2016
DOI: 10.1016/j.biortech.2016.03.046
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Artificial neural network based modeling to evaluate methane yield from biogas in a laboratory-scale anaerobic bioreactor

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Cited by 113 publications
(31 citation statements)
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“…It consists of modified mathematical models to introduce biological parameters into the model. Numerous models have been used to evaluate cumulative methane production (Gioannis et al, 2009;Lo et al, 2010;Pavlostathis and Giraldo, 1991;Altas, 2009;Manjula and Mahanta, 2014;Li et al, 2012;Jagadish et al, 2012;Kafle and Chen, 2016;Kurtgoz et al, 2018;Antwi et al, 2017;Nair et al, 2016). Altas (2009) emphasized on the effect of heavy metal inhibitors (Cr, Cd, Ni and Zn) on anaerobic granular methane-producing sludge.…”
Section: Kinetics Of Productionmentioning
confidence: 99%
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“…It consists of modified mathematical models to introduce biological parameters into the model. Numerous models have been used to evaluate cumulative methane production (Gioannis et al, 2009;Lo et al, 2010;Pavlostathis and Giraldo, 1991;Altas, 2009;Manjula and Mahanta, 2014;Li et al, 2012;Jagadish et al, 2012;Kafle and Chen, 2016;Kurtgoz et al, 2018;Antwi et al, 2017;Nair et al, 2016). Altas (2009) emphasized on the effect of heavy metal inhibitors (Cr, Cd, Ni and Zn) on anaerobic granular methane-producing sludge.…”
Section: Kinetics Of Productionmentioning
confidence: 99%
“…A new model to predict the potential of the methane through anaerobic digestion exists in the literature (Kurtgoz et al, 2018;Antwi et al, 2017;Nair et al, 2016). Artificial Neuron Network (ANN) allows predicting the potential of methane production with the possibility of choosing the number of input parameters.…”
Section: Introductionmentioning
confidence: 99%
“…It aids in performing comprehensive description of the arising complexities like predicting biogas production by sledge processing. [39] described the efficiency of bio reactor in determining pH, volatile solids and fatty acids and methane content during biogas emission from anaerobic degradation of organic waste loaded at <120 kg volatile solids/m 3 . The organic municipal garbage yielded 347 l methane in where the outcomes were statistically optimized using artificial neural model.…”
Section: Mathematical and Neuralmentioning
confidence: 99%
“…This model could provide appreciable results in predicting wall temperature for the range of operating conditions and helped for selecting the appropriate material for water‐wall tubes. Nair et al () proposed a NN‐based model to evaluate methane yield from biogas in a laboratory‐scale anaerobic bioreactor. The author investigated the performance of a laboratory‐scale anaerobic bioreactor to determine methane content in biogas yield from digestion of organic fraction of municipal solid waste.…”
Section: Introductionmentioning
confidence: 99%
“…This model could provide appreciable results in predicting wall temperature for the range of operating conditions and helped for selecting the appropriate material for water-wall tubes. Nair et al (2016) Nevertheless, each of the soft computing techniques has its merits and demerits. Performance of individual technique becomes limited with the increase of complexity of a problem and hence motivates for combining their merits in a common platform.…”
mentioning
confidence: 99%