TY - JOUR
T1 - Machine Learning-Guided Prediction of Desalination Capacity and Rate of Porous Carbons for Capacitive Deionization
AU - Wang, Hao
AU - Jiang, Mingxi
AU - Xu, Guangsheng
AU - Wang, Chenglong
AU - Xu, Xingtao
AU - Liu, Yong
AU - Li, Yuquan
AU - Lu, Ting
AU - Yang, Guang
AU - Pan, Likun
N1 - Publisher Copyright:
© 2024 Wiley-VCH GmbH.
PY - 2024/10/17
Y1 - 2024/10/17
N2 - Nowadays, capacitive deionization (CDI) has emerged as a prominent technology in the desalination field, typically utilizing porous carbons as electrodes. However, the precise significance of electrode properties and operational conditions in shaping desalination performance remains blurry, necessitating numerous time-consuming and resource-intensive CDI experiments. Machine learning (ML) presents an emerging solution, offering the prospect of predicting CDI performance with minimal investment in electrode material synthesis and testing. Herein, four ML models are used for predicting the CDI performance of porous carbons. Among them, the gradient boosting model delivers the best performance on test set with low root mean square error values of 2.13 mg g−1 and 0.073 mg g−1 min−1 for predicting desalination capacity and rate, respectively. Furthermore, SHapley Additive exPlanations is introduced to analyze the significance of electrode properties and operational conditions. It highlights that electrolyte concentration and specific surface area exert a substantially more influential role in determining desalination performance compared to other features. Ultimately, experimental validation employing metal–organic frameworks-derived porous carbons and biomass-derived porous carbons as CDI electrodes is conducted to affirm the prediction accuracy of ML models. This study pioneers ML techniques for predicting CDI performance, offering a compelling strategy for advancing CDI technology.
AB - Nowadays, capacitive deionization (CDI) has emerged as a prominent technology in the desalination field, typically utilizing porous carbons as electrodes. However, the precise significance of electrode properties and operational conditions in shaping desalination performance remains blurry, necessitating numerous time-consuming and resource-intensive CDI experiments. Machine learning (ML) presents an emerging solution, offering the prospect of predicting CDI performance with minimal investment in electrode material synthesis and testing. Herein, four ML models are used for predicting the CDI performance of porous carbons. Among them, the gradient boosting model delivers the best performance on test set with low root mean square error values of 2.13 mg g−1 and 0.073 mg g−1 min−1 for predicting desalination capacity and rate, respectively. Furthermore, SHapley Additive exPlanations is introduced to analyze the significance of electrode properties and operational conditions. It highlights that electrolyte concentration and specific surface area exert a substantially more influential role in determining desalination performance compared to other features. Ultimately, experimental validation employing metal–organic frameworks-derived porous carbons and biomass-derived porous carbons as CDI electrodes is conducted to affirm the prediction accuracy of ML models. This study pioneers ML techniques for predicting CDI performance, offering a compelling strategy for advancing CDI technology.
KW - average salt adsorption rate
KW - capacitive deionization
KW - machine learning
KW - porous carbon
KW - salt adsorption capacity
UR - https://www.scopus.com/pages/publications/85196022334
U2 - 10.1002/smll.202401214
DO - 10.1002/smll.202401214
M3 - 文章
C2 - 38884200
AN - SCOPUS:85196022334
SN - 1613-6810
VL - 20
JO - Small
JF - Small
IS - 42
M1 - 2401214
ER -