LAPSE:2025.0213v1
Published Article

LAPSE:2025.0213v1
Mechanistic and Data-Driven Models for Predicting Biogas Production in Anaerobic Digestion Processes
June 27, 2025
Abstract
Accurately predicting biogas production for real-time applications remains a challenge in anaerobic digestion (AD) due to the process's complexity and dynamic nature. While mechanistic models are essential for understanding and modelling AD processes, however they are highly non-linear and depend on detailed feedstock characterisation and parameter calibration. In contrast, data-driven models do not rely on predefined equations and rather use process data to capture the system's underlying dynamics. This study compares mechanistic and data-driven models for biogas prediction using lab-scale data. A state estimation framework with a rolling window was used for the mechanistic model, based on biomass and substrate concentrations with Haldane kinetics, achieved an accuracy of (R² = 0.91). A Long Short-Term Memory (LSTM) model with Bayesian Optimisation for hyperparameter optimisation, trained on the same data showed superior performance (R² = 0.930.98) and captured temporal dependencies inherent to the AD process. The LSTM model was further applied to industrial data, maintaining high accuracy (R² = 0.950.97) and demonstrating its scalability. Its strong predictive capabilities, combined with practicality for real-time applications, make it a promising tool for optimising operations in large-scale AD plants.
Accurately predicting biogas production for real-time applications remains a challenge in anaerobic digestion (AD) due to the process's complexity and dynamic nature. While mechanistic models are essential for understanding and modelling AD processes, however they are highly non-linear and depend on detailed feedstock characterisation and parameter calibration. In contrast, data-driven models do not rely on predefined equations and rather use process data to capture the system's underlying dynamics. This study compares mechanistic and data-driven models for biogas prediction using lab-scale data. A state estimation framework with a rolling window was used for the mechanistic model, based on biomass and substrate concentrations with Haldane kinetics, achieved an accuracy of (R² = 0.91). A Long Short-Term Memory (LSTM) model with Bayesian Optimisation for hyperparameter optimisation, trained on the same data showed superior performance (R² = 0.930.98) and captured temporal dependencies inherent to the AD process. The LSTM model was further applied to industrial data, maintaining high accuracy (R² = 0.950.97) and demonstrating its scalability. Its strong predictive capabilities, combined with practicality for real-time applications, make it a promising tool for optimising operations in large-scale AD plants.
Record ID
Keywords
Anaerobic Digestion, Data Driven Modelling, Long Short-Term Memory, Mechanistic Modelling
Subject
Suggested Citation
Murali R, Dekhici B, Chen T, Zhang D, Short M. Mechanistic and Data-Driven Models for Predicting Biogas Production in Anaerobic Digestion Processes. Systems and Control Transactions 4:388-393 (2025) https://doi.org/10.69997/sct.176459
Author Affiliations
Murali R: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom; Surrey Institute for People-Centred Artificial Intelligence, University of Surrey, Guildford, GU2 7XH, United Kingdom
Dekhici B: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom
Chen T: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom; Surrey Institute for People-Centred Artificial Intelligence, University of Surrey, Guildford, GU2 7XH, United Kingdom
Zhang D: Department of Chemical Engineering, The University of Manchester, Manchester, M13 9PL, United Kingdom
Short M: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom; Surrey Institute for People-Centred Artificial Intelligence, University of Surrey, Guildford, GU2 7XH, United Kingdom
Dekhici B: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom
Chen T: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom; Surrey Institute for People-Centred Artificial Intelligence, University of Surrey, Guildford, GU2 7XH, United Kingdom
Zhang D: Department of Chemical Engineering, The University of Manchester, Manchester, M13 9PL, United Kingdom
Short M: School of Chemistry and Chemical Engineering, University of Surrey, Guildford, GU2 7XH, United Kingdom; Surrey Institute for People-Centred Artificial Intelligence, University of Surrey, Guildford, GU2 7XH, United Kingdom
Journal Name
Systems and Control Transactions
Volume
4
First Page
388
Last Page
393
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
Other Meta
PII: 0388-0393-1728-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0213v1
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https://doi.org/10.69997/sct.176459
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Jun 27, 2025
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References Cited
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