Mustafa Mohamed, Epelle Emmanuel I, Macfarlane Andrew, Cusack Michael, Burns Anthony, Yaseen Mohammed
School of Computing, Engineering & Physical Sciences, University of the West of Scotland Paisley PA1 2BE UK
School of Engineering, Institute for Infrastructure and Environment, The University of Edinburgh Edinburgh EH9 3JL UK.
RSC Adv. 2025 Apr 22;15(16):12125-12151. doi: 10.1039/d5ra00489f. eCollection 2025 Apr 16.
Greywater constitutes a significant portion of urban wastewater and is laden with numerous emerging contaminants that have the potential to adversely impact public health and the ecosystem. Understanding greywater's characteristics and measuring the contamination levels is crucial for designing an effective recycling system. However, wastewater treatment is an intricate process involving significant uncertainties, leading to variations in effluent quality, costs, and environmental risks. This review addresses the existing knowledge gap in utilising artificial intelligence (AI) to enhance the laundry greywater recycling process and elucidates the optimal treatment technologies for the most prevalent micropollutants, including microplastics, nutrients, surfactants, synthetic dyes, pharmaceuticals, and organic matter. The development of laundry greywater treatment technologies is also highlighted with a critical discussion of physicochemical, biological, and advanced oxidation processes (AOPs) based on their functions, methods, associated limitations, and future trends. Artificial neural networks (ANN) stand out as the most prevalent and extensively applied AI model in the domain of wastewater treatment. Utilising ANN models mitigates certain limitations inherent in traditional adsorption models, particularly by offering enhanced predictive accuracy under varied operating conditions and multicomponent adsorption systems. Moreover, tremendous success has been recorded with the random forest (RF) model, exhibiting 100% prediction accuracy for both sessile and effluent microbial communities within a bioreactor. The precise prediction or simulation of membrane fouling behaviours using AI techniques is also of paramount importance for understanding fouling mechanisms and formulating efficient strategies to mitigate membrane fouling.
灰水占城市废水的很大一部分,并且含有大量新兴污染物,这些污染物有可能对公众健康和生态系统产生不利影响。了解灰水的特性并测量其污染水平对于设计有效的回收系统至关重要。然而,废水处理是一个复杂的过程,存在重大不确定性,导致出水水质、成本和环境风险存在差异。本综述阐述了利用人工智能(AI)加强洗衣灰水回收过程方面现有的知识差距,并阐明了针对最常见的微污染物(包括微塑料、营养物质、表面活性剂、合成染料、药物和有机物)的最佳处理技术。还重点介绍了洗衣灰水处理技术的发展,并基于其功能、方法、相关局限性和未来趋势对物理化学、生物和高级氧化工艺(AOPs)进行了批判性讨论。人工神经网络(ANN)是废水处理领域最普遍且应用最广泛的人工智能模型。利用ANN模型可减轻传统吸附模型固有的某些局限性,特别是在不同操作条件和多组分吸附系统下提供更高的预测准确性。此外,随机森林(RF)模型也取得了巨大成功,对生物反应器内的固定和流出微生物群落的预测准确率均达到100%。利用人工智能技术精确预测或模拟膜污染行为对于理解污染机制和制定减轻膜污染的有效策略也至关重要。