Hydrogen jet diffusion modeling by using physics-informed graph neural network and sparsely-distributed sensor data

08/24/2023
by   Xinqi Zhang, et al.
0

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 efficient and accurate hydrogen jet diffusion prediction by using sparsely-distributed sensor data. Graph neural network (GNN) is used to model the spatial dependency of such sensor data by using graph nodes at which governing equations describing the physical law of hydrogen jet diffusion are immediately solved. The computed residuals are then applied to constrain the training process. Public experimental data of hydrogen jet is used to compare the accuracy and efficiency between our proposed approach Physic_GNN and state-of-the-art PINN. The results demonstrate our Physic_GNN exhibits higher accuracy and physical consistency of centerline concentration prediction given sparse concentration compared to PINN and more efficient compared to OpenFOAM. The proposed approach enables accurate and robust real-time spatial consequence reconstruction and underlying physical mechanisms analysis by using sparse sensor data.

READ FULL TEXT
research
11/23/2022

Physics-informed neural networks for pathloss prediction

This paper introduces a physics-informed machine learning approach for p...
research
05/04/2020

Simulation free reliability analysis: A physics-informed deep learning based approach

This paper presents a simulation free framework for solving reliability ...
research
01/04/2021

AutoEncoder for Interpolation

In physical science, sensor data are collected over time to produce time...
research
11/22/2022

Robustness of Physics-Informed Neural Networks to Noise in Sensor Data

Physics-Informed Neural Networks (PINNs) have been shown to be an effect...
research
08/25/2022

Domain-informed graph neural networks: a quantum chemistry case study

We explore different strategies to integrate prior domain knowledge into...
research
11/04/2020

Physics-Informed Neural Network Super Resolution for Advection-Diffusion Models

Physics-informed neural networks (NN) are an emerging technique to impro...
research
11/08/2022

Care for the Mind Amid Chronic Diseases: An Interpretable AI Approach Using IoT

Health sensing for chronic disease management creates immense benefits f...

Please sign up or login with your details

Forgot password? Click here to reset