电凝法处理洗车站废水:化学需氧量和亚甲基蓝活性物质还原效率预测统计模型的提出

IF 4.3 Q1 ENVIRONMENTAL SCIENCES
Marcelo Guerreiro Crizel*, Tiago Marquadt Barreto, Gustavo Lopes Colpani, Luciano Luiz Silva, Márcio Antônio Fiori and Josiane Maria Muneron de Mello, 
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引用次数: 0

摘要

汽车和摩托车清洗过程中产生的废水含有几种污染物,包括金属、油、润滑脂、表面活性剂(MBAS)、微生物、高化学需氧量(COD)和浊度。如果处理不当,这些化合物会造成严重的环境破坏。本研究采用EC工艺处理该废水。采用实验设计方法建立了预测模型。考察了铝电极面积、电极间距和处理时间对实际洗车站出水中COD和MBAS去除率的影响。在10.0 V的电势下测试该过程30至330分钟。采用33全因子设计建立数学模型,并进行了实验验证。在最佳预测模型条件下(1.0 cm电极间距,18.0 cm2面积,330 min), COD降低90%,mba降低97%。验证的模型和优化的参数为VWSE处理电解反应器的选型和设计提供了依据。具有统计验证的33全因子设计提供了预测能力和工艺优化,评估了EC工艺的效率,并允许预测不同操作条件下的系统行为。电凝处理洗车废水的污染物去除率高达97%,通过实验设计验证了预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Treatment of Effluents from Vehicle Wash Stations with the Electrocoagulation Process: Proposition of a Predictive Statistical Model for the Estimation of the Efficiency of Chemical Oxygen Demand and Methylene Blue Active Substance Reduction

The effluent generated in car and motorcycle wash processes contains several contaminants, including metals, oils, greases, surfactants (MBAS), microorganisms, high chemical oxygen demand (COD), and turbidity. When not properly treated, these compounds can cause severe environmental damage. In this study, the EC process was applied to treat this effluent. A predictive model was obtained using an experimental design methodology. The effects of the area and distance between aluminum electrodes and treatment time on the percentage reduction of COD and MBAS in a real vehicle wash station effluent (VWSE) were evaluated. The process was tested for 30 to 330 min at an electrical potential of 10.0 V. A 33 full factorial design was used to develop the mathematical model, which was experimentally validated. Under the best-predicted model conditions (1.0 cm electrode spacing, 18.0 cm2 area, and 330 min), COD reductions of 90% and MBAS reductions of 97% were achieved. The validated models and optimized parameters support the sizing and design of the electrolytic reactors for VWSE treatment. The 33 full factorial design with statistical validation provided predictive capability and process optimization, evaluating the efficiency of the EC process and also allowed the prediction of system behavior under different operating conditions.

Electrocoagulation treats car wash effluent with up to 97% pollutant removal, validating a predictive model through experimental design.

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CiteScore
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