TY  - JOUR
UR  - https://www.scopus.com/inward/record.uri?eid=2-s2.0-85142702002&doi=10.3390%2fsu142215353&partnerID=40&md5=819eb28821bd8470931bf2f1c874f940
VL  - 14
ID  - scholars16213
N2  - One of the most essential operational difficulties that water companies face today is the capacity to manage their water treatment process daily. Companies are looking for long-term solutions to predict how their treatment methods may be enhanced as they face growing competition. Many models for biological growth rate control, such as the Monod and Contois models, have been suggested in the literature. This review further emphasized that the Contois model is the best and is more suited to predicting the performance of biological growth rate than the other applicable models with a high correlation coefficient. Furthermore, the most well-known models for optimizing and predicting the wastewater treatment process are response surface methodology (RSM) and artificial neural networks (ANN). Based on this review, the ANN is the best model for wastewater treatment with high accuracy in biological wastewater treatment. Furthermore, the present paper conducts a bibliometric analysis using VOSviewer to assess research performance and perform a scientific mapping of the most relevant literature in the field. A bibliometric study of the most recent publications in the SCOPUS database between 2018 and 2022 is performed to assess the top ten countries around the world in the publishing of employing these four models for wastewater treatment. Therefore, major contributors in the field include India, France, Iran, and China. Consequently, in this research, we propose a sustainable wastewater treatment model that uses the Contois model and the ANN model to save time and effort. This approach may be helpful in the design and operation of clean water treatment operations, as well as a tool for improving day-to-day performance management. © 2022 by the authors.
TI  - Smart Modelling of a Sustainable Biological Wastewater Treatment Technologies: A Critical Review
Y1  - 2022///
AV  - none
N1  - cited By 2
PB  - MDPI
IS  - 22
A1  - Altowayti, W.A.H.
A1  - Shahir, S.
A1  - Eisa, T.A.E.
A1  - Nasser, M.
A1  - Babar, M.I.
A1  - Alshalif, A.F.
A1  - AL-Towayti, F.A.H.
JF  - Sustainability (Switzerland)
SN  - 20711050
KW  - correlation; mapping method; numerical model; response surface methodology; sustainable development; wastewater treatment; water treatment
KW  -  China; France; India; Iran
ER  -