Ding Yizhe, Sun Qiya, Lin Yuqian, Ping Qian, Peng Nuo, Wang Lin, Li Yongmei
State Key Laboratory of Pollution Control and Resource Reuse, Key Laboratory of Yangtze River Water Environment, College of Environmental Science and Engineering, Tongji University, Shanghai 200092, PR China.
State Key Laboratory of Pollution Control and Resource Reuse, Key Laboratory of Yangtze River Water Environment, College of Environmental Science and Engineering, Tongji University, Shanghai 200092, PR China; Shanghai Institute of Pollution Control and Ecological Security, Shanghai 200092, PR China.
Water Res. 2024 Apr 1;253:121267. doi: 10.1016/j.watres.2024.121267. Epub 2024 Feb 5.
Water/wastewater ((waste)water) disinfection, as a critical process during drinking water or wastewater treatment, can simultaneously inactivate pathogens and remove emerging organic contaminants. Due to fluctuations of (waste)water quantity and quality during the disinfection process, conventional disinfection models cannot handle intricate nonlinear situations and provide immediate responses. Artificial intelligence (AI) techniques, which can capture complex variations and accurately predict/adjust outputs on time, exhibit excellent performance for (waste)water disinfection. In this review, AI application data within the disinfection domain were searched and analyzed using CiteSpace. Then, the application of AI in the (waste)water disinfection process was comprehensively reviewed, and in addition to conventional disinfection processes, novel disinfection processes were also examined. Then, the application of AI in disinfection by-products (DBPs) formation control and disinfection residues prediction was discussed, and unregulated DBPs were also examined. Current studies have suggested that among AI techniques, fuzzy logic-based neuro systems exhibit superior control performance in (waste)water disinfection, while single AI technology is insufficient to support their applications in full-scale (waste)water treatment plants. Thus, attention should be paid to the development of hybrid AI technologies, which can give full play to the characteristics of different AI technologies and achieve a more refined effectiveness. This review provides comprehensive information for an in-depth understanding of AI application in (waste)water disinfection and reducing undesirable risks caused by disinfection processes.
水/废水((废)水)消毒作为饮用水或废水处理过程中的关键环节,可同时灭活病原体并去除新出现的有机污染物。由于消毒过程中(废)水的水量和水质存在波动,传统消毒模型无法处理复杂的非线性情况并提供即时响应。人工智能(AI)技术能够捕捉复杂变化并及时准确地预测/调整输出,在(废)水消毒方面表现出卓越性能。在本综述中,使用CiteSpace搜索并分析了消毒领域内的AI应用数据。然后,全面综述了AI在(废)水消毒过程中的应用,除了传统消毒过程外,还对新型消毒过程进行了研究。接着,讨论了AI在消毒副产物(DBPs)形成控制和消毒残余物预测方面的应用,同时也研究了未受监管的DBPs。当前研究表明,在AI技术中,基于模糊逻辑的神经系统在(废)水消毒中表现出卓越的控制性能,而单一的AI技术不足以支持其在全规模(废)水处理厂中的应用。因此,应关注混合AI技术的发展,其能够充分发挥不同AI技术的特点并实现更精细的效果。本综述提供了全面信息,有助于深入了解AI在(废)水消毒中的应用,并降低消毒过程带来的不良风险。