Malashin Ivan, Daibagya Daniil, Tynchenko Vadim, Gantimurov Andrei, Nelyub Vladimir, Borodulin Aleksei
Artificial Intelligence Technology Scientific and Education Center, Bauman Moscow State Technical University, 105005 Moscow, Russia.
P.N. Lebedev Physical Institute of the Russian Academy of Sciences, 119991 Moscow, Russia.
Polymers (Basel). 2024 Apr 25;16(9):1204. doi: 10.3390/polym16091204.
Nafion, a versatile polymer used in electrochemistry and membrane technologies, exhibits complex behaviors in saline environments. This study explores Nafion membrane's IR spectra during soaking and subsequent drying processes in salt solutions at various concentrations. Utilizing the principles of Fick's second law, diffusion coefficients for these processes are derived via exponential approximation. By harnessing machine learning (ML) techniques, including the optimization of neural network hyperparameters via a genetic algorithm (GA) and leveraging various regressors, we effectively pinpointed the optimal model for predicting diffusion coefficients. Notably, for the prediction of soaking coefficients, our model is composed of layers with 64, 64, 32, and 16 neurons, employing ReLU, ELU, sigmoid, and ELU activation functions, respectively. Conversely, for drying coefficients, our model features two hidden layers with 16 and 12 neurons, utilizing sigmoid and ELU activation functions, respectively.
纳滤膜是一种用于电化学和膜技术的多功能聚合物,在盐溶液环境中表现出复杂的行为。本研究探讨了纳滤膜在不同浓度盐溶液中的浸泡和随后干燥过程中的红外光谱。利用菲克第二定律的原理,通过指数近似推导这些过程的扩散系数。通过利用机器学习(ML)技术,包括通过遗传算法(GA)优化神经网络超参数并利用各种回归器,我们有效地确定了预测扩散系数的最佳模型。值得注意的是,对于浸泡系数的预测,我们的模型由具有64、64、32和16个神经元的层组成,分别采用ReLU、ELU、sigmoid和ELU激活函数。相反,对于干燥系数,我们的模型具有两个分别具有16和12个神经元的隐藏层,分别使用sigmoid和ELU激活函数。