Pulse Brain · Growing Health Evidence Index
Peer-reviewed

Optimization of a Novel Engineered Ecosystem Integrating Carbon, Nitrogen, Phosphorus, and Sulfur Biotransformation for Saline Wastewater Treatment Using an Interpretable Machine Learning Approach

Jinqi Jiang, Xiang Xiang, Qinhao Zhou, Lichang Zhou, Xinqi Bi, Samir Kumar Khanal, Zongping Wang, Guanghao Chen, Gang Guo

Environmental Science & Technology · 2024

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Summary

The denitrifying sulfur (S) conversion-associated enhanced biological phosphorus removal (DS-EBPR) process for treating saline wastewater is characterized by its unique microbial ecology that integrates carbon (C), nitrogen (N), phosphorus (P), and S biotransformation. However, operational instability arises due to the numerous parameters and intricates bacterial interactions. This study introduces a two-stage interpretable machine learning approach to predict S conversion-driven P removal efficiency and optimize DS-EBPR process. Stage one utilized the XGBoost regression model, achieving an R2 value of 0.948 for predicting sulfate reduction (SR) intensity from anaerobic parameters with feature engineering. Stage two involved the CatBoost classification and regression model integrating anox

Subject
Measurement methods & nutrient profiling
Source type
Peer-reviewed study
System type
Other
DOI
10.1021/acs.est.4c03160
Catalogue ID
SNmpdjw0vd-4jd62d
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