的演变。建议的案例集中于二维溃坝和三维流化床问题,分别使用OpenFOAM和MFiX, CFD软件应用程序。本文主要研究以前馈-反传播法和Levenberg-Marquardt算法(LMA)为特征的人工神经网络模型的建立和改进。每个案例研究包含多个场景,逐步增强模型预测动态参数的能力。两种情况下的计算结果表明,运行CFD模拟的计算时间从8-10小时缩短到基于人工智能模型的几分钟,整个过程的误差小于10%。
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