Deciphering and Mitigating of Dynamic Greenhouse Gas Emission in Urban Drainage Systems with Knowledge-Infused Graph Neural Network
Wan-Xin Yin, Kehua Chen, Jia-Qiang Lv, Jia-Ji Chen, Shuai Liu, Yunpeng Song, Yiwei Zhao, Fang Huang, Hongxu Bao, Hong‐Cheng Wang, Ai-Jie Wang, Nan-Qi Ren
Abstract
Deciphering and mitigating dynamic greenhouse gas (GHG) emissions under environmental fluctuation in urban drainage systems (UDGSs) is challenging due to the absence of a high-prediction model that accurately quantifies the contributions of biological production pathways. Here we infused biological production pathways into the graph neural network (GNN) model architecture, developing ecological knowledge-infused GNN (EcoGNN-GHG) models to evaluate methane (CH 4 ) and nitrous oxide (N 2 O) production in sewers and wastewater treatment plants (WWTPs). The EcoGNN-GHG model demonstrated high predictive accuracy, achieving an R 2 of 0.96 for CH 4 in sewers and 0.82 for N 2 O in WWTPs. Model interpretability analysis revealed fluctuations in contributions of the anaerobic hydrolysis acidification pathway to CH 4 production and the nitrification-denitrification pathway to N 2 O production under dynamic environmental conditions, guiding the formulation of a precise dissolved oxygen control strategy targeting critical water quality parameters (acetate for CH 4 production and nitrite for N 2 O production). Implementing this strategy to control DO thereby regulating biological production pathway contributions, CH 4 production in sewers and N 2 O production in WWTPs were reduced by 35.50% and 29.94%, respectively. Our findings offer a robust, accurate method for predicting GHG emissions, quantifying production pathway contributions, and developing effective control strategies in UDGSs.