Due to wide application of styrene for production of different materials, it is considered as an important product in industry. Therefore, optimizing styrene production conditions is of great importance in petrochemical industry. In this paper, styrene production reactors of Tabriz Petrochemical Complex are modeled using Artificial Neural Network (ANN) model and Adaptive Neuro Fuzzy Inference System (ANFIS). Comparison of two models revealed that the neural networks are more reliable. The process of design and evaluation of models are carried out using industrial data which show credibility of designed models. The neural networks are designed to predict the styrene output from reactors as a function of effective input parameters on the styr...
Department of Chemical Engineering, Engineering Faculty, Ankara University, 06500, Ankara, Turkey E...
Steam reforming of hydrocarbons has been in use as the principal process for the generation of hydro...
This paper shows modeling of highly nonlinear polymerization process using the artificial neural net...
Transesterification of Jatropha curcus for biodiesel production is a kinetic control process, which ...
Abstract Light olefins, as the backbone of the chemical and petrochemical industries, are produced m...
AbstractNon-catalytic biodiesel production in supercritical methanol (SCM) and supercritical ethanol...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
Over the years, technologies for improved recovery of heavy oil have become an important part of the...
It is a challenging task to control polymerization reactor due to the complex reactions mechanism. M...
This study investigates the feasibility of using artificial neural networks (ANNs) to predict cataly...
Refinery optimisation requires accurate prediction of crucial product properties and yield of desir...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...
An artificial neural network (ANN) and kinetic-based models for a pilot scale vacuum gas oil (VGO) h...
Machine learning through artificial neural networks have emerged as vital tools to predict chemical ...
Department of Chemical Engineering, Engineering Faculty, Ankara University, 06500, Ankara, Turkey E...
Department of Chemical Engineering, Engineering Faculty, Ankara University, 06500, Ankara, Turkey E...
Steam reforming of hydrocarbons has been in use as the principal process for the generation of hydro...
This paper shows modeling of highly nonlinear polymerization process using the artificial neural net...
Transesterification of Jatropha curcus for biodiesel production is a kinetic control process, which ...
Abstract Light olefins, as the backbone of the chemical and petrochemical industries, are produced m...
AbstractNon-catalytic biodiesel production in supercritical methanol (SCM) and supercritical ethanol...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
Over the years, technologies for improved recovery of heavy oil have become an important part of the...
It is a challenging task to control polymerization reactor due to the complex reactions mechanism. M...
This study investigates the feasibility of using artificial neural networks (ANNs) to predict cataly...
Refinery optimisation requires accurate prediction of crucial product properties and yield of desir...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...
An artificial neural network (ANN) and kinetic-based models for a pilot scale vacuum gas oil (VGO) h...
Machine learning through artificial neural networks have emerged as vital tools to predict chemical ...
Department of Chemical Engineering, Engineering Faculty, Ankara University, 06500, Ankara, Turkey E...
Department of Chemical Engineering, Engineering Faculty, Ankara University, 06500, Ankara, Turkey E...
Steam reforming of hydrocarbons has been in use as the principal process for the generation of hydro...
This paper shows modeling of highly nonlinear polymerization process using the artificial neural net...