图神经网络用于领域划分,以预测二维挡板流系统中的非理想混合区域

IF 3 Q2 ENGINEERING, CHEMICAL Digital Chemical Engineering Pub Date : 2024-04-27 DOI:10.1016/j.dche.2024.100155
John White, Jacob M. Miller, R. Eric Berson
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引用次数: 0

摘要

本文提出了一种新颖的方法,通过采用图形神经网络(GNN)来应对预测流动特征的计算挑战,该网络能够熟练预测流动域值。传统的计算流体动力学(CFD)模拟虽然有效,但往往需要大量的计算资源和时间,这限制了其在时间敏感型场景和优化研究中的适用性,因此有必要进行广泛的案例研究。研究的主要目的是评估在二维障板流动系统生成的图形上采用节点分类法的可行性,以根据相对流体年龄对域进行分割。第二个目标是比较 CFD 模拟所需的计算时间和网络推理所需的时间,以量化利用网络所实现的效率提升。结果表明,利用图卷积网络进行域分割以预测滞留和旁通区域具有很大的潜力。在单挡板和双挡板情况下,GNN 预测再循环区域的准确率分别达到了 97% 和 92%,在高雷诺数情况下表现尤为突出。重要的是,所提出的基于 GNN 的方法减少了 2100% 以上的计算时间,显著提高了效率。本文的研究结果凸显了采用图卷积网络进行流动特征预测的前景,与传统的 CFD 模拟相比,该方法可大幅提高计算效率。
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Graph Neural Network for domain segmentation to predict regions of non-ideal mixing in two-dimensional baffle flow systems

This paper presents a novel approach to address computational challenges in predicting flow features by employing a Graph Neural Network (GNN), which is proficient in predicting flow domain values. Traditional Computational Fluid Dynamics (CFD) simulations, although effective, often require substantial computational resources and time, limiting their applicability in time-sensitive scenarios and optimization studies necessitating extensive case studies. The main objective was to evaluate the feasibility of employing node classification on a graph generated from a 2D baffle flow system to segment the domain based on relative fluid age. A second objective was to compare the computational time required for CFD simulations with the inference time of the network to quantify the efficiency gains achieved by utilizing the network. Results demonstrate the potential of utilizing graph convolutional networks for domain segmentation to predict regions of holdup and bypass. The GNN achieved 97% and 92% accuracy in predicting recirculation regions in single and double baffle cases, particularly excelling in high Reynolds number scenarios. Importantly, the proposed GNN-based approach reduces computation time by over 2100%, showcasing significant efficiency gains. Results here highlight the promise of employing graph convolutional networks for flow feature prediction, offering substantial computational efficiency improvements over traditional CFD simulations.

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