AbstractThe intensity of the flow accelerated corrosion (FAC) process depends on a great number of parameters with a complicated effect on each other. The use of an intellectual neural network (INN) to solve the FAC prediction problem makes it possible to estimate the mutual effects from all the factors involved, to identify the essential properties of the information obtained, and, ultimately, to improve the accuracy of prediction without determining the whole range of dependences among a great deal of factors on which the FAC process depends. An approach is proposed to the creation and training of an optimal neural network for the NPP piping FAC rate prediction problem. Matlab software was used to develop an intellectual neural network to...
Knowledge of how the presence of a bend can change the flow patterns of a gas–liquid mixture is impo...
Corrosion defect assessment becoming a forte issue in pipeline reliability assessment to accurately ...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
AbstractThe intensity of the flow accelerated corrosion (FAC) process depends on a great number of p...
This paper summarizes the results of various attempts to implement a neural network for solving corr...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
The contribution deals with the use of artificial neural networks for prediction of steel atmospheri...
The contribution deals with the use of artificial neural networks for prediction of steel atmospheri...
This paper uses neural network to predict corrosion rate. Corrosion can not modeled easily, because ...
Abstract: Artificial neural network is used to model INCONEL 718 in this paper. The model accounts f...
AbstractFlow through piping components are more complex than that of straight pipe and the hydrodyna...
Knowledge of how the presence of a bend can change the flow patterns of a gas–liquid mixture is impo...
Knowledge of how the presence of a bend can change the flow patterns of a gas–liquid mixture is impo...
Corrosion defect assessment becoming a forte issue in pipeline reliability assessment to accurately ...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
AbstractThe intensity of the flow accelerated corrosion (FAC) process depends on a great number of p...
This paper summarizes the results of various attempts to implement a neural network for solving corr...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
Corrotion is one of the problems that must be considered in the metal pipe installation because it c...
The contribution deals with the use of artificial neural networks for prediction of steel atmospheri...
The contribution deals with the use of artificial neural networks for prediction of steel atmospheri...
This paper uses neural network to predict corrosion rate. Corrosion can not modeled easily, because ...
Abstract: Artificial neural network is used to model INCONEL 718 in this paper. The model accounts f...
AbstractFlow through piping components are more complex than that of straight pipe and the hydrodyna...
Knowledge of how the presence of a bend can change the flow patterns of a gas–liquid mixture is impo...
Knowledge of how the presence of a bend can change the flow patterns of a gas–liquid mixture is impo...
Corrosion defect assessment becoming a forte issue in pipeline reliability assessment to accurately ...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...