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