AlSawaftah Nour, Abuwatfa Waad, Darwish Naif, Husseini Ghaleb A
Department of Chemical and Biological Engineering, College of Engineering, American University of Sharjah, Sharjah P.O. Box 26666, United Arab Emirates.
Materials Science and Engineering Program, College of Arts and Sciences, American University of Sharjah, Sharjah P.O. Box 26666, United Arab Emirates.
Membranes (Basel). 2022 Dec 15;12(12):1271. doi: 10.3390/membranes12121271.
Water scarcity is an increasing problem on every continent, which instigated the search for novel ways to provide clean water suitable for human use; one such way is desalination. Desalination refers to the process of purifying salts and contaminants to produce water suitable for domestic and industrial applications. Due to the high costs and energy consumption associated with some desalination techniques, membrane-based technologies have emerged as a promising alternative water treatment, due to their high energy efficiency, operational simplicity, and lower cost. However, membrane fouling is a major challenge to membrane-based separation as it has detrimental effects on the membrane's performance and integrity. Based on the type of accumulated foulants, fouling can be classified into particulate, organic, inorganic, and biofouling. Biofouling is considered the most problematic among the four fouling categories. Therefore, proper characterization and prediction of biofouling are essential for creating efficient control and mitigation strategies to minimize the damage associated with biofouling. Moreover, the use of artificial intelligence (AI) in predicting membrane fouling has garnered a great deal of attention due to its adaptive capability and prediction accuracy. This paper presents an overview of the membrane biofouling mechanisms, characterization techniques, and predictive methods with a focus on AI-based techniques, and mitigation strategies.
水资源短缺在各大洲都日益成为一个问题,这促使人们寻找提供适合人类使用的清洁水的新方法;其中一种方法就是海水淡化。海水淡化是指去除盐分和污染物以生产适用于家庭和工业应用的水的过程。由于一些海水淡化技术成本高且能耗大,基于膜的技术因其高能效、操作简单和成本较低,已成为一种有前景的替代水处理方法。然而,膜污染是基于膜的分离面临的一个重大挑战,因为它会对膜的性能和完整性产生不利影响。根据积累的污垢类型,污染可分为颗粒污染、有机污染、无机污染和生物污染。生物污染被认为是这四种污染类型中问题最大的。因此,对生物污染进行适当的表征和预测对于制定有效的控制和缓解策略以尽量减少与生物污染相关的损害至关重要。此外,由于其自适应能力和预测准确性,人工智能(AI)在预测膜污染方面的应用受到了广泛关注。本文概述了膜生物污染机制、表征技术和预测方法,重点是基于人工智能的技术以及缓解策略。