Inicio  /  Water  /  Vol: 15 Par: 19 (2023)  /  Artículo
ARTÍCULO
TITULO

Artificial Intelligence and Wastewater Treatment: A Global Scientific Perspective through Text Mining

Abdelhafid El Alaoui El Fels    
Laila Mandi    
Aya Kammoun    
Naaila Ouazzani    
Olivier Monga and Moulay Lhassan Hbid    

Resumen

The concept of using wastewater as a substitute for limited water resources and environmental protection has enabled this sector to make major technological advancements and, as a result, has given us an abundance of physical data, including chemical, biological, and microbiological information. It is easier to comprehend wastewater treatment systems after studying this data. In order to achieve this, a number of studies use machine learning (ML) algorithms as a proactive approach to solving issues and modeling the functionalities of these processing systems while utilizing the experimental data gathered. The goal of this article is to use textual analysis techniques to extract the most popular machine learning models from scientific documents in the ?Web of Science? database and analyze their relevance and historical development. This will help provide a general overview and global scientific follow-up of publications dealing with the application of artificial intelligence (AI) to overcome the challenges faced in wastewater treatment technologies. The findings suggest that developed countries are the major publishers of articles on this research topic, and an analysis of the publication trend reveals an exponential rise in numbers, reflecting the scientific community?s interest in the subject. As well, the results indicate that supervised learning is popular among researchers, with the Artificial Neural Network (ANN), Random Forest (RF), Support Vector Machine (SVM), Linear Regression (LR), Adaptive Neuro-Fuzzy Inference System (ANFIS), Decision Tree (DT), and Gradient Boosting (GB) being the machine learning models most frequently employed in the wastewater treatment domain. Research on optimization methods reveals that the most well-known method for calibrating models is genetic algorithms (GA). Finally, machine learning benefits wastewater treatment by enhancing data analysis accuracy and efficiency. Yet challenges arise as model training demands ample, high-quality data. Moreover, the limited interpretability of machine learning models complicates comprehension of the underlying mechanisms and decisions in wastewater treatment.

 Artículos similares

       
 
Cristobal Aguilar-Gallardo and Ana Bonora-Centelles    
Cell and gene therapies represent promising new treatment options for many diseases, but also face challenges for clinical translation and delivery. Hospital-based GMP facilities enable rapid bench-to-bedside development and patient access but require si... ver más
Revista: Applied Sciences

 
Marcelo Fabian Guato Burgos, Jorge Morato and Fernanda Paulina Vizcaino Imacaña    
This review can be used as a guiding reference to how studies of distinct types of smart grid abnormalities are approached.
Revista: Applied Sciences

 
Aysegul Ucar, Mehmet Karakose and Necim Kirimça    
Revista: Applied Sciences

 
László Szilágyi and Levente Kovács    
Revista: Applied Sciences

 
Sharoug Alzaidy and Hamad Binsalleeh    
In the field of behavioral detection, deep learning has been extensively utilized. For example, deep learning models have been utilized to detect and classify malware. Deep learning, however, has vulnerabilities that can be exploited with crafted inputs,... ver más
Revista: Applied Sciences