Jawad Jasir, Hawari Alaa H, Zaidi Syed Javaid
Centre for Advanced Materials, Qatar University, P.O. Box 2713, Doha, Qatar.
Department of Civil and Architectural Engineering, Qatar University, P.O. Box 2713, Doha, Qatar.
Membranes (Basel). 2021 Jan 19;11(1):70. doi: 10.3390/membranes11010070.
The forward osmosis (FO) process is an emerging technology that has been considered as an alternative to desalination due to its low energy consumption and less severe reversible fouling. Artificial neural networks (ANNs) and response surface methodology (RSM) have become popular for the modeling and optimization of membrane processes. RSM requires the data on a specific experimental design whereas ANN does not. In this work, a combined ANN-RSM approach is presented to predict and optimize the membrane flux for the FO process. The ANN model, developed based on an experimental study, is used to predict the membrane flux for the experimental design in order to create the RSM model for optimization. A Box-Behnken design (BBD) is used to develop a response surface design where the ANN model evaluates the responses. The input variables were osmotic pressure difference, feed solution (FS) velocity, draw solution (DS) velocity, FS temperature, and DS temperature. The R2 obtained for the developed ANN and RSM model are 0.98036 and 0.9408, respectively. The weights of the ANN model and the response surface plots were used to optimize and study the influence of the operating conditions on the membrane flux.
正向渗透(FO)过程是一项新兴技术,因其能耗低且可逆污染程度较轻,已被视为海水淡化的一种替代方法。人工神经网络(ANNs)和响应面方法(RSM)在膜过程的建模和优化方面已变得很流行。RSM需要特定实验设计的数据,而ANN则不需要。在这项工作中,提出了一种ANN-RSM组合方法来预测和优化FO过程的膜通量。基于实验研究开发的ANN模型用于预测实验设计的膜通量,以便创建用于优化的RSM模型。采用Box-Behnken设计(BBD)来开发响应面设计,其中ANN模型评估响应。输入变量为渗透压差值、进料溶液(FS)流速、汲取溶液(DS)流速、FS温度和DS温度。所开发的ANN模型和RSM模型获得的R2分别为0.98036和0.9408。利用ANN模型的权重和响应面图来优化并研究操作条件对膜通量的影响。