Agent Tuning & Optimization 相关度: 5/10

Surrogate models for Rock-Fluid Interaction: A Grid-Size-Invariant Approach

Nathalie C. Pinheiro, Donghu Guo, Hannah P. Menke, Aniket C. Joshi, Claire E. Heaney, Ahmed H. ElSheikh, Christopher C. Pain
arXiv: 2602.22188v1 发布: 2026-02-25 更新: 2026-02-25

AI 摘要

论文提出了一种网格尺寸不变的代理模型,用于预测多孔介质中的流体流动。

主要贡献

  • 开发网格尺寸不变的代理模型框架
  • 比较UNet和UNet++在代理模型中的性能,证明UNet++更优
  • 验证网格尺寸不变方法在降低训练内存消耗方面的有效性

方法论

使用神经网络压缩和预测,构建降阶模型(ROM)和单神经网络模型,并提出网格尺寸不变特性。

原文摘要

Modelling rock-fluid interaction requires solving a set of partial differential equations (PDEs) to predict the flow behaviour and the reactions of the fluid with the rock on the interfaces. Conventional high-fidelity numerical models require a high resolution to obtain reliable results, resulting in huge computational expense. This restricts the applicability of these models for multi-query problems, such as uncertainty quantification and optimisation, which require running numerous scenarios. As a cheaper alternative to high-fidelity models, this work develops eight surrogate models for predicting the fluid flow in porous media. Four of these are reduced-order models (ROM) based on one neural network for compression and another for prediction. The other four are single neural networks with the property of grid-size invariance; a term which we use to refer to image-to-image models that are capable of inferring on computational domains that are larger than those used during training. In addition to the novel grid-size-invariant framework for surrogate models, we compare the predictive performance of UNet and UNet++ architectures, and demonstrate that UNet++ outperforms UNet for surrogate models. Furthermore, we show that the grid-size-invariant approach is a reliable way to reduce memory consumption during training, resulting in good correlation between predicted and ground-truth values and outperforming the ROMs analysed. The application analysed is particularly challenging because fluid-induced rock dissolution results in a non-static solid field and, consequently, it cannot be used to help in adjustments of the future prediction.

标签

代理模型 神经网络 流体流动 多孔介质 网格尺寸不变性

arXiv 分类

cs.LG cs.AI physics.flu-dyn