Biomass gasification enables the transformation of biomass feedstock into syngas suitable for further energy conversions. Mathematical models of gasification are not only valuable tool for the design and optimization of the processes, but could be also employed for online prediction and process control. In this work, the potential of using nonlinear autoregressive networks with exogenous inputs (NARX) for predicting the gasification process when a lower amount of experimental data is available was studied. The analysis of using an open-loop NARX network for an online prediction of the syngas composition in a downdraft gasifier at different data recording frequency was performed. The predicted results showed that by decreasing the data recor...
The processes of anaerobic digestion and co-digestion are complicated and the development of computa...
In this paper, multi-layer feed forward neural networks are used to predict the lower heating value ...
Tars are one of the main barriers for the implementation of biomass gasification at industrial scale...
Existing technical issues related to biomass gasification process efficiency and environmental stand...
Gasification is a promising technology for efficient, clean and diverse utilisation of biomass and b...
To improve biomass gasification efficiency through process control, a lot of attention had been give...
The viability and the relative merits of competing biomass and waste gasification schemes depends on...
Biomass is a renewable energy resource and its utilization has received great attention due to its l...
Energy crisis and emerging negative impacts on environment are the leading factors of industries to ...
This article corresponds to chapter 5 of Ph.D: Experimental and mathematical modelling of biowaste g...
Aspen Plus (R) is one of the practicable software for investigation of the biomass gasification char...
The effect of different bed materials was included a as new input into an artificial neural network ...
Machine learning through artificial neural networks have emerged as vital tools to predict chemical ...
The use of renewable energy sources becomes more necessary and interesting. As wider applications of...
Mathematical modelling using regression for the biogas production process was a proven method used u...
The processes of anaerobic digestion and co-digestion are complicated and the development of computa...
In this paper, multi-layer feed forward neural networks are used to predict the lower heating value ...
Tars are one of the main barriers for the implementation of biomass gasification at industrial scale...
Existing technical issues related to biomass gasification process efficiency and environmental stand...
Gasification is a promising technology for efficient, clean and diverse utilisation of biomass and b...
To improve biomass gasification efficiency through process control, a lot of attention had been give...
The viability and the relative merits of competing biomass and waste gasification schemes depends on...
Biomass is a renewable energy resource and its utilization has received great attention due to its l...
Energy crisis and emerging negative impacts on environment are the leading factors of industries to ...
This article corresponds to chapter 5 of Ph.D: Experimental and mathematical modelling of biowaste g...
Aspen Plus (R) is one of the practicable software for investigation of the biomass gasification char...
The effect of different bed materials was included a as new input into an artificial neural network ...
Machine learning through artificial neural networks have emerged as vital tools to predict chemical ...
The use of renewable energy sources becomes more necessary and interesting. As wider applications of...
Mathematical modelling using regression for the biogas production process was a proven method used u...
The processes of anaerobic digestion and co-digestion are complicated and the development of computa...
In this paper, multi-layer feed forward neural networks are used to predict the lower heating value ...
Tars are one of the main barriers for the implementation of biomass gasification at industrial scale...