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Optimization of arsenic removal from drinking water by electrocoagulation batch process using response surface methodology

机译:响应面法优化电凝间歇法去除饮用水中的砷

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In this investigation, arsenic removal from drinking water using electrocoagulation (EC) in a batch mode was studied by response surface methodology (RSM). The RSM was applied to optimize the operating variables viz. current density (CD, A/m~2), operating time (T_(EC), min) and arsenic concentration (C_o, μg/L) on arsenic removal in the EC process using iron electrodes. The combined effects of these variables were analyzed by the RSM using quadratic model for predicting the highest removal efficiency of arsenic from drinking water. The proposed model fitted very well with the experimental data. R~2 adjusted correlation coefficients (AdjR~2: 0.93) for arsenic removal efficiency showed a high significance of the model. The model predicted for a maximum removal of arsenic at the optimum operating conditions (112.3 μg/L, 5.64 A/m~2 and 5 min) after the EC process was 93.86% which corresponded to effluent arsenic concentration of 6.9 μg/L. The minimum operating cost (OC) of the EC process was 0.0664 €/m~3. This study clearly showed that the RSM was one of the suitable methods for the EC process to optimize the best operating conditions for target value of effluent arsenic concentration (<10μg/L) while keeping the OC (energy and electrode consumptions) to minimal.
机译:在这项研究中,通过响应表面方法(RSM)研究了使用电凝(EC)以分批方式从饮用水中去除砷的方法。应用RSM来优化操作变量viz。在使用铁电极的EC工艺中去除砷时的电流密度(CD,A / m〜2),工作时间(T_(EC),min)和砷浓度(C_o,μg/ L)。 RSM使用二次模型分析了这些变量的综合影响,以预测饮用水中砷的最高去除效率。提出的模型与实验数据非常吻合。 R〜2调整后的相关系数(AdjR〜2:0.93)对除砷效率具有较高的模型意义。该模型预测,在EC工艺之后,在最佳操作条件下(112.3μg/ L,5.64 A / m〜2和5分钟)砷的最大去除率为93.86%,对应于废水中砷的浓度为6.9μg/ L。 EC工艺的最低运行成本(OC)为0.0664€/ m〜3。这项研究清楚地表明,RSM是用于EC工艺的最佳方法之一,该方法可针对废水中砷的目标值(<10μg/ L)优化最佳操作条件,同时将OC(能量和电极消耗)保持在最低水平。

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