Application of machine learning and statistical approaches for optimization of heavy metals (Cd2+, Pb2+, Cu2+, and Zn2+) adsorption onto carbonized char prepared from PET plastic bottle waste

T. K. Chakraborty, Md Sozibur Rahman, Khandakar Rashedul Islam, Md. Simoon Nice, Baytune Nahar Netema, S. Zaman, Gopal Chandra Ghosh, Md Abu Rayhan, Md. Jahed Hassan Khan, Asadullah Munna, M. A. Haque, Himel Bosu, Nazmul Hossain, Monishanker Halder, Abu Shamim Khan
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Abstract

This study focuses on the probable use of graphene prepared from discarded polyethylene terephthalate plastic bottles for heavy metal (HM) adsorption. The prepared graphene is characterized by FE-SEM, EDX, and FTIR. Batch adsorption experiments were conducted with the influence of different operational conditions, namely, the time of contact (1–180 min), adsorbate concentration (25–300 mg/L), adsorbent dose (0.5–6 g/L), pH (3–7), and temperature (25–60 °C). High coefficient values (Cd (R2 = 0.99), Pb (R2 = 0.97), Cu (R2 = 0.94), and Zn (R2 = 0.98)) of the process optimization model suggested that this model was significant, where pH and adsorbent dose expressively showed stimulus removal efficiency of 86.68, 73.66, 67.10, and 57.04% for Cd, Pb, Cu, and Zn at pH (7). Furthermore, the machine learning approaches (artificial neural networks and BB-response surface methodology) revealed a good association between the tested and projected value. The maximum monolayer adsorption capacity of Cd, Pb, Cu, and Zn was 263.157, 78.740, 196.078, and 84.745 mg/g, respectively. Pseudo-second-order was the well-suited kinetics, where Langmuir and Freundlich isotherms could explain better the equilibrium adsorption data. A thermodynamic study shows that HM adsorption is favorable, exothermic, and spontaneous. Finally, this study indicates that graphene could be a potential candidate for the adsorption of HMs from wastewater.
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应用机器学习和统计方法优化 PET 塑料瓶废料制备的碳化炭对重金属(Cd2+、Pb2+、Cu2+ 和 Zn2+)的吸附效果
本研究的重点是利用废弃的聚对苯二甲酸乙二醇酯塑料瓶制备的石墨烯吸附重金属(HM)的可能性。利用 FE-SEM、EDX 和 FTIR 对制备的石墨烯进行了表征。在接触时间(1-180 分钟)、吸附剂浓度(25-300 毫克/升)、吸附剂剂量(0.5-6 克/升)、pH 值(3-7)和温度(25-60 °C)等不同操作条件的影响下,进行了批量吸附实验。工艺优化模型的高系数值(Cd (R2 = 0.99)、Pb (R2 = 0.97)、Cu (R2 = 0.94) 和 Zn (R2 = 0.98))表明该模型具有重要意义,其中 pH 值和吸附剂剂量对 Cd、Pb、Cu 和 Zn 在 pH 值(7)下的刺激去除率分别为 86.68%、73.66%、67.10% 和 57.04%。此外,机器学习方法(人工神经网络和 BB 响应面方法)显示,测试值与预测值之间存在良好的关联。镉、铅、铜和锌的最大单层吸附容量分别为 263.157、78.740、196.078 和 84.745 毫克/克。假二阶是最合适的动力学,Langmuir 和 Freundlich 等温线能更好地解释平衡吸附数据。热力学研究表明,HM 吸附是有利的、放热的和自发的。最后,这项研究表明,石墨烯可能是吸附废水中 HMs 的潜在候选材料。
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