The capability of hydrodynamic cavitation (HC) of degrading organic pollutants in water effluents is evaluated through the implementation of an Artificial Neural Network (ANN) analysis. Thanks to the construction and training of a multilayer ANN, the energy efficiency of the process has been correlated to measurable variables. These last have been accurately chosen in order to propose a novel modeling approach in the field of HC water treatment. One of the main peculiarity of the proposed model is to choose the ANN input neurons among both operating variables and physical-chemical characteristics of the pollutants. In this way, a powerful tool for prediction, op...
Filtration is an important process in drinking water treatment to ensure the adequate removal of par...
A reliable model for any Wastewater Treatment Plant WWTP is essential in order to provide a tool for...
Part 8: Water Monitoring SystemsInternational audienceThis communication presents the main aim, cont...
The water industry is facing increased pressure to produce higher quality treated water at a lower c...
The Ultrasound technology is proven to be effective for destroying organic pollutants in...
The aim of the present study is to implement an useful approach to predict and on-line monitoring th...
grantor: University of TorontoThis study examined the application of artificial neural net...
Increasingly wider application of artificial neural networks (ANN) in researches and analyses of uni...
Identification of cavitating regime is an important issue in a wide range of fluid dynamic systems. ...
"The definitive peer-reviewed and edited version of this article is published in Journal of Hydroinf...
Industrial processes generate large quantities of waste, resulting in health problems and adverse en...
The article deals with the influence of the amount of water consumption by one consumer per hour of ...
A new generic approach to improve computational efficiency of certain processes in numerical environ...
An artificial neural network (ANN) and kinetic-based models for a pilot scale vacuum gas oil (VGO) h...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
Filtration is an important process in drinking water treatment to ensure the adequate removal of par...
A reliable model for any Wastewater Treatment Plant WWTP is essential in order to provide a tool for...
Part 8: Water Monitoring SystemsInternational audienceThis communication presents the main aim, cont...
The water industry is facing increased pressure to produce higher quality treated water at a lower c...
The Ultrasound technology is proven to be effective for destroying organic pollutants in...
The aim of the present study is to implement an useful approach to predict and on-line monitoring th...
grantor: University of TorontoThis study examined the application of artificial neural net...
Increasingly wider application of artificial neural networks (ANN) in researches and analyses of uni...
Identification of cavitating regime is an important issue in a wide range of fluid dynamic systems. ...
"The definitive peer-reviewed and edited version of this article is published in Journal of Hydroinf...
Industrial processes generate large quantities of waste, resulting in health problems and adverse en...
The article deals with the influence of the amount of water consumption by one consumer per hour of ...
A new generic approach to improve computational efficiency of certain processes in numerical environ...
An artificial neural network (ANN) and kinetic-based models for a pilot scale vacuum gas oil (VGO) h...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
Filtration is an important process in drinking water treatment to ensure the adequate removal of par...
A reliable model for any Wastewater Treatment Plant WWTP is essential in order to provide a tool for...
Part 8: Water Monitoring SystemsInternational audienceThis communication presents the main aim, cont...