Title of article :
Prediction of trace compounds in biogas from anaerobic
digestion using the MATLAB Neural Network Toolbox
Author/Authors :
David P.B.T.B. Strik، نويسنده , , Alexander M. Domnanovich، نويسنده , , Loredana Zani، نويسنده , , Rudolf Braun، نويسنده , , Peter Holubar، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2005
Abstract :
The outlook to apply the highly energetic biogas from anaerobic digestion into fuel cells will result in a significantly higher
electrical efficiency and can contribute to an increase of renewable energy production. The practical bottleneck is the fuel cell
poisoning caused by several gaseous trace compounds like hydrogen sulfide and ammonia. Hence artificial neural networks were
developed to predict these trace compounds. The experiments concluded that ammonia in biogas can indeed be present up to
93 ppm. Hydrogen sulfide and ammonia concentrations in biogas were modelled successfully using the MATLAB Neural Network
Toolbox. A script was developed which made it easy to search for the best neural network models’ input/output-parameters, settings
and architectures. The models were predicting the trace compounds, even under dynamical conditions. The resulted determination
coefficients (R2) were for hydrogen sulfide 0.91 and ammonia 0.83. Several model predictive control tool strategies were introduced
which showed the potential to foresee, control, reduce or even avoid the presence of the trace compounds.
Keywords :
prediction , hydrogen sulfide , Ammonia , Biogas , Neural networks , anaerobic digestion , MATLAB Neural Network Toolbox , Modelling
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software