College of Chemistry, Shahrood University of Technology, PO Box 36155-316, Shahrood, Iran.
College of Chemistry, Shahrood University of Technology, PO Box 36155-316, Shahrood, Iran.
Spectrochim Acta A Mol Biomol Spectrosc. 2022 Jan 15;265:120292. doi: 10.1016/j.saa.2021.120292. Epub 2021 Aug 21.
In this work, the Gypsophila aretioides (GYP-A) stem is used as a biosorbent to remove crystal violet (CV) by the static and dynamic systems from aqueous solutions; the biosorbent is interesting in green chemistry and, on the other hand, cheaper than activated carbon and does not have the limitation of industrialization. The effects of different operating parameters such as pH(3-9), biosorbent dosage(0.4-1.8 mg/L), and initial concentration of CV(100-250 mg/L) and time for the batch method and the bed height, inlet CV concentration(75-250 mg/L), and flow rate(3-8) on the breakthrough curves for the continuous method is investigated. The result of CV adsorption onto GYP-A using the batch method indicates that the model fits Freundlich > Temkin > Langmuir > R-D, and R equal 0.9953, 0.9847, 0.9161, 0.7909 were obtained for isotherm model, respectively. A pseudo-second-order model (R = 0.9995-0.9997) is recommended to describe the adsorption kinetics. The Thomas and Yoon-Nelson models were analyzed to study the adsorption kinetics. The random forest model shows an excellent ability to predict the parameters involved in the CV adsorption process with appropriate accuracy and useable for large data, robust against noise; it can be very effective in selecting important variables.
在这项工作中,采用丝石竹(GYP-A)茎作为生物吸附剂,通过静态和动态系统从水溶液中去除结晶紫(CV);生物吸附剂在绿色化学中很有趣,而且比活性炭便宜,没有工业化的限制。研究了不同操作参数对批处理法和填充床高度、入口 CV 浓度(75-250mg/L)和流速(3-8)的影响,包括 pH 值(3-9)、生物吸附剂用量(0.4-1.8mg/L)和 CV 初始浓度(100-250mg/L)和时间对连续法的穿透曲线的影响。使用批处理法对 GYP-A 吸附 CV 的结果表明,模型拟合 Freundlich > Temkin > Langmuir > R-D,分别得到等温模型的 R 值为 0.9953、0.9847、0.9161、0.7909。建议使用伪二阶模型(R = 0.9995-0.9997)来描述吸附动力学。分析了 Thomas 和 Yoon-Nelson 模型来研究吸附动力学。随机森林模型显示出出色的能力,可以准确预测 CV 吸附过程中涉及的参数,并且可以用于大数据,对噪声具有鲁棒性;它可以非常有效地选择重要变量。