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Minimum Fluidization Velocities of Binary Solid Mixtures: Empirical Correlation and Genetic Algorithm‐Artificial Neural Network Modeling

Sudipta Let, Nirjhar Bar, Ranjan Kumar Basu, Sudip Kumar Das

2021Chemical Engineering & Technology20 citationsDOI

Abstract

Abstract Experimental investigation of the fluidization behavior in single and binary solid‐liquid fluidized beds of nonspherical particles as solid phase and water as liquid phase was performed in a Perspex column. Different particle sizes were used to prepare single and binary mixtures with different weight ratios for fluidization. Minimum fluidization velocity increased with increasing average particle size and decreasing sphericity for the binary mixture. An empirical correlation was developed to predict the minimum fluidization velocity. Genetic algorithm‐artificial neural network (GA‐ANN) modeling was applied to predict the minimum fluidization velocity for single and binary solid‐liquid fluidized beds. The application of GA‐ANN analysis leads to designing binary solid‐liquid fluidization systems without experimentation.

Topics & Concepts

FluidizationSphericityBinary numberMaterials scienceArtificial neural networkPhase (matter)Particle (ecology)Fluidized bedThermodynamicsChromatographyMathematicsChemistryComputer sciencePhysicsArtificial intelligenceComposite materialGeologyOceanographyOrganic chemistryArithmeticGranular flow and fluidized bedsMineral Processing and GrindingAgricultural Engineering and Mechanization
Minimum Fluidization Velocities of Binary Solid Mixtures: Empirical Correlation and Genetic Algorithm‐Artificial Neural Network Modeling | Litcius