Modeling and simulation of co-digestion performance with artificial neural network for prediction of methane production from tea factory waste with co-substrate of spent tea waste
[Display omitted] •ANN model was used to simulate for prediction and maximization of ACd.•Bayesian Regularization algorithm showed the best performance.•According to the ANN model, the co-digestion might improve the methane yield up to 183% compared to mono substrates. The production of biofuel from...
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| Published in: | Fuel (Guildford) Vol. 306; p. 121715 |
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| Main Authors: | , , , , |
| Format: | Journal Article |
| Language: | English |
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Elsevier Ltd
15.12.2021
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| ISSN: | 0016-2361, 1873-7153 |
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| Abstract | [Display omitted]
•ANN model was used to simulate for prediction and maximization of ACd.•Bayesian Regularization algorithm showed the best performance.•According to the ANN model, the co-digestion might improve the methane yield up to 183% compared to mono substrates.
The production of biofuel from waste has become an important topic for waste management and reducing its environmental hazard. Tea factory waste is a strong candidate due to its availability and sourceability. This study aimed to reveal the biochemical methane potential (BMP) of tea factory waste (TFW) and spent tea waste (STW). Additionally, the results revealed that both substrates had high biodegradability due to high VS removal. The BMP tests took 49 days under mesophilic conditions with a batch reactor and the cumulative methane yields were 249 ± 3, and 261 ± 8 mL CH4/g VS for TFW and STW, respectively. According to prediction data with the selected ANN model, which was 50 hidden layer sizes, trained with Bayesian Regularization algorithm, the maximum cumulative specific methane yield of the co-digestion was simulated as 468.43 mL CH4/g VS when the ratio of 65 and 35% (w/w by VS) of TFW and STW, respectively. The predicted methane yield for co-substrates was 183% higher than mono substrates. This result revealed that TFW can be a good candidate for biogas production as biofuel for not only its availability and sourceability but also the synergistic effect possible for co-digestion. |
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| AbstractList | The production of biofuel from waste has become an important topic for waste management and reducing its environmental hazard. Tea factory waste is a strong candidate due to its availability and sourceability. This study aimed to reveal the biochemical methane potential (BMP) of tea factory waste (TFW) and spent tea waste (STW). Additionally, the results revealed that both substrates had high biodegradability due to high VS removal. The BMP tests took 49 days under mesophilic conditions with a batch reactor and the cumulative methane yields were 249 ± 3, and 261 ± 8 mL CH4/g VS for TFW and STW, respectively. According to prediction data with the selected ANN model, which was 50 hidden layer sizes, trained with Bayesian Regularization algorithm, the maximum cumulative specific methane yield of the co-digestion was simulated as 468.43 mL CH4/g VS when the ratio of 65 and 35% (w/w by VS) of TFW and STW, respectively. The predicted methane yield for co-substrates was 183% higher than mono substrates. This result revealed that TFW can be a good candidate for biogas production as biofuel for not only its availability and sourceability but also the synergistic effect possible for co-digestion. [Display omitted] •ANN model was used to simulate for prediction and maximization of ACd.•Bayesian Regularization algorithm showed the best performance.•According to the ANN model, the co-digestion might improve the methane yield up to 183% compared to mono substrates. The production of biofuel from waste has become an important topic for waste management and reducing its environmental hazard. Tea factory waste is a strong candidate due to its availability and sourceability. This study aimed to reveal the biochemical methane potential (BMP) of tea factory waste (TFW) and spent tea waste (STW). Additionally, the results revealed that both substrates had high biodegradability due to high VS removal. The BMP tests took 49 days under mesophilic conditions with a batch reactor and the cumulative methane yields were 249 ± 3, and 261 ± 8 mL CH4/g VS for TFW and STW, respectively. According to prediction data with the selected ANN model, which was 50 hidden layer sizes, trained with Bayesian Regularization algorithm, the maximum cumulative specific methane yield of the co-digestion was simulated as 468.43 mL CH4/g VS when the ratio of 65 and 35% (w/w by VS) of TFW and STW, respectively. The predicted methane yield for co-substrates was 183% higher than mono substrates. This result revealed that TFW can be a good candidate for biogas production as biofuel for not only its availability and sourceability but also the synergistic effect possible for co-digestion. |
| ArticleNumber | 121715 |
| Author | Kaya, M. Abut, Serdar Unalan, S. Özarslan, Saliha Atelge, M.R. |
| Author_xml | – sequence: 1 givenname: Saliha surname: Özarslan fullname: Özarslan, Saliha organization: Energy Division, Department of Mechanical Engineering, Erciyes University, 38039 Kayseri, Turkey – sequence: 2 givenname: Serdar surname: Abut fullname: Abut, Serdar organization: Department of Computer Engineering, Siirt, Siirt University, 56100 Siirt, Turkey – sequence: 3 givenname: M.R. surname: Atelge fullname: Atelge, M.R. email: rasitatelge@gmail.com organization: Department of Mechanical Engineering, Faculty of Engineering, Siirt University, 56100 Siirt, Turkey – sequence: 4 givenname: M. surname: Kaya fullname: Kaya, M. organization: Department of Chemical Engineering, Faculty of Engineering, Siirt University, 56100 Siirt, Turkey – sequence: 5 givenname: S. surname: Unalan fullname: Unalan, S. organization: Energy Division, Department of Mechanical Engineering, Erciyes University, 38039 Kayseri, Turkey |
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| Keywords | Tea factory waste ANN simulation ANN modeling Biogas Spent tea waste Bayesian regularization algorithm |
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•ANN model was used to simulate for prediction and maximization of ACd.•Bayesian Regularization algorithm showed the best... The production of biofuel from waste has become an important topic for waste management and reducing its environmental hazard. Tea factory waste is a strong... |
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| SubjectTerms | Algorithms ANN modeling ANN simulation Artificial neural networks Availability Batch reactors Bayesian analysis Bayesian regularization algorithm Best management practices Biodegradability Biodegradation Biodiesel fuels Biofuels Biogas Computer simulation Digestion Environmental hazards Environmental management Industrial wastes Methane Neural networks Regularization Spent tea waste Substrates Synergistic effect Tea Tea factory waste Waste management |
| Title | Modeling and simulation of co-digestion performance with artificial neural network for prediction of methane production from tea factory waste with co-substrate of spent tea waste |
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