Molecular Sciences Institute, School of Chemistry, University of the Witwatersrand, Private Bag X3, 2050, Johannesburg, South Africa.
Department of Chemical Engineering, Lee Kong Chian Faculty of Engineering and Science, Universiti Tunku Abdul Rahman, Jalan Sungai Long, Kajang 43000, Selangor, Malaysia; Centre of Photonics and Advanced Materials Research, Universiti Tunku Abdul Rahman, Kampar 31900, Perak, Malaysia.
Chemosphere. 2024 Jul;360:142347. doi: 10.1016/j.chemosphere.2024.142347. Epub 2024 May 15.
Textile and cosmetic industries generate large amounts of dye effluents requiring treatment before discharge. This wastewater contains high levels of reactive dyes, low to none-biodegradable materials and chemical residues. Technically, dye wastewater is characterised by high chemical and biological oxygen demand. Biological, physical and pressure-driven membrane processes have been extensively used in textile wastewater treatment plants. However, these technologies are characterised by process complexity and are often costly. Also, process efficiency is not achieved in cost-effective biochemical and physical treatment processes. Membrane distillation (MD) emerged as a promising technology harnessing challenges faced by pressure-driven membrane processes. To ensure high cost-effectiveness, the MD can be operated by solar energy or low-grade waste heat. Herein, the MD purification of dye wastewater is comprehensively and yet concisely discussed. This involved research advancement in MD processes towards removal of dyes from industrial effluents. Also, challenges faced by this process with a specific focus on fouling are reviewed. Current literature mainly tested MD setups in the laboratory scale suggesting a deep need of further optimization of membrane and module designs in near future, especially for textile wastewater treatment. There is a need to deliver customized high-porosity hydrophobic membrane design with the appropriate thickness and module configuration to reduce concentration and temperature polarization (CP and TP). Also, energy loss should be minimized while increasing dye rejection and permeate flux. Although laboratory experiments remain pivotal in optimizing the MD process for treating dye wastewater, the nature of their time intensity poses a challenge. Given the multitude of parameters involved in MD process optimization, artificial intelligence (AI) methodologies present a promising avenue for assistance. Thus, AI-driven algorithms have the potential to enhance overall process efficiency, cutting down on time, fine-tuning parameters, and driving cost reductions. However, achieving an optimal balance between efficiency enhancements and financial outlays is a complex process. Finally, this paper suggests a research direction for the development of effective synthetic and natural dye removal from industrially discharged wastewater.
纺织和化妆品行业产生大量需要处理的染料废水才能排放。这些废水中含有高浓度的活性染料、低生物降解或不可生物降解的物质以及化学残留物。从技术上讲,染料废水的特点是化学需氧量和生化需氧量都很高。生物、物理和压力驱动的膜工艺已广泛应用于纺织废水处理厂。然而,这些技术的特点是工艺复杂,而且往往成本高昂。此外,在具有成本效益的生化和物理处理过程中,处理效率无法实现。膜蒸馏(MD)作为一种有前途的技术,利用了压力驱动膜工艺所面临的挑战而出现。为了确保高成本效益,可以利用太阳能或低品位废热来运行 MD。本文全面而简洁地讨论了 MD 净化染料废水。这涉及到 MD 工艺在从工业废水中去除染料方面的研究进展。此外,还回顾了该过程面临的挑战,特别是重点关注结垢问题。目前的文献主要在实验室规模上测试 MD 装置,这表明在不久的将来,特别是在处理纺织废水方面,非常需要进一步优化膜和模块设计。需要提供具有适当厚度和模块配置的定制高孔隙率疏水性膜设计,以减少浓度和温度极化(CP 和 TP)。同时,应在增加染料截留率和渗透通量的同时,尽量减少能量损失。虽然实验室实验对于优化 MD 工艺处理染料废水仍然至关重要,但它们的时间强度性质带来了挑战。鉴于 MD 工艺优化涉及的参数众多,人工智能(AI)方法提供了一个有前途的辅助途径。因此,AI 驱动的算法有可能提高整体工艺效率,缩短时间,调整参数,并降低成本。然而,在提高效率和降低财务支出之间取得最佳平衡是一个复杂的过程。最后,本文提出了一个研究方向,用于开发从工业排放废水中有效去除合成和天然染料的方法。