Lok, Jun YiJun YiLokTsai, Wen HanWen HanTsaiI-Chung Cheng2023-07-312023-07-312023-08-0124686069https://scholars.lib.ntu.edu.tw/handle/123456789/634280The electrocatalytic performance of nanoporous copper (NPC) in carbon dioxide reduction reaction (CO2RR) varies based on given features during the sample preparation phases and reaction conditions of each sample. This work aims to improve the CO2RR capabilities of NPC regarding C2 products in a flow cell setup by altering process parameters during electrode preparation. A dataset consisting of five electrode process parameters and five Faradaic efficiencies (FE) of major products was employed as the respective inputs and outputs. A machine learning-genetic algorithm (ML-GA) structure was subsequently used to discover NPC's maximum sum of C2-specific faradaic efficiencies. Our results show that the extreme gradient boosting regression (XGBR) algorithm would be the favorable option as the base model and is later combined with the evolutionary GA to predict the best process parameters for optimal C2 FE. A validation test using the best results shows that the sum of C2-specific FE (ethylene, ethanol and acetic acid) was 66.71%. The space-time yield of C2 products in this work, 4693 μmol/(h∗g), was higher than that of other Cu catalysts. The results of this work demonstrate the potential of machine learning methods in effectively finding the optimal NPC electrode process parameters for enhanced CO2RR results.Carbon dioxide reduction reaction (CO RR) 2 | Genetic algorithm (GA) | Machine learning (ML) | Nanoporous copper (NPC)[SDGs]SDG7[SDGs]SDG13A hybrid machine learning-genetic algorithm (ML-GA) model to predict optimal process parameters of nanoporous Cu for CO2 reductionjournal article10.1016/j.mtener.2023.1013522-s2.0-85164219269https://api.elsevier.com/content/abstract/scopus_id/85164219269