Unlocking the Power of Artificial Intelligence: Accurate Zeta Potential Prediction Using Machine Learning
-
Published:2023-03-29
Issue:7
Volume:13
Page:1209
-
ISSN:2079-4991
-
Container-title:Nanomaterials
-
language:en
-
Short-container-title:Nanomaterials
Author:
Muneer Rizwan1ORCID, Hashmet Muhammad Rehan2ORCID, Pourafshary Peyman1ORCID, Shakeel Mariam1
Affiliation:
1. School of Mining and Geosciences, Nazarbayev University, Astana 010000, Kazakhstan 2. Department of Chemical and Petroleum Engineering, United Arab Emirates University, Al Ain 15551, United Arab Emirates
Abstract
Nanoparticles have gained significance in modern science due to their unique characteristics and diverse applications in various fields. Zeta potential is critical in assessing the stability of nanofluids and colloidal systems but measuring it can be time-consuming and challenging. The current research proposes the use of cutting-edge machine learning techniques, including multiple regression analyses (MRAs), support vector machines (SVM), and artificial neural networks (ANNs), to simulate the zeta potential of silica nanofluids and colloidal systems, while accounting for affecting parameters such as nanoparticle size, concentration, pH, temperature, brine salinity, monovalent ion type, and the presence of sand, limestone, or nano-sized fine particles. Zeta potential data from different literature sources were used to develop and train the models using machine learning techniques. Performance indicators were employed to evaluate the models’ predictive capabilities. The correlation coefficient (r) for the ANN, SVM, and MRA models was found to be 0.982, 0.997, and 0.68, respectively. The mean absolute percentage error for the ANN model was 5%, whereas, for the MRA and SVM models, it was greater than 25%. ANN models were more accurate than SVM and MRA models at predicting zeta potential, and the trained ANN model achieved an accuracy of over 97% in zeta potential predictions. ANN models are more accurate and faster at predicting zeta potential than conventional methods. The model developed in this research is the first ever to predict the zeta potential of silica nanofluids, dispersed kaolinite, sand–brine system, and coal dispersions considering several influencing parameters. This approach eliminates the need for time-consuming experimentation and provides a highly accurate and rapid prediction method with broad applications across different fields.
Subject
General Materials Science,General Chemical Engineering
Reference124 articles.
1. Samuel, M.S., Ravikumar, M., John, J.A., Selvarajan, E., Patel, H., Chander, P.S., Soundarya, J., Vuppala, S., Balaji, R., and Chandrasekar, N. (2022). A Review on Green Synthesis of Nanoparticles and Their Diverse Biomedical and Environmental Applications. Catalysts, 12. 2. Ahmad, F., Salem-Bekhit, M.M., Khan, F., Alshehri, S., Khan, A., Ghoneim, M.M., Wu, H.-F., Taha, E.I., and Elbagory, I. (2022). Unique Properties of Surface-Functionalized Nanoparticles for Bio-Application: Functionalization Mechanisms and Importance in Application. Nanomaterials, 12. 3. Engineering Precision Nanoparticles for Drug Delivery;Mitchell;Nat. Rev. Drug Discov.,2021 4. Riley, R.S., and Day, E.S. (2017). Gold Nanoparticle-mediated Photothermal Therapy: Applications and Opportunities for Multimodal Cancer Treatment. Wiley Interdiscip. Rev. Nanomed. Nanobiotechnol., 9. 5. Garino, N., Limongi, T., Dumontel, B., Canta, M., Racca, L., Laurenti, M., Castellino, M., Casu, A., Falqui, A., and Cauda, V. (2019). A Microwave-Assisted Synthesis of Zinc Oxide Nanocrystals Finely Tuned for Biological Applications. Nanomaterials, 9.
Cited by
8 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|