2024
DOI: 10.1108/hff-10-2023-0655
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Prediction of the minimum fluidization velocity of different biomass types by artificial neural networks and empirical correlations

Thenysson Matos,
Maisa Tonon Bitti Perazzini,
Hugo Perazzini

Abstract: Purpose This paper aims to analyze the performance of artificial neural networks with filling methods in predicting the minimum fluidization velocity of different biomass types for bioenergy applications. Design/methodology/approach An extensive literature review was performed to create an efficient database for training purposes. The database consisted of experimental values of the minimum fluidization velocity, physical properties of the biomass particles (density, size and sphericity) and characteristics … Show more

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