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采用批次工艺用罗望子木活性炭去除水溶液中六价铬的响应面建模与优化。

Response surface modeling and optimization of chromium(VI) removal from aqueous solution using Tamarind wood activated carbon in batch process.

机构信息

Department of Chemical Engineering, Indian Institute of Technology, Kharagpur, PO Kharagpur Technology, West Bengal Pin 721302, India.

出版信息

J Hazard Mater. 2009 Dec 30;172(2-3):818-25. doi: 10.1016/j.jhazmat.2009.07.075. Epub 2009 Jul 25.

Abstract

The present paper discusses response surface methodology (RSM) as an efficient approach for predictive model building and optimization of chromium adsorption on developed activated carbon. In this work the application of RSM is presented for optimizing the removal of Cr(VI) ions from aqua solutions using activated carbon as adsorbent. All experiments were performed according to statistical designs in order to develop the predictive regression models used for optimization. The optimization of adsorption of chromium on activated carbon was carried out to ensure a high adsorption efficiency at low adsorbent dose and high initial concentration of Cr(VI). While the goal of adsorption of chromium optimization was to improve adsorption conditions in batch process, i.e., to minimize the adsorbent dose and to increase the initial concentration of Cr(VI). In the adsorption experiments a laboratory developed Tamarind wood activated carbon made of chemical activation (zinc chloride) was used. A 2(4) full factorial central composite design experimental design was employed. Analysis of variance (ANOVA) showed a high coefficient of determination value (R(2)=0.928) and satisfactory prediction second-order regression model was derived. Maximum chromium removal efficiency was predicted and experimentally validated. The optimum adsorbent dose, temperature, initial concentration of Cr(VI) and initial pH of the Cr(VI) solution were found to be 4.3g/l, 32 degrees C, 20.15 mg/l and 5.41 respectively. Under optimal value of process parameters, high removal (>89%) was obtained for Cr(VI).

摘要

本论文讨论了响应面法(RSM)作为一种有效的预测模型建立和优化方法,用于研究开发的活性炭对铬的吸附作用。在这项工作中,RSM 的应用被提出用于优化使用活性炭作为吸附剂从水溶液中去除 Cr(VI)离子。所有实验均按照统计设计进行,以开发用于优化的预测回归模型。对活性炭上铬的吸附进行了优化,以确保在低吸附剂剂量和高 Cr(VI)初始浓度下具有高吸附效率。而优化铬的吸附条件的目的是改善批处理过程中的吸附条件,即最小化吸附剂剂量并增加 Cr(VI)的初始浓度。在吸附实验中,使用了实验室开发的由化学活化(氯化锌)制成的罗望子木活性炭。采用了 2(4)完全析因中心组合设计实验设计。方差分析(ANOVA)显示出高决定系数值(R(2)=0.928)和令人满意的预测二阶回归模型。预测并实验验证了最大铬去除效率。发现最佳吸附剂剂量、温度、Cr(VI)的初始浓度和 Cr(VI)溶液的初始 pH 值分别为 4.3g/l、32°C、20.15mg/l 和 5.41。在最佳工艺参数值下,Cr(VI)的去除率高达>89%。

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