Jari Yassine, Najid Noura, Necibi Mohamed Chaker, Gourich Bouchaib, Vial Christophe, Elhalil Alaâeddine, Kaur Parminder, Mohdeb Idriss, Park Yuri, Hwang Yuhoon, Garcia Alejandro Ruiz, Roche Nicolas, El Midaoui Azzeddine
International Water Research Institute (IWRI), Mohammed VI Polytechnic University, Ben Guerir, Morocco.
Laboratory of Process and Environmental Engineering, Higher School of Technology, Hassan II University of Casablanca, Morocco.
J Environ Manage. 2025 Jan;373:123703. doi: 10.1016/j.jenvman.2024.123703. Epub 2024 Dec 20.
The increasing presence of emerging pollutants (EPs) in water poses significant environmental and health risks, necessitating effective treatment solutions. Originating from industrial, agricultural, and domestic sources, these contaminants threaten ecological and public health, underscoring the urgent need for innovative and efficient treatment methods. TiO-based semiconductor photocatalysts have emerged as a promising approach for the degradation of EPs, leveraging their unique band structures and heterojunction schemes. However, few studies have examined the synergistic effects of operating conditions on these contaminants, representing a key knowledge gap in the field. This review addresses this gap by exploring recent trends in TiO-driven heterogeneous photocatalysis for water and wastewater treatment, with an emphasis on photoreactor setups and configurations. Challenges in scaling up these photoreactors are also discussed. Furthermore, Machine Learning (ML) models play a crucial role in developing predictive frameworks for complex processes, highlighting intricate temporal dynamics essential for understanding EPs behavior. This capability integrates seamlessly with Computational Fluid Dynamics (CFD) modeling, which is also addressed in this review. Together, these approaches illustrate how CFD can simulate the degradation of EPs by effectively coupling chemical kinetics, radiative transfer, and hydrodynamics in both suspended and immobilized photocatalysts. By elucidating the synergy between ML and CFD models, this study offers new insights into overcoming traditional limitations in photocatalytic process design and optimizing operating conditions. Finally, this review presents recommendations for future directions and insights on optimizing and modeling photocatalytic processes.
水中新兴污染物(EPs)的不断增加带来了重大的环境和健康风险,因此需要有效的处理解决方案。这些污染物源自工业、农业和家庭来源,威胁着生态和公众健康,凸显了对创新高效处理方法的迫切需求。基于TiO的半导体光催化剂凭借其独特的能带结构和异质结方案,已成为降解新兴污染物的一种有前景的方法。然而,很少有研究考察操作条件对这些污染物的协同作用,这是该领域的一个关键知识空白。本综述通过探索TiO驱动的非均相光催化在水和废水处理方面的最新趋势来填补这一空白,重点是光反应器的设置和配置。还讨论了扩大这些光反应器规模时面临的挑战。此外,机器学习(ML)模型在为复杂过程开发预测框架方面发挥着关键作用,突出了理解新兴污染物行为所必需的复杂时间动态。这种能力与计算流体动力学(CFD)建模无缝集成,本综述也对此进行了探讨。这些方法共同说明了CFD如何通过有效耦合悬浮和固定化光催化剂中的化学动力学、辐射传输和流体动力学来模拟新兴污染物的降解。通过阐明ML和CFD模型之间的协同作用,本研究为克服光催化过程设计中的传统局限性和优化操作条件提供了新的见解。最后,本综述提出了未来方向的建议以及关于优化和模拟光催化过程的见解。