Abdollahi Seyyed Amirreza, Andarkhor AmirReza, Pourahmad Afham, Alibak Ali Hosin, Alobaid Falah, Aghel Babak
Faculty of Mechanical Engineering, University of Tabriz, Tabriz 5166616471, Iran.
Department of Chemistry, Payam Noor University (Bushehr Branch), Bushehr 1688, Iran.
Membranes (Basel). 2023 May 18;13(5):526. doi: 10.3390/membranes13050526.
Separating carbon dioxide (CO) from gaseous streams released into the atmosphere is becoming critical due to its greenhouse effect. Membrane technology is one of the promising technologies for CO capture. SAPO-34 filler was incorporated in polymeric media to synthesize mixed matrix membrane (MMM) and enhance the CO separation performance of this process. Despite relatively extensive experimental studies, there are limited studies that cover the modeling aspects of CO capture by MMMs. This research applies a special type of machine learning modeling scenario, namely, cascade neural networks (CNN), to simulate as well as compare the CO/CH selectivity of a wide range of MMMs containing SAPO-34 zeolite. A combination of trial-and-error analysis and statistical accuracy monitoring has been applied to fine-tune the CNN topology. It was found that the CNN with a 4-11-1 topology has the highest accuracy for the modeling of the considered task. The designed CNN model is able to precisely predict the CO/CH selectivity of seven different MMMs in a broad range of filler concentrations, pressures, and temperatures. The model predicts 118 actual measurements of CO/CH selectivity with an outstanding accuracy (i.e., AARD = 2.92%, MSE = 1.55, R = 0.9964).
由于二氧化碳(CO₂)的温室效应,从排放到大气中的气流中分离二氧化碳变得至关重要。膜技术是一种很有前景的二氧化碳捕集技术。将SAPO-34填料掺入聚合物介质中以合成混合基质膜(MMM),并提高该过程的二氧化碳分离性能。尽管有相对广泛的实验研究,但涵盖MMM捕集二氧化碳建模方面的研究却很有限。本研究应用一种特殊类型的机器学习建模方案,即级联神经网络(CNN),来模拟并比较一系列含SAPO-34沸石的MMM的CO₂/CH₄选择性。采用试错分析和统计精度监测相结合的方法对CNN拓扑结构进行微调。结果发现,具有4-11-1拓扑结构的CNN对所考虑任务的建模具有最高的精度。所设计的CNN模型能够在广泛的填料浓度、压力和温度范围内精确预测七种不同MMM的CO₂/CH₄选择性。该模型以极高的精度预测了118次CO₂/CH₄选择性的实际测量值(即平均绝对相对偏差 = 2.92%,均方误差 = 1.55,相关系数 = 0.9964)。