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Water quality prediction model using Gaussian process regression based on deep learning for carbon neutrality in papermaking wastewater treatment system.

Authors :
Wan, Xin
Li, Xiaoyong
Wang, Xinzhi
Yi, Xiaohui
Zhao, Yinzhong
He, Xinzhong
Wu, Renren
Huang, Mingzhi
Source :
Environmental Research. Aug2022, Vol. 211, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

Wastewater recycling is the measure with enormous potentiality to achieve carbon neutrality in wastewater treatment plants. High-precision online monitoring can improve the stability of wastewater treatment system and help wastewater recycling. A new water quality prediction CSWLSTM-GPR model, which fused the spatial feature of convolutional neural network (CNN), the temporal feature of sharing-weight long short-term memory (SWLSTM) and the probabilistic reliability of Gaussian process regression (GPR), was applied for monitoring papermaking wastewater treatment system with high-precision point prediction and interval prediction. Compared with SWLSTM-GPR and CLSTM-GPR, RMSE of CSWLSTM-GPR reduced by more than 48.9% on effluent chemical oxygen demand (COD eff), MAE reduced by more than 49.3%, R2 increased by more than 25.14%, R increased by more than 7.07%. And for the effluent suspended solids (SS eff), CSWLSTM-GPR had better predictive results than SWLSTM-GPR and CSWLSTM-GPR. Compared with SWLSTM-GPR, RMSE, MAE, R, R2 of CSWLSTM-GPR on effluent suspended solids (SS eff) were improved by 4.8%, 6.1%, 29.01% and 31.15%, respectively. Simulation results showed convincing comprehensive forecasting ability were obtained and the true values frequently stayed within the water quality range obtained by CSWLSTM-GPR model, which provided important insights for online monitoring, wastewater recycling and carbon neutrality of papermaking industry. • The new model was applied for monitoring papermaking wastewater treatment system. • The new model fused the advantage of Deep learning and Gaussian process regression. • The dropout and sharing weight strategy were used to avoid overfitting and training difficulties. • The new model can improve carbon neutrality of papermaking industry. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00139351
Volume :
211
Database :
Academic Search Index
Journal :
Environmental Research
Publication Type :
Academic Journal
Accession number :
157254520
Full Text :
https://doi.org/10.1016/j.envres.2022.112942