Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, Pakistan.
Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, Pakistan.
Environ Res. 2023 Jan 1;216(Pt 1):114346. doi: 10.1016/j.envres.2022.114346. Epub 2022 Sep 25.
The disproportionate potency of dyes in textile wastewater is a global concern that needs to be contended. The present study comprehensively investigates the adsorption of Navy-Blue dye (NB) onto bentonite clay based geopolymer/FeO nanocomposite (GFC) using novel statistical and machine learning frameworks in the following steps; (1) synthesis and characterization of GFC, (2) experimental testing and modelling of NB adsorption onto GFC following Box-Behnken design and three response surface prediction models namely stepwise regression analysis (SRA), Support vector regression (SVR) and Kriging (KR), (3) parametric, sensitivity, thermodynamic and kinetic analysis of pH, GFC dose and contact time on adsorption performance, and (4) finding global parametric solution of the process using Latin Hypercube, Sobol and Taguchi orthogonal array sampling and combining SRA-SVR-KR predictions with novel hybrid simulated annealing (SA)-desirability function (DF) approach. Under the given testing range, parametric/sensitivity analysis revealed the critical role of pH over others accounting ∼37% relative effect and primarily derived the NB adsorption. The statistical evaluation of models revealed that all models could be utilized for elucidating and predicting the NB removal using GFC, however, SVR accuracy was better among others for this particular work, as the overall computed root mean squared error was only 0.55 while the error frequency counts remained <1 for 90% predictions. GFC showed 86.29% NB removal for the given experimental matrix which can be elevated to 96.25% under optimum conditions. The NB adsorption was found to be physical, spontaneous, favorable and obeyed pseudo-2nd order kinetics. The results demonstrate the suitability of GFC as the promising cost-effective and efficient alternative for the decolourization of urban and drinking water streams and elucidate the potential of machine learning models for accurate prediction & elevation of adsorption processes with less experimentation in water purification applications.
纺织废水中染料的不成比例的效力是一个全球关注的问题,需要加以解决。本研究采用新颖的统计和机器学习框架,全面研究了海军蓝染料(NB)在基于地质聚合物/FeO 纳米复合材料(GFC)的膨润土上的吸附作用,具体步骤如下:(1)GFC 的合成与表征,(2)采用 Box-Behnken 设计和三种响应面预测模型(逐步回归分析(SRA)、支持向量回归(SVR)和克里金(KR))对 NB 吸附到 GFC 上的实验测试和建模,(3)对 pH 值、GFC 剂量和接触时间对吸附性能的参数、敏感性、热力学和动力学分析,(4)使用拉丁超立方、Sobol 和 Taguchi 正交数组抽样以及将 SRA-SVR-KR 预测与新型混合模拟退火(SA)-可接受性函数(DF)方法相结合,寻找该过程的全局参数解决方案。在所给的测试范围内,参数/敏感性分析表明 pH 值的作用比其他因素更为关键,约占 37%的相对影响,主要源于 NB 的吸附。模型的统计评估表明,所有模型都可用于阐明和预测使用 GFC 去除 NB,但对于这项特定工作,SVR 更为准确,因为总的计算均方根误差仅为 0.55,而对于 90%的预测,误差频率计数保持<1。在给定的实验矩阵中,GFC 显示出 86.29%的 NB 去除率,在最佳条件下可提高到 96.25%。NB 的吸附被发现是物理的、自发的、有利的,并且符合准二级动力学。结果表明,GFC 是一种有前途的、经济高效且有效的替代物,可用于去除城市和饮用水中的染料,并阐明机器学习模型在水净化应用中具有减少实验次数即可进行准确预测和提高吸附过程的潜力。