Optimising the power regeneration and chemical oxygen demand removal in microbial fuel cell systems using integrated soft computing methods and multiple-objective optimisation

Chalak Qazani, Mohamad Reza, Ghasemi, Mostafa, and Asadi, Houshyar (2026) Optimising the power regeneration and chemical oxygen demand removal in microbial fuel cell systems using integrated soft computing methods and multiple-objective optimisation. Renewable Energy, 256. 124188.

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Abstract

Microbial fuel cells (MFCs) have recently emerged as a sustainable technology for simultaneously treating wastewater and generating electricity. However, optimising their operational parameters to enhance performance remains a complex challenge. This study proposes an integrated framework that combines advanced machine learning models—long short-term memory (LSTM) and gated recurrent unit (GRU)—with a multi- objective genetic algorithm (MOGA) to optimise chemical oxygen demand (COD) removal and power output. Experimental data were obtained by varying glucose concentrations (1–9 g/L), yeast extract concentrations (1–5 g/L), and aeration rates (0–110 mL/min). Among the models evaluated, the LSTM model performed best in predicting COD removal. In contrast, the GRU model outperformed the others in power prediction. These surrogate models were incorporated into the MOGA to identify nine Pareto-optimal solutions. Experimental validation confirmed the high accuracy of the proposed approach, with average errors of 5.47 % for COD and 3.29 % for power. This work offers a cost-effective and scalable optimisation strategy, significantly reducing the need for exhaustive experimental trials while improving the efficiency and applicability of MFCs in real-world scenarios.

Item ID: 86686
Item Type: Article (Research - C1)
ISSN: 1879-0682
Copyright Information: © 2025 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
Date Deposited: 19 Aug 2025 00:30
FoR Codes: 40 ENGINEERING > 4017 Mechanical engineering > 401703 Energy generation, conversion and storage (excl. chemical and electrical) @ 60%
46 INFORMATION AND COMPUTING SCIENCES > 4611 Machine learning > 461199 Machine learning not elsewhere classified @ 40%
SEO Codes: 17 ENERGY > 1701 Energy efficiency > 170199 Energy efficiency not elsewhere classified @ 60%
22 INFORMATION AND COMMUNICATION SERVICES > 2204 Information systems, technologies and services > 220402 Applied computing @ 40%
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