TY - JOUR
T1 - Deep learning-based coagulant dosage prediction for extreme events leveraging large-scale data
AU - Kim, Jiwoong
AU - Hua, Chuanbo
AU - Lin, Subin
AU - Kang, Seoktae
AU - Kang, Joo Hyon
AU - Park, Mi Hyun
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/9
Y1 - 2024/9
N2 - The escalating frequency and severity of extreme weather events, attributed to climate change, present significant challenges for water treatment plants (WTPs). Addressing these challenges requires transitioning to automated processes for real-time responses. This study uses a deep learning model to predict coagulant dosage and settled water turbidity, particularly under abnormal conditions such as extreme weather conditions and operational changes. Real-time monitoring data from a WTP in South Korea included input parameters such as raw water quality indicators and operational settings, with output parameters being coagulant dosage and settled water turbidity. The data were preprocessed and used to train the deep learning model, which incorporated a Convolutional Neural Network for feature extraction and a Gated Recurrent Unit for time series analysis. The results showed robust predictive capabilities for coagulant dosage under both typical and extreme weather conditions (R2 = 0.87 and 0.86, respectively) and reasonably accurate predictions for settled water turbidity (R2 = 0.73 and 0.56, respectively). These findings highlight the model's potential for automation in WTPs, even under extreme weather conditions. However, the model's performance was compromised in the case of operational changes involving chemical transitions, as these were influenced by subjective decisions, thereby impacting data distributions. Compared to existing methods, our approach offers strong predictive capability for coagulant dosage and settled water turbidity even during extreme events, enhancing real-time operational efficiency. This study underscores the importance of utilizing large-scale data in water treatment process modeling to improve deep learning model's responsiveness to unforeseen events across various conditions.
AB - The escalating frequency and severity of extreme weather events, attributed to climate change, present significant challenges for water treatment plants (WTPs). Addressing these challenges requires transitioning to automated processes for real-time responses. This study uses a deep learning model to predict coagulant dosage and settled water turbidity, particularly under abnormal conditions such as extreme weather conditions and operational changes. Real-time monitoring data from a WTP in South Korea included input parameters such as raw water quality indicators and operational settings, with output parameters being coagulant dosage and settled water turbidity. The data were preprocessed and used to train the deep learning model, which incorporated a Convolutional Neural Network for feature extraction and a Gated Recurrent Unit for time series analysis. The results showed robust predictive capabilities for coagulant dosage under both typical and extreme weather conditions (R2 = 0.87 and 0.86, respectively) and reasonably accurate predictions for settled water turbidity (R2 = 0.73 and 0.56, respectively). These findings highlight the model's potential for automation in WTPs, even under extreme weather conditions. However, the model's performance was compromised in the case of operational changes involving chemical transitions, as these were influenced by subjective decisions, thereby impacting data distributions. Compared to existing methods, our approach offers strong predictive capability for coagulant dosage and settled water turbidity even during extreme events, enhancing real-time operational efficiency. This study underscores the importance of utilizing large-scale data in water treatment process modeling to improve deep learning model's responsiveness to unforeseen events across various conditions.
KW - Convolutional neural network-gated recurrent unit
KW - Deep learning model
KW - Extreme weather events
KW - Large-scale data
KW - Operational changes
UR - http://www.scopus.com/inward/record.url?scp=85200649423&partnerID=8YFLogxK
U2 - 10.1016/j.jwpe.2024.105934
DO - 10.1016/j.jwpe.2024.105934
M3 - Article
AN - SCOPUS:85200649423
SN - 2214-7144
VL - 66
JO - Journal of Water Process Engineering
JF - Journal of Water Process Engineering
M1 - 105934
ER -