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Predicting microbial fuel cell biofilm communities and power generation from wastewaters with artificial neural network
Journal article   Peer reviewed

Predicting microbial fuel cell biofilm communities and power generation from wastewaters with artificial neural network

Chiy En Lim, Chien Ley Chew, Guan-Ting Pan, Siewhui Chong, Senthil Kumar Arumugasamy, Jun Wei Lim, Abdullah A. Al-Kahtani, Hui-Suan Ng and Muslim Abdurrahman
International journal of hydrogen energy, Vol.52(Part. D), pp.1052-1064
2023

Abstract

Artificial neural network (ANN) was used to predict the biofilm communities present in the microbial fuel cells (MFCs), as well as the power generation from wastewater treatment. The ANN model was able to predict the total abundances of seven exoelectrogenic bacteria-associated genera, viz. Anaeromyxobacter, Bacillus, Clostridium, Comamonas, Desulfuromonas, Geobacter, and Pseudomonas for the MFCs based on the physicochemical properties of the sludge inocula, with accuracies in the range of 62∼92%. An additional ANN model was developed to integrate the biofilm results and predict the power generation from wastewater, with an accuracy of 84% when validating with literature studies. The results show that ANN is a useful tool for predicting the biofilm communities and power generation from MFCs, thus avoiding the necessity of conducting complex biofilm metagenome analysis, and greatly aiding future parametric investigation and scale-up studies.

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