Hydrogen jet diffusion modeling by using physics-informed graph neural network and sparsely-distributed sensor data
Xinqi Zhang, Jihao Shi, Junjie Li, Xinyan Huang, Fu Xiao, Qiliang, Wang, Asif Sohail Usmani, Guoming Chen

TL;DR
This paper introduces Physic_GNN, a physics-informed graph neural network that models hydrogen jet diffusion using sparse sensor data, outperforming traditional PINNs and simulation methods in accuracy and efficiency.
Contribution
The study proposes a novel Physic_GNN approach that incorporates spatial dependencies via graph neural networks and physical laws, improving hydrogen diffusion prediction with sparse data.
Findings
Physic_GNN achieves higher accuracy than PINNs.
Physic_GNN demonstrates better physical consistency.
Physic_GNN is more computationally efficient than OpenFOAM.
Abstract
Efficient modeling of jet diffusion during accidental release is critical for operation and maintenance management of hydrogen facilities. Deep learning has proven effective for concentration prediction in gas jet diffusion scenarios. Nonetheless, its reliance on extensive simulations as training data and its potential disregard for physical laws limit its applicability to unseen accidental scenarios. Recently, physics-informed neural networks (PINNs) have emerged to reconstruct spatial information by using data from sparsely-distributed sensors which are easily collected in real-world applications. However, prevailing approaches use the fully-connected neural network as the backbone without considering the spatial dependency of sensor data, which reduces the accuracy of concentration prediction. This study introduces the physics-informed graph deep learning approach (Physic_GNN) for…
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Taxonomy
TopicsRisk and Safety Analysis · Fire Detection and Safety Systems · Air Quality Monitoring and Forecasting
