Domain adaptation based high-fidelity prediction for hydrogen-blended natural gas leakage and dispersion

IF 9 1区 工程技术 Q1 ENERGY & FUELS
Junjie Li , Zonghao Xie , Jihao Shi , Kaikai Wang , Yuanjiang Chang , Guoming Chen , Asif Sohail Usmani
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引用次数: 0

Abstract

Hydrogen blended natural gas is regarded as an important solution to facilitate the large-scale transmission and utilization of renewable hydrogen energy in the global energy transition. It is particularly susceptible to accidental leakage and dispersion due to the high leakage propensity of both hydrogen and natural gas, which may lead to significant casualties and economic losses. Deep learning approaches have been applied to high-fidelity prediction of accidental leakage and dispersion scenarios, but they exhibit low efficiency and limited generalization for large-scale emerging hydrogen energy scenarios due to the requirements of computationally intensive CFD simulations. This study proposes a domain adaptation based high-fidelity plume prediction model that integrating numerous low-fidelity Gaussian plumes to extract shared plume features, thereby enhancing efficiency and generalization with a limited number of high-fidelity CFD plumes. Numerical simulations for hydrogen blended natural gas leakage and dispersion, including CFD model and Gaussian plume model, are conducted to construct benchmark high and low-fidelity plumes. By using such datasets, the weight combination with shared features weight of λ2 = 1e-4 and low-fidelity features weight of λ1 = 1e-4, as well as the number of CFD plumes n = 16 was determined to optimize the proposed model's efficiency and generalization. A comparison between the proposed model and the state-of-the-art models was also conducted. The results demonstrate that the proposed model maintains high prediction accuracy for high-fidelity plumes while reducing CFD computation by 80 %, and surpassing the pre-trained transfer learning model. Overall, the proposed model facilitates large-scale adaptation of deep learning prediction model to various emerging hydrogen energy scenarios, effectively managing the accidental leakage and dispersion risk in renewable hydrogen systems.
基于域自适应的氢混合天然气泄漏和分散高保真预测
氢混合天然气被认为是全球能源转型中促进可再生氢能源大规模传输和利用的重要解决方案。由于氢气和天然气的高泄漏倾向,它特别容易发生意外泄漏和分散,可能导致重大的人员伤亡和经济损失。深度学习方法已经应用于意外泄漏和扩散情景的高保真预测,但由于计算密集型CFD模拟的要求,它们在大规模新兴氢能情景中表现出低效率和有限的泛化。本研究提出了一种基于域自适应的高保真羽流预测模型,该模型集成了大量的低保真高斯羽流来提取共有的羽流特征,从而在有限的高保真CFD羽流数量下提高了效率和泛化能力。采用CFD模型和高斯羽流模型对混氢天然气泄漏和扩散进行数值模拟,构建基准高保真度和低保真度羽流。利用这些数据集,确定了共享特征权重λ2 = 1e-4和低保真特征权重λ1 = 1e-4的权重组合,以及CFD羽流数n = 16,以优化模型的效率和泛化。还对所提出的模型与最先进的模型进行了比较。结果表明,该模型在保持高保真羽流预测精度的同时,将CFD计算量减少80%,并优于预训练迁移学习模型。总体而言,该模型有助于深度学习预测模型大规模适应各种新兴的氢能场景,有效管理可再生氢系统的意外泄漏和分散风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Renewable Energy
Renewable Energy 工程技术-能源与燃料
CiteScore
18.40
自引率
9.20%
发文量
1955
审稿时长
6.6 months
期刊介绍: Renewable Energy journal is dedicated to advancing knowledge and disseminating insights on various topics and technologies within renewable energy systems and components. Our mission is to support researchers, engineers, economists, manufacturers, NGOs, associations, and societies in staying updated on new developments in their respective fields and applying alternative energy solutions to current practices. As an international, multidisciplinary journal in renewable energy engineering and research, we strive to be a premier peer-reviewed platform and a trusted source of original research and reviews in the field of renewable energy. Join us in our endeavor to drive innovation and progress in sustainable energy solutions.
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