Abstract Light olefins, as the backbone of the chemical and petrochemical industries, are produced mainly via steam cracking route. Prediction the of effects of operating variables on the product yield distribution through the mechanistic approaches is complex and requires long time. While increasing in the industrial automation and the availability of the high throughput data, the machine learning approaches have gained much attention due to the simplicity and less required computational efforts. In this study, the potential capability of four powerful machine learning models, i.e., Multilayer perceptron (MLP) neural network, adaptive boosting-support vector regression (AdaBoost-SVR), recurrent neural network (RNN), and deep belief network...
As the push towards more sustainable ways to produce energy and chemicals intensifies, efforts are n...
The main objective of the research is to compare the accurateness of Artificial Neural Networks (ANN...
The self-learning capabilities of artificial neural networks (ANNs) from large datasets have led to ...
An in-depth knowledge of pyrolytic kinetics is vital for understanding the thermal decomposition pro...
Computational fluid dynamics (CFD) is an effective tool to investigate biomass fast pyrolysis in flu...
Four solid wastes including sludge, watermelon rind, corncob, and eucalyptus and their demineralized...
Abstract Accurate prediction of fuel deposition during crude oil pyrolysis is pivotal for sustaining...
Due to wide application of styrene for production of different materials, it is considered as an imp...
The pyrolytic behavior of lignocellulosic biomass is highly complex, and its kinetic behavior varies...
Ethylene yield is significant in showing the performance of the steam cracker furnace in the olefin ...
AbstractNon-catalytic biodiesel production in supercritical methanol (SCM) and supercritical ethanol...
Over the past two decades, the use of machine learning (ML) methods to model biomass and waste gasif...
As industrial control technology continues to develop, modern industrial control is undergoing a tra...
Flow measurement is an essential requirement for monitoring and controlling oil movements through pi...
Summarization: Gasoline, the key profit generator for the petroleum refining industry, is produced b...
As the push towards more sustainable ways to produce energy and chemicals intensifies, efforts are n...
The main objective of the research is to compare the accurateness of Artificial Neural Networks (ANN...
The self-learning capabilities of artificial neural networks (ANNs) from large datasets have led to ...
An in-depth knowledge of pyrolytic kinetics is vital for understanding the thermal decomposition pro...
Computational fluid dynamics (CFD) is an effective tool to investigate biomass fast pyrolysis in flu...
Four solid wastes including sludge, watermelon rind, corncob, and eucalyptus and their demineralized...
Abstract Accurate prediction of fuel deposition during crude oil pyrolysis is pivotal for sustaining...
Due to wide application of styrene for production of different materials, it is considered as an imp...
The pyrolytic behavior of lignocellulosic biomass is highly complex, and its kinetic behavior varies...
Ethylene yield is significant in showing the performance of the steam cracker furnace in the olefin ...
AbstractNon-catalytic biodiesel production in supercritical methanol (SCM) and supercritical ethanol...
Over the past two decades, the use of machine learning (ML) methods to model biomass and waste gasif...
As industrial control technology continues to develop, modern industrial control is undergoing a tra...
Flow measurement is an essential requirement for monitoring and controlling oil movements through pi...
Summarization: Gasoline, the key profit generator for the petroleum refining industry, is produced b...
As the push towards more sustainable ways to produce energy and chemicals intensifies, efforts are n...
The main objective of the research is to compare the accurateness of Artificial Neural Networks (ANN...
The self-learning capabilities of artificial neural networks (ANNs) from large datasets have led to ...