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Articles

Forecasting and analysis of biogas-based power production using extremal neural network

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Pages 730-739 | Published online: 23 Mar 2017
 

ABSTRACT

The primary objective of this study is to design an efficient and robust method to predict the power production from the anaerobic digester by taking into consideration various factors and feedstocks (organic fraction municipal solid waste, wastewater sludge, and co-digestion). This study focuses on the influence of primary factors such as temperature, pH, and nitrogen concentration on power production. Extremal neural network tool was developed with the assistance of MATLAB programming to predict the power production. The results showed that this approach is trustworthy enough to predict the energy output with respect to the primary variables mentioned above. It is expected that this new prediction model will improve the biogas productivity and contribute significantly to energy production. Moreover, this design has an economic advantage in processing.

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