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Research Article

Toward modeling of performance of hydrogen selective mixed matrix membrane using artificial neural network

Pages 3036-3043 | Received 27 May 2019, Accepted 04 Aug 2019, Published online: 16 Aug 2019
 

ABSTRACT

Recently hydrogen gas introduced as valuable gas which could be recovered from various streams and membrane science is one of the applicable and economically attractive way for the separation of hydrogen. In this present contribution, artificial neural network modeling was used to model the gas permeability of hydrogen at various operational condition and different composition of feed. Also, multi-layer perceptron (MLP) used as optimization algorithm for improving the accuracy of developed ANN model. Feed pressure, gas composition and weight percent of nano filler was used as input parameter and hydrogen selectivity is the output of the model. Modeling results show that ANN modeling shows best performance among the all models reported in the open literature. Moreover, statistical parameters resulted from ANN modeling compared with other artificial intelligence-based models. Coefficient of determination, root-mean-square error, and average absolute relative deviation of ANN modeling is 0.9984, 0.01184, and 4.85, respectively, which shows the accuracy and robustness of the developed model for the prediction of hydrogen selectivity.

Additional information

Notes on contributors

Jingwen Zhang

Jingwen Zhang is now a professor in basic Department of Chongqing Creation Vocational College in china.

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