For an accurate prediction of the porosity of a liquid-solid homogenous fluidized bed, various empirical prediction models have been developed. Symbolic regression machine learning techniques are suitable for analyzing experimental fluidization data to produce empirical expressions for porosity as a function not only of fluid velocity and viscosity but also of particle size and shape. On the basis of this porosity, it becomes possible to calculate the specific surface area for reactions for seeded crystallization in a fluidized bed.Complex Fluid ProcessingSanitary Engineerin
Liquid-solid fluidisation is frequently encountered in drinking water treatment processes, often to ...
Acidizing, a very common stimulation process, is generally initiated when near wellbore formation da...
Machine learning (ML) methods were developed and optimized for description and understanding a physi...
For an accurate prediction of the porosity of a liquid-solid homogenous fluidized bed, various empir...
In full-scale drinking water production plants in the Netherlands, central softening is widely used ...
In drinking water treatment plants, multiphase flows are a frequent phenomenon. Examples of such flo...
Softening at drinking water treatment plants is often realised by fluidised bed pellet reactors. Gen...
In the present investigation, bed porosity and solid holdup in viscous three-phase inverse fluidized...
The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized b...
Colloid transport through a porous medium changes geometrical and hydraulic properties of the pore s...
Various modeling techniques have been applied to analyze fluidized-bed granulation process. Influenc...
For drinking water treatment applications, it is possible to predict the external porosity of an exp...
The introduction of redundant independent variables into any function approximation model, or the ne...
The hydrodynamics of a gas–solid fluidized bed (FB) is affected by the bubble diameter, which in tu...
One of the most popular and frequently used models for describing homogeneous liquid-solid fluidised...
Liquid-solid fluidisation is frequently encountered in drinking water treatment processes, often to ...
Acidizing, a very common stimulation process, is generally initiated when near wellbore formation da...
Machine learning (ML) methods were developed and optimized for description and understanding a physi...
For an accurate prediction of the porosity of a liquid-solid homogenous fluidized bed, various empir...
In full-scale drinking water production plants in the Netherlands, central softening is widely used ...
In drinking water treatment plants, multiphase flows are a frequent phenomenon. Examples of such flo...
Softening at drinking water treatment plants is often realised by fluidised bed pellet reactors. Gen...
In the present investigation, bed porosity and solid holdup in viscous three-phase inverse fluidized...
The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized b...
Colloid transport through a porous medium changes geometrical and hydraulic properties of the pore s...
Various modeling techniques have been applied to analyze fluidized-bed granulation process. Influenc...
For drinking water treatment applications, it is possible to predict the external porosity of an exp...
The introduction of redundant independent variables into any function approximation model, or the ne...
The hydrodynamics of a gas–solid fluidized bed (FB) is affected by the bubble diameter, which in tu...
One of the most popular and frequently used models for describing homogeneous liquid-solid fluidised...
Liquid-solid fluidisation is frequently encountered in drinking water treatment processes, often to ...
Acidizing, a very common stimulation process, is generally initiated when near wellbore formation da...
Machine learning (ML) methods were developed and optimized for description and understanding a physi...