This paper proposed a framework to model and optimises a biogas production using artificial neural networks and genetic algorithms. The intelligence computation was applied to achieve a better model and optimisation compared to a mathematical modeling. Two training approaches were used to train a set of neural networks design. The trained networks model predictions were used to generate a maximum biogas output assisted by genetic algorithms optimisation. The result showed that modeling accuracy with low error will not give a better yield. It also reported a 0.44% increase of maximum biogas yield from the published result
The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME)...
The main purpose of this study to increase the optimal conditions for biogas yield from anaerobic di...
This study proposes an integrated prediction and optimization model by using multi-layer perceptron ...
This paper proposed a framework to model and optimises a biogas production using artificial neural n...
In recent years, several researchers have actively pursued the application of machine learning to b...
Biogas production from waste is a valuable renewable energy and with better process design, maximum ...
Despite the advantages of the Anaerobic Digestion (AD) technology for organic waste management, low ...
The object of this study is the operating parameters of the anaerobic digestion unit. The study aims...
Mathematical modelling using regression for the biogas production process was a proven method used u...
This paper presents a fast and reliable approach to analyze the biogas production process with respe...
The anaerobic digestion process is a technology that recovers energy in form of biogas and nutrients...
All over the world there is a strong interest and also potential for biogas production from organic ...
The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME)...
The processes of anaerobic digestion and co-digestion are complicated and the development of computa...
With the ever-growing application of data science and machine learning in the fourth industrial revo...
The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME)...
The main purpose of this study to increase the optimal conditions for biogas yield from anaerobic di...
This study proposes an integrated prediction and optimization model by using multi-layer perceptron ...
This paper proposed a framework to model and optimises a biogas production using artificial neural n...
In recent years, several researchers have actively pursued the application of machine learning to b...
Biogas production from waste is a valuable renewable energy and with better process design, maximum ...
Despite the advantages of the Anaerobic Digestion (AD) technology for organic waste management, low ...
The object of this study is the operating parameters of the anaerobic digestion unit. The study aims...
Mathematical modelling using regression for the biogas production process was a proven method used u...
This paper presents a fast and reliable approach to analyze the biogas production process with respe...
The anaerobic digestion process is a technology that recovers energy in form of biogas and nutrients...
All over the world there is a strong interest and also potential for biogas production from organic ...
The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME)...
The processes of anaerobic digestion and co-digestion are complicated and the development of computa...
With the ever-growing application of data science and machine learning in the fourth industrial revo...
The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME)...
The main purpose of this study to increase the optimal conditions for biogas yield from anaerobic di...
This study proposes an integrated prediction and optimization model by using multi-layer perceptron ...