Optimization of Pb (II) Ion Removal from Synthetic Wastewater Using Dead (Chlorophyta) Macroalgae: Prediction by RSM Method

Daad S. Dawood, Abeer I. Alwared, Sara S. Alkhazraji, Wameath S. Abdul‐Majeed
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引用次数: 0

Abstract

The Pb2+ ions biosorption removal onto dead biomass of Chlorophyta algae is optimized by employing response surface methodology (RSM). Central composite design (CCD)-based experiments were carried out, and RSM was used to evaluate the results. The effects of contact time (15-120min), with pH solution (2-7), initial lead concentration (25-100 mg/L), biomass dose (0.01-1 g/100 mL), agitation speed (100-300 rpm) on the biosorption process were investigated. The optimal conditions of the experimental, data were pH (5), metal concentration (50mg/L), dosage (0.2g/100mL), agitation speed (200 rpm), and contact time of 120 min with constant particle size (63 mm), which gave 98.88% removal efficiency. All the variables and reactions in the biosorption experiments were evaluated using the desirability function to determine the optimal point at which the desired parameters may be attained. The promising results obtained indicate the potential use of Chlorphyta green macroalgae to treat industrial wastewater polluted with toxic metals.
利用死(叶绿体)大型藻类优化合成废水中铅(II)离子的去除:用 RSM 方法进行预测
采用响应面方法(RSM)优化了叶绿藻死亡生物量对 Pb2+ 离子的生物吸附去除。实验以中央复合设计(CCD)为基础,采用 RSM 评估结果。研究了接触时间(15-120 分钟)、溶液 pH 值(2-7)、初始铅浓度(25-100 毫克/升)、生物量剂量(0.01-1 克/100 毫升)、搅拌速度(100-300 转/分钟)对生物吸附过程的影响。实验数据的最佳条件为 pH 值(5)、金属浓度(50 毫克/升)、用量(0.2 克/100 毫升)、搅拌速度(200 转/分钟)和 120 分钟的接触时间,颗粒大小不变(63 毫米),去除效率为 98.88%。利用可取函数对生物吸附实验中的所有变量和反应进行了评估,以确定达到预期参数的最佳点。所取得的良好结果表明,绿藻具有处理有毒金属污染的工业废水的潜力。
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