Microbial-Guided prediction of methane and sulfide production in Sewers: Integrating mechanistic models with Machine learning.

Bioresour Technol

State Key Laboratory of Urban Water Resource and Environment, School of Civil and Environmental Engineering, Harbin Institute of Technology, Shenzhen 518055, PR China.

Published: January 2025

AI Article Synopsis

  • Accurate modeling of methane (CH) and sulfide (HS) production in sewer systems was previously limited due to insufficient understanding of microbial processes in varying environmental conditions.
  • This study presents a new framework called Micro-ML that combines microbial process data with machine learning to enhance predictions for CH and HS production.
  • The Micro-ML model significantly improved predictive accuracy, achieving reductions of about 80% in CH and 90% in HS production, providing a useful tool for better management of sewer systems.

Article Abstract

Accurate modeling of methane (CH) and sulfide (HS) production in sewer systems was constrained by insufficient consideration of microbial processes under dynamic environmental conditions. This study introduces a microbial-guided machine learning (ML) framework (Micro-ML), which integrates microbial process representations from mechanistic models (microbial information) with ML models. Results indicate that Micro-ML model enhanced predictions of CH and HS production, where microbial information provides more information for model optimization. The feature importance of microbial information performed comparable weightings for 58.12 % and 55.16 %, respectively, but their relative significance in influencing Micro-ML model performance varies considerably. The application of Micro-ML performed great potential in reducing CH and HS production (decreased ∼ 80 % and 90 %). The integrated model not only improves the accuracy of CH and HS predictions but also offers a valuable tool for effective management strategies for sewer systems.

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Source
http://dx.doi.org/10.1016/j.biortech.2024.131640DOI Listing

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