Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)

The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME) showed promising results, which successfully overcome the limitation of a large space that is needed in the conventional method. The understanding of synergism between anaerobic digestion and aerobic...

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Main Authors: Chen, Wei-Yao, Chan, Yi Jing, Lim, Jun Wei, Liew, Chin Seng, Mohamad, Mardawani, Ho, Chii-Dong, Usman, Anwar, Lisak, Grzegorz, Hara, Hirofumi, Tan, Wen-Nee
Other Authors: School of Civil and Environmental Engineering
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Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/165239
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spelling sg-ntu-dr.10356-1652392023-03-22T15:34:33Z Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB) Chen, Wei-Yao Chan, Yi Jing Lim, Jun Wei Liew, Chin Seng Mohamad, Mardawani Ho, Chii-Dong Usman, Anwar Lisak, Grzegorz Hara, Hirofumi Tan, Wen-Nee School of Civil and Environmental Engineering Nanyang Environment and Water Research Institute Residues and Resource Reclamation Centre Engineering::Environmental engineering Palm Oil Mill Effluent Anaerobic The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME) showed promising results, which successfully overcome the limitation of a large space that is needed in the conventional method. The understanding of synergism between anaerobic digestion and aerobic process is required to achieve maximum biogas production and COD removal. Hence, this work presents the use of artificial neural network (ANN) to predict the COD removal (%), purity of methane (%), and methane yield (LCH4 /gCODremoved) of anaerobic digestion and COD removal (%), biochemical oxygen demand (BOD) removal (%), and total suspended solid (TSS) removal (%) of aerobic process in a pre-commercialized IAAB located at Negeri Sembilan, Malaysia. MATLAB R2019b was used to develop the two ANN models. Bayesian regularization backpropagation (BR) showed the best performance among the 12 training algorithms. The trained ANN models showed high accuracy (R2 > 0.997) and demonstrated good alignment with the industrial data obtained from the pre-commercialized IAAB over a 6-month period. The developed ANN model is subsequently used to create the optimal operating conditions which maximize the output parameters. The COD removal (%) was improved by 33.9% (from 68.7% to 92%), while the methane yield was improved by 13.4% (from 0.23 LCH4 /gCODremoved to 0.26 LCH4 /gCODremoved). Sensitivity analysis shows that COD inlet is the most influential input parameters that affect the methane yield, anaerobic COD, BOD and TSS removals, while for aerobic process, COD removal is most affected by mixed liquor suspended solids (MLSS). The trained ANN model can be utilized as a decision support system (DSS) for operators to predict the behavior of the IAAB system and solve the problems of instability and inconsistent biogas production in the anaerobic digestion process. This is of utmost importance for the successful commercialization of this IAAB technology. Additional input parameters such as the mixing time, reaction time, nutrients (ammonium nitrogen and total phosphorus) and concentration of microorganisms could be considered for the improvement of the ANN model. Published version The financial supports received from the following funders are gratefully acknowledged: Yayasan Universiti Teknologi PETRONAS (YUTP) with the cost center of 015LC0-126 and Universitas Muhammadiyah Surakarta, Indonesia via External Grant with the cost center of 015ME0-246. 2023-03-21T05:26:29Z 2023-03-21T05:26:29Z 2022 Journal Article Chen, W., Chan, Y. J., Lim, J. W., Liew, C. S., Mohamad, M., Ho, C., Usman, A., Lisak, G., Hara, H. & Tan, W. (2022). Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB). Water, 14(9), 1410-. https://dx.doi.org/10.3390/w14091410 2073-4441 https://hdl.handle.net/10356/165239 10.3390/w14091410 2-s2.0-85129891728 9 14 1410 en Water © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/). application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Environmental engineering
Palm Oil Mill Effluent
Anaerobic
spellingShingle Engineering::Environmental engineering
Palm Oil Mill Effluent
Anaerobic
Chen, Wei-Yao
Chan, Yi Jing
Lim, Jun Wei
Liew, Chin Seng
Mohamad, Mardawani
Ho, Chii-Dong
Usman, Anwar
Lisak, Grzegorz
Hara, Hirofumi
Tan, Wen-Nee
Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)
description The use of integrated anaerobic-aerobic bioreactor (IAAB) to treat the Palm Oil Mill Effluent (POME) showed promising results, which successfully overcome the limitation of a large space that is needed in the conventional method. The understanding of synergism between anaerobic digestion and aerobic process is required to achieve maximum biogas production and COD removal. Hence, this work presents the use of artificial neural network (ANN) to predict the COD removal (%), purity of methane (%), and methane yield (LCH4 /gCODremoved) of anaerobic digestion and COD removal (%), biochemical oxygen demand (BOD) removal (%), and total suspended solid (TSS) removal (%) of aerobic process in a pre-commercialized IAAB located at Negeri Sembilan, Malaysia. MATLAB R2019b was used to develop the two ANN models. Bayesian regularization backpropagation (BR) showed the best performance among the 12 training algorithms. The trained ANN models showed high accuracy (R2 > 0.997) and demonstrated good alignment with the industrial data obtained from the pre-commercialized IAAB over a 6-month period. The developed ANN model is subsequently used to create the optimal operating conditions which maximize the output parameters. The COD removal (%) was improved by 33.9% (from 68.7% to 92%), while the methane yield was improved by 13.4% (from 0.23 LCH4 /gCODremoved to 0.26 LCH4 /gCODremoved). Sensitivity analysis shows that COD inlet is the most influential input parameters that affect the methane yield, anaerobic COD, BOD and TSS removals, while for aerobic process, COD removal is most affected by mixed liquor suspended solids (MLSS). The trained ANN model can be utilized as a decision support system (DSS) for operators to predict the behavior of the IAAB system and solve the problems of instability and inconsistent biogas production in the anaerobic digestion process. This is of utmost importance for the successful commercialization of this IAAB technology. Additional input parameters such as the mixing time, reaction time, nutrients (ammonium nitrogen and total phosphorus) and concentration of microorganisms could be considered for the improvement of the ANN model.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Chen, Wei-Yao
Chan, Yi Jing
Lim, Jun Wei
Liew, Chin Seng
Mohamad, Mardawani
Ho, Chii-Dong
Usman, Anwar
Lisak, Grzegorz
Hara, Hirofumi
Tan, Wen-Nee
format Article
author Chen, Wei-Yao
Chan, Yi Jing
Lim, Jun Wei
Liew, Chin Seng
Mohamad, Mardawani
Ho, Chii-Dong
Usman, Anwar
Lisak, Grzegorz
Hara, Hirofumi
Tan, Wen-Nee
author_sort Chen, Wei-Yao
title Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)
title_short Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)
title_full Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)
title_fullStr Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)
title_full_unstemmed Artificial neural network (ANN) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (IABB)
title_sort artificial neural network (ann) modelling for biogas production in pre-commercialized integrated anaerobic-aerobic bioreactors (iabb)
publishDate 2023
url https://hdl.handle.net/10356/165239
_version_ 1761781909054029824