A fusing NS with NN model for the consequence prediction of vapor cloud explosion

Shennan Zhou, Zhongqi Wang*, Qizhong Li

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

7 Citations (Scopus)

Abstract

Vapor cloud explosions (VCEs) have been considered as a major hazard in petrochemical industry, accompanying with wide-ranging impact and huge destruction. The existing methods are incapable to make a rapid and accurate estimation when considering multi-factor coupling effects. Therefore, this study proposed a novel methodology of fusing numerical simulation (NS) with neural network (NN) technique for the prediction of explosion consequences. First, 6 parameters of VCEs influencing overpressure are selected as variables of a database. A CFD method is employed for simulating VCEs in a chemical site, by which sufficient blast data are generated. After the architecture of a NN model is determined, data on three generic VCEs are extracted for further model training process. A progressive training method is adopted to develop a general prediction model. Furthermore, data derived from ongoing simulation results are imported into the model for its constant self-improvement. The output of the well-trained model is subsequently transformed into a probabilistic function to assess the domino effect. The integrating NS with NN approach provides an accurate and efficient way to predict the blast effects, which can support more scientific rescue decision-making. Finally, the proposed model is applied to a case study for illustration.

Original languageEnglish
Pages (from-to)698-710
Number of pages13
JournalProcess Safety and Environmental Protection
Volume149
DOIs
Publication statusPublished - May 2021

Keywords

  • Domino effect assessment
  • Neural network (NN)
  • Numerical simulation (NS)
  • Peak pressure prediction
  • Vapor cloud explosion (VCE)

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