Neuro-fuzzy controller to accelerate biogas production in a biodigester

Authors

  • Alfredo Torres Lopez 1Universidad Americana de Europa, Av. Bonampak, Sm. 6, Mz. 1, Lt. 1, Cancún, Quintana Roo, México. 2Universidad de Guadalajara, Centro Universitario del Norte, Carretera Federal No. 23, Km. 191, C.P. 46200, Colotlán, Jalisco, México https://orcid.org/0000-0002-0926-4999
    Competing Interests

    No conflict of interest declared

  • Rodrigo Cadena Martinez Universidad de Guadalajara, Centro Universitario del Norte, Carretera Federal No. 23, Km. 191, C.P. 46200, Colotlán, Jalisco, México https://orcid.org/0000-0001-9323-6132
    Competing Interests

    The author has no competing interests to declare

  • Martha Hernandez Ochoa Universidad de Guadalajara, Centro Universitario del Norte, Carretera Federal No. 23, Km. 191, C.P. 46200, Colotlán, Jalisco, México https://orcid.org/0000-0002-3464-108X
    Competing Interests

    No conflict of interest declared

DOI:

https://doi.org/10.37636/10.37636/recit.v9n3e456

Keywords:

Anaerobic digestion, Biogas production, Neuro-fuzzy control, Artificial neural networks, ANFIS, Biodigester, Renewable energy, Intelligent control

Abstract

The anaerobic digestion of domestic organic waste represents a sustainable alternative for renewable energy production through biogas generation. However, the inherently nonlinear and multivariable nature of biodigestion processes limits the effectiveness of conventional control strategies, reducing process efficiency and increasing production times. This study proposes the development and evaluation of an intelligent neuro-fuzzy control strategy aimed at accelerating biogas production in a batch anaerobic biodigester. A dynamic mathematical model of the biodigester was implemented in MATLAB®/Simulink to represent the biological behavior associated with biomass degradation and methane generation. Subsequently, an Adaptive Neuro-Fuzzy Inference System (ANFIS) was designed and trained using process data obtained from dynamic simulations. The controller combined fuzzy logic decision rules with the adaptive learning capabilities of artificial neural networks, enabling automatic adjustment of control actions according to process operating conditions. The control architecture was implemented in a closed-loop configuration to regulate critical variables influencing anaerobic digestion performance.  Simulation results demonstrated that the neuro-fuzzy controller significantly improved system stability, reduced dynamic oscillations, and maintained key process variables closer to their reference values. In comparison with open-loop operation, the proposed strategy increased biogas production and reduced the time required to reach stable operating conditions. Furthermore, the controller exhibited a significantly faster response in biogas production, achieving up to 71% improvement in efficiency compared with the open-loop system and reducing the time required to reach equivalent production levels by approximately 70 days, indicating high predictive and adaptive capability. These improvements are attributed to the controller’s ability to compensate for disturbances and continuously maintain favorable conditions for microbial activity and methane production.  The findings confirm that the integration of artificial intelligence techniques into biodigester control systems constitutes a viable and promising approach for enhancing anaerobic digestion efficiency, increasing renewable energy generation, and supporting sustainable waste management. Future work will focus on the experimental implementation of the proposed controller using industrial sensors, actuators, and real-time embedded control platforms.

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Batch reactor modeling in Simulink® Matlab open loop, self-made.

Published

2026-07-14

Data Availability Statement

We don't have made our research data available.

How to Cite

Torres Lopez, A., Cadena Martinez, R., & Hernandez Ochoa, M. (2026). Neuro-fuzzy controller to accelerate biogas production in a biodigester. Revista De Ciencias Tecnológicas, 9(3), 1-22. https://doi.org/10.37636/10.37636/recit.v9n3e456

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