Petroleum and Chemical Engineering, Universiti Teknologi Brunei, Brunei Darussalam.
Department of Chemical Engineering, Faculty of Engineering, University of Ilam, Ilam, Iran.
J Environ Manage. 2018 Oct 1;223:517-529. doi: 10.1016/j.jenvman.2018.06.027. Epub 2018 Jun 27.
Presence of pigments and dyes in water bodies are growing tremendously and pose as toxic materials and have severe health effects on human and aquatic creatures. Treatments methods for removal of these toxic dyes along with other pollutants are growing in different dimensions, among which adsorption was found a cheaper and efficient method. In this study, the performance of polyaniline-based nano-adsorbent for removal of methyl orange (MO) dye from wastewater in a batch adsorption process is studied. Along with this to minimize the number of experiments and obtain optimal conditions, a multivariate predictive model based on response surface methodology (RSM) is developed. This is compared with data-driven modeling using the artificial neural network (ANN) which is integrated with differential evolution optimization (DEO) for prediction of the adsorption of MO. The interactive effects on MO removal efficiency with respect to independent process variables were investigated. The fit of the predictive model was found to good enough with R = 0.8635. The optimal ANN architecture with 5-12-1 topology resulted in higher R and lower RMSE of 0.9475 and 0.1294 respectively. Pearson's Chi-square measure which provides a good measurement scale for weighing the goodness of fit is found to be 0.005 and 0.038 for RSM and ANN-DEO respectively, and other statistical metrics evaluated in this study further confirms that the ANN-DEO is very superior over RSM for model predictions.
水体中颜料和染料的存在正在迅速增加,它们是有毒物质,对人类和水生生物的健康有严重影响。去除这些有毒染料和其他污染物的处理方法正在不同层面上得到发展,其中吸附被发现是一种更便宜、更有效的方法。在这项研究中,研究了基于聚苯胺的纳米吸附剂在批量吸附过程中去除废水中甲基橙(MO)染料的性能。为了尽量减少实验次数并获得最佳条件,还开发了基于响应面法(RSM)的多元预测模型。将其与使用人工神经网络(ANN)集成差分进化优化(DEO)的数据分析驱动建模进行了比较,用于预测 MO 的吸附。研究了独立过程变量对 MO 去除效率的交互影响。预测模型的拟合度足够好,R 值为 0.8635。具有 5-12-1 拓扑结构的最佳 ANN 架构导致更高的 R 值和更低的 RMSE 值,分别为 0.9475 和 0.1294。Pearson 卡方度量提供了一个很好的拟合优度衡量标准,对于 RSM 和 ANN-DEO,其值分别为 0.005 和 0.038,本研究中评估的其他统计指标进一步证实,ANN-DEO 在模型预测方面优于 RSM。