In this work, a convolutional neural network combined with a long short-term memory model (CNN-LSTM) is employed to predict the mixing and segregation behaviors in a bidisperse solid-liquid fluidized bed (SLFB). The data set comes from the CFD-DEM simulations under a range of superficial inlet velocities vl and size ratios dl/ds and includes detailed particle information in different temporal and spatial dimensions. The CNN-LSTM model uses CNN to preprocess the original data, and then the output of CNN is regarded as the input of the LSTM model for model training. Two scenarios are considered: (1) varied vl under the same dl/ds; (2) varied dl/ds under the same vl. The training effects of LSTM and CNN-LSTM models are compared using loss func...
Circulating fluidized bed (CFB)-based co-pyrolysis is a promising technology for producing synthetic...
In fluidized bed systems, particle properties (e.g., particle diameter, Reynolds number) are acknowl...
In this work, we studied the coupling of CFD simulation with machine learning models, by using a lar...
In this paper, the capability of combined use of computational fluid dynamics (CFD) and data-based d...
Computational fluid dynamics (CFD) has evolved into a vital tool for advancing bubbling fluidized-be...
A neural network was used to model experimental fluidisation data - bubble size and velocity - from...
Computational fluid dynamics (CFD) is an effective tool to investigate biomass fast pyrolysis in flu...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
The following dataset contains DEM simulation data on multiple material properties and operational p...
Segregated flow, including stratified and annular flows, is commonly encountered in several practica...
The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized b...
In light of the little understanding of the hydrodynamics of multicomponent particle beds involving ...
Binary mixtures of particles of same size but of different densities are fluidized in a 15cm diamete...
Accurate characterization of two phase bubbly flows is crucial in many industrial processes such as ...
The potential of artificial neural networks as a tool to classify and identify a change in the flow ...
Circulating fluidized bed (CFB)-based co-pyrolysis is a promising technology for producing synthetic...
In fluidized bed systems, particle properties (e.g., particle diameter, Reynolds number) are acknowl...
In this work, we studied the coupling of CFD simulation with machine learning models, by using a lar...
In this paper, the capability of combined use of computational fluid dynamics (CFD) and data-based d...
Computational fluid dynamics (CFD) has evolved into a vital tool for advancing bubbling fluidized-be...
A neural network was used to model experimental fluidisation data - bubble size and velocity - from...
Computational fluid dynamics (CFD) is an effective tool to investigate biomass fast pyrolysis in flu...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
The following dataset contains DEM simulation data on multiple material properties and operational p...
Segregated flow, including stratified and annular flows, is commonly encountered in several practica...
The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized b...
In light of the little understanding of the hydrodynamics of multicomponent particle beds involving ...
Binary mixtures of particles of same size but of different densities are fluidized in a 15cm diamete...
Accurate characterization of two phase bubbly flows is crucial in many industrial processes such as ...
The potential of artificial neural networks as a tool to classify and identify a change in the flow ...
Circulating fluidized bed (CFB)-based co-pyrolysis is a promising technology for producing synthetic...
In fluidized bed systems, particle properties (e.g., particle diameter, Reynolds number) are acknowl...
In this work, we studied the coupling of CFD simulation with machine learning models, by using a lar...