Department of Chemical Engineering, Faculty of Engineering, Ferdowsi University of Mashhad, Mashhad, Iran.
Department of Chemical Engineering, Faculty of Engineering, Arak University, Arak, 38156-8-8349, Iran.
Chemosphere. 2021 Mar;267:129268. doi: 10.1016/j.chemosphere.2020.129268. Epub 2020 Dec 11.
Application of machine-learning methods to assess the batch adsorption of malachite green (MG) dye on chitosan/polyvinyl alcohol/zeolite imidazolate frameworks membrane adsorbents (CPZ) was investigated in this study. Our previous research results proved the suitability of the CPZ membranes for wastewater decoloring. In the current work, the residence time was combined with the other operational variables i.e., pH, initial dye concentration, and adsorbent dose (AD), to obtain the possible interactions involved in nonequilibrium adsorption. Two well-known soft-computing approaches, multi-layer perceptron adaptive neural network (MLP-ANN) and adaptive neural fuzzy inference system (ANFIS), were selected among different machine learning alternatives and then, comprehensively compared with each other considering reliability and accuracy for a 60 number of runs. The ANFIS structure with nine centers of clusters could predict the adsorption performance better than the ANN approach. Root mean square error (RMSE) and R-square were obtained 0.01822 and 0.9958 for the test data, respectively. The interpretability test resulted a linear trend predicted by the model and disclosed that the maximum value of the removal efficiency (99.5%) could be obtained when the amount of the inputs set to the upper limit. Lastly, the sensitivity analysis uncovered that the residence time has a decisive effect (relevancy factor > 80%) on the removal efficiency. According to the results, ANFIS is an effective and reliable tool to optimize and intensify the membrane adsorption process.
本研究应用机器学习方法评估了壳聚糖/聚乙烯醇/沸石咪唑酯骨架膜吸附剂(CPZ)对孔雀石绿(MG)染料的批量吸附。我们之前的研究结果证明了 CPZ 膜适用于废水脱色。在目前的工作中,停留时间与其他操作变量(即 pH 值、初始染料浓度和吸附剂剂量(AD))相结合,以获得非平衡吸附中可能涉及的相互作用。在不同的机器学习方法中选择了两种知名的软计算方法,多层感知器自适应神经网络(MLP-ANN)和自适应神经模糊推理系统(ANFIS),然后综合比较了它们的可靠性和准确性,共进行了 60 次运行。具有九个聚类中心的 ANFIS 结构可以更好地预测吸附性能,对于测试数据,均方根误差(RMSE)和 R 方分别为 0.01822 和 0.9958。解释性测试表明模型预测呈线性趋势,并揭示了当输入量设置为上限时,去除效率的最大值(99.5%)可以达到。最后,敏感性分析表明停留时间对去除效率有决定性影响(相关性系数>80%)。根据结果,ANFIS 是优化和强化膜吸附过程的有效可靠工具。