The main goal of the presented work is to analyse the performance of the Multi-Layer Perceptron (MLP) neural network for flow regime classification based on sets of simulated Electrical Capacitance Tomography (ECT) data. Normalised ECT data have been used to separately train several MLPs employing various commonly used back-propagation learning algorithms, namely the Levenberg-Marquardt (LM), Quasi-Newton (QN) and Resilient-Backpropagation (RP), to classify the gas-oil flow regimes. The performances of the MLPs have been analysed based on their correct classification percentage (CCP). The results demonstrate the feasibility of using MLP, and the superiority of LM algorithm for flow regime classification based on ECT data
Electrical capacitance tomography (ECT) is a promising imaging technology of permittivity distributi...
Solid particles flow in a pipeline is a common means of transportation in industries. This is becaus...
One of the factors that significantly affects the efficiency of oil and gas industry equipment is th...
Recognition of gas-liquid flow regimes in pipelines is important in an industrial control process ...
Master's thesis in Petroleum technologyIn this thesis the k-means clustering and a neural network is...
Artificial neural networks have been used to investigate their capabilities at estimating key parame...
This paper presents novel research on the development of a generic intelligent oil fraction sensor b...
Electrical capacitance tomography has been widely used to obtain key hydrodynamic parameters of gas-...
Electrical capacitance tomography has been widely used to obtain key hydrodynamic parameters of gas-...
Abstract – In this paper, an image reconstruction algorithm for an electrical capacitance tomography...
A new approach to solve the inverse problem in electrical capacitance tomography is presented. The p...
A new approach to solve the inverse problem in electrical capacitance tomography is presented. The p...
A new approach to solve the inverse problem in electrical capacitance tomography is presented. The p...
The flooding of packed columns is accompanied by a steep increase in liquid hold-up and pressure dro...
A method for classifying flow regimes is proposed that employs a neural network with inputs of extra...
Electrical capacitance tomography (ECT) is a promising imaging technology of permittivity distributi...
Solid particles flow in a pipeline is a common means of transportation in industries. This is becaus...
One of the factors that significantly affects the efficiency of oil and gas industry equipment is th...
Recognition of gas-liquid flow regimes in pipelines is important in an industrial control process ...
Master's thesis in Petroleum technologyIn this thesis the k-means clustering and a neural network is...
Artificial neural networks have been used to investigate their capabilities at estimating key parame...
This paper presents novel research on the development of a generic intelligent oil fraction sensor b...
Electrical capacitance tomography has been widely used to obtain key hydrodynamic parameters of gas-...
Electrical capacitance tomography has been widely used to obtain key hydrodynamic parameters of gas-...
Abstract – In this paper, an image reconstruction algorithm for an electrical capacitance tomography...
A new approach to solve the inverse problem in electrical capacitance tomography is presented. The p...
A new approach to solve the inverse problem in electrical capacitance tomography is presented. The p...
A new approach to solve the inverse problem in electrical capacitance tomography is presented. The p...
The flooding of packed columns is accompanied by a steep increase in liquid hold-up and pressure dro...
A method for classifying flow regimes is proposed that employs a neural network with inputs of extra...
Electrical capacitance tomography (ECT) is a promising imaging technology of permittivity distributi...
Solid particles flow in a pipeline is a common means of transportation in industries. This is becaus...
One of the factors that significantly affects the efficiency of oil and gas industry equipment is th...