Ahmad Hosseinzadeh , Ali Altaee , Xiaowei Li , John L. Zhou
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Machine learning-based modeling and analysis of perfluoroalkyl and polyfluoroalkyl substances controlling systems in protecting water resources
Perfluoroalkyl and polyfluoroalkyl substances (PFAS) are extensively distributed, highly persistent, and hazardous compounds in water resources threating human health and ecosystems, therefore requiring effective controlling and management systems. Machine learning (ML)-based procedures are novel approaches through which the PFAS-controlling systems can be improved cost-effectively and rapidly from different aspects. The few accomplished ML-based studies in PFAS-controlling systems showed considerable performance, with > 80% prediction strength in outputs, for example, treatment performance, identification of the susceptible groundwater resources, and PFAS defluorination energy in > 70% of the studies. Despite such a great performance, there is no systematic study of various aspects of PFAS-controlling systems, for example, modeling and analysis of PFAS degradation and distribution mechanisms, optimization, alarm management, troubleshooting, and appropriate operation and maintenance of these systems. Therefore, this study reviews key aspects and parameters that can take advantage of ML procedures in achieving cost-effective PFAS control in water resources.
期刊介绍:
Current Opinion in Chemical Engineering is devoted to bringing forth short and focused review articles written by experts on current advances in different areas of chemical engineering. Only invited review articles will be published.
The goals of each review article in Current Opinion in Chemical Engineering are:
1. To acquaint the reader/researcher with the most important recent papers in the given topic.
2. To provide the reader with the views/opinions of the expert in each topic.
The reviews are short (about 2500 words or 5-10 printed pages with figures) and serve as an invaluable source of information for researchers, teachers, professionals and students. The reviews also aim to stimulate exchange of ideas among experts.
Themed sections:
Each review will focus on particular aspects of one of the following themed sections of chemical engineering:
1. Nanotechnology
2. Energy and environmental engineering
3. Biotechnology and bioprocess engineering
4. Biological engineering (covering tissue engineering, regenerative medicine, drug delivery)
5. Separation engineering (covering membrane technologies, adsorbents, desalination, distillation etc.)
6. Materials engineering (covering biomaterials, inorganic especially ceramic materials, nanostructured materials).
7. Process systems engineering
8. Reaction engineering and catalysis.