학술논문

Machine learning prediction of BLEVE loading with graph neural networks.
Document Type
Article
Source
Reliability Engineering & System Safety. Jan2024, Vol. 241, pN.PAG-N.PAG. 1p.
Subject
Language
ISSN
0951-8320
Abstract
• Introduces a novel Graph Neural Network (GNN) model for predicting BLEVE event overpressure. • Handles spatial-temporal dynamics, offering comprehensive blast loading predictions. • Demonstrates versatility and adaptability of BGN to various BLEVE scales. • Outperforms existing machine learning and CFD approaches in terms of efficiency and accuracy. In this paper, we propose an innovative machine learning approach for predicting overpressure wave propagation generated by Boiling Liquid Expanding Vapor Explosion (BLEVE) using Graph Neural Networks (GNNs). The accurate prediction of BLEVE overpressure wave propagation is critical for effective risk assessment, mitigation, and emergency response planning. Traditional simulation methods, such as Computational Fluid Dynamics (CFD), provide comprehensive insights into BLEVE phenomena but often pose significant computational demands, thus challenging for real-time or large-scale applications. While existing machine learning models have demonstrated efficiency and accuracy in overpressure prediction, they fall short in providing full-field spatiotemporal predictions of pressure wave propagations, essential for comprehensive blast simulations. Our GNN-based approach addresses these limitations by leveraging the micro-level representation learning capabilities of GNNs with an autoregressive prediction scheme. The results from numerical data show that GNN can predict BLEVE overpressure wave propagations accurately and with significantly less computational effort compared to traditional CFD simulations. Compared with existing machine learning models, GNN attains much higher temporal resolution in pressure-time history prediction, while maintaining comparable accuracy. Moreover, the GNN model demonstrates superior generalizability to unseen data when input parameters are extrapolated from the training range. This research highlights the potential of GNNs as a promising advancement in blast loading prediction, providing a more efficient and effective risk management strategy to enhance the reliability and safety of blast-related systems. [ABSTRACT FROM AUTHOR]