环氧氯丙烷
活性炭
Box-Behnken设计
壳聚糖
吸附
复合数
材料科学
二氧化碳
化学工程
中心组合设计
响应面法
复合材料
化学
色谱法
有机化学
工程类
作者
Vorrada Loryuenyong,Worranuch Nakhlo,Praifha Srikaenkaew,Panpassa Yaidee,Apiluck Eiad‐ua,Achanai Buasri
标识
DOI:10.1016/j.cscee.2025.101144
摘要
Spent coffee grounds (SCGs) can be used as biomass to synthesize activated carbon (AC) through physical carbonization and chemical activation. Epichlorohydrin (EP) was used to create the chitosan (CS) and AC biopolymer composites via emulsion crosslinking. The main goal of this research is to boost the efficiency of CS/AC/EP composite materials for carbon dioxide (CO2) capture by adsorption. The impact of CS content, AC concentration, and EP quantity on CO2 removal was studied applying the Box–Behnken design (BBD)-based response surface methodology (RSM) and artificial neural network (ANN)-based artificial intelligence (AI) models. The conditions for the adsorption process were optimized to forecast the maximum CO2 adsorption utilizing BBD and ANN approaches. Optimal process parameters of 15.11 g CS content, 38.95 %w/w AC concentration, and 7.16 g EP quantity resulted in a CO2 adsorbed of approximately 7.62 cm3/g. The coefficient of determination (R2) for the BBD model was 0.9995, while the correlation coefficient (R) for the ANN model was 0.9992. The CO2 adsorption efficiency of adsorbents is enhanced by increasing the amounts of AC and EP. This study provides a technique for predicting and improving CO2 capture through the development of porous polymer composite beads (CBs) with a high CO2 adsorption capacity.
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