2024
DOI: 10.1002/cjce.25358
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A HAZOP of dust explosion testing and explosibility modelling using artificial neural networks

Mohammad Alauddin,
Paul Amyotte,
Anton Schrader
et al.

Abstract: This work presents artificial neural network (ANN) models to determine explosion severity parameters (e.g., maximum explosion pressure and maximum rate of pressure rise) of given dust samples. ANN‐based models for explosibility parameters are presented for carbon black, zinc, urea, and oat grain flour dust samples based on data generated in a 20‐L explosion chamber. The optimal hyper‐parameters of the models have been explored using the Broyden–Fletcher–Goldfarb–Shanno, stochastic gradient descent, and Adam so… Show more

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