a Department of Hydrology , Indian Institute of Technology Roorkee , Roorkee , India.
Environ Technol. 2014 Nov-Dec;35(21-24):2988-99. doi: 10.1080/09593330.2014.927928. Epub 2014 Jun 24.
The present study aims at evaluating a small-scale brackish water reverse osmosis (RO) process using parameter optimization. Experiments were carried out using formulated artificial groundwater, and a predictive model was developed by using response surface methodology (RSM) for the optimization of input process parameters of brackish water RO process to simultaneously maximize water recovery and salt rejection while minimizing energy demand. The result of multiple response optimization along with analysis of variance for RSM predictions showed that the optimal water recovery (19.18%), total dissolved solids rejection (89.21%) and specific energy consumption (17.60 kWh/m³) occurred at 31.94 °C feed water temperature, 0.78 MPa feed pressure, 1500 mg/L feed salt concentration and 6.53 pH. Furthermore, confirmation of RSM predictions was carried out by an artificial neural network (ANN) model trained by RSM experimental data. Predicted values by both RSM and ANN modelling methodologies were compared and found within the acceptable range. Finally, a membrane validation experiment was carried out successfully at proposed optimal conditions, which proves the accuracy of employed RSM and ANN models. Present methodology can be used as a generalized way for the optimization of different RO membranes available in the market in terms of increased water recovery and salt rejection with least energy consumption to make it commercially competent.
本研究旨在通过参数优化评估小规模咸水反渗透(RO)工艺。实验采用配制的人工地下水进行,通过响应面法(RSM)开发了预测模型,以优化咸水 RO 工艺的输入工艺参数,从而在最小化能耗的同时同时最大化水回收率和盐截留率。RSM 预测的多响应优化结果和方差分析表明,在 31.94°C 的进水温度、0.78 MPa 的进水压力、1500mg/L 的进水盐浓度和 6.53 的 pH 值下,最佳水回收率(19.18%)、总溶解固体截留率(89.21%)和比能耗(17.60 kWh/m³)。此外,通过 RSM 实验数据训练的人工神经网络(ANN)模型对 RSM 预测进行了验证。通过 RSM 和 ANN 建模方法预测的值进行了比较,结果在可接受的范围内。最后,在提出的最佳条件下成功进行了膜验证实验,证明了所采用的 RSM 和 ANN 模型的准确性。本方法可以作为优化市场上不同 RO 膜的通用方法,以提高水回收率和盐截留率,同时降低能耗,使其具有商业竞争力。