Oluwafemi George

PhD in computational Chemocal Engineering with over 10 years of experience in research and simulations in CFD. Possesses advanced skill in Python programming and cloud computing platforms such as GCP, Microsoft Azure and AWS.

Research Expertise

single droplet drying|spray drying|computational fluid dynamics|artificial intelligence
Applied Mathematics
Industrial and Manufacturing Engineering
Biotechnology
Environmental Engineering
Economics and Econometrics
Geography, Planning and Development
Management, Monitoring, Policy and Law
Food Science
Software
Hardware and Architecture
Computer Networks and Communications

Publications

Detailed numerical analysis of evaporation of a micrometer water droplet suspended on a glass filament

Chemical Engineering Science / Jun 01, 2017

George, O. A., Xiao, J., Rodrigo, C. S., Mercadé-Prieto, R., Sempere, J., & Chen, X. D. (2017). Detailed numerical analysis of evaporation of a micrometer water droplet suspended on a glass filament. Chemical Engineering Science, 165, 33–47. https://doi.org/10.1016/j.ces.2017.02.038

Computational Study of Single Droplet Deposition on Randomly Rough Surfaces: Surface Morphological Effect on Droplet Impact Dynamics

Industrial & Engineering Chemistry Research / May 11, 2018

Xiao, J., Pan, F., Xia, H., Zou, S., Zhang, H., George, O. A., Zhou, F., & Huang, Y. (2018). Computational Study of Single Droplet Deposition on Randomly Rough Surfaces: Surface Morphological Effect on Droplet Impact Dynamics. Industrial & Engineering Chemistry Research, 57(22), 7664–7675. https://doi.org/10.1021/acs.iecr.8b00418

An effective rate approach to modeling single‐stage spray drying

AIChE Journal / Jul 18, 2015

George, O. A., Chen, X. D., Xiao, J., Woo, M., & Che, L. (2015). An effective rate approach to modeling single‐stage spray drying. AIChE Journal, 61(12), 4140–4151. Portico. https://doi.org/10.1002/aic.14940

Numerical investigation of droplet pre-dispersion in a monodisperse droplet spray dryer

Particuology / Jun 01, 2018

Xiao, J., Li, Y., George, O. A., Li, Z., Yang, S., Woo, M. W., Wu, W. D., & Chen, X. D. (2018). Numerical investigation of droplet pre-dispersion in a monodisperse droplet spray dryer. Particuology, 38, 44–60. https://doi.org/10.1016/j.partic.2017.04.008

Numerical simulation of mono-disperse droplet spray dryer: Coupling distinctively different sized chambers

Chemical Engineering Science / Jun 01, 2019

Xiao, J., Yang, S., George, O. A., Putranto, A., Wu, W. D., & Chen, X. D. (2019). Numerical simulation of mono-disperse droplet spray dryer: Coupling distinctively different sized chambers. Chemical Engineering Science, 200, 12–26. https://doi.org/10.1016/j.ces.2019.01.030

Process design and life cycle assessment of furfural and glucose co-production derived from palm oil empty fruit bunches

Environment, Development and Sustainability / Oct 07, 2022

Ng, Z. W., Gan, H. X., Putranto, A., Akbar Rhamdhani, M., Zein, S. H., George, O. A., Giwangkara, J., & Butar, I. (2022). Process design and life cycle assessment of furfural and glucose co-production derived from palm oil empty fruit bunches. Environment, Development and Sustainability, 25(12), 13937–13958. https://doi.org/10.1007/s10668-022-02633-8

Deep neural network for generalizing and forecasting on-demand drying kinetics of droplet solutions

Powder Technology / May 01, 2022

George, O. A., Putranto, A., Xiao, J., Olayiwola, P. S., Chen, X. D., Ogbemhe, J., Akinyemi, T. J., & Kharaghani, A. (2022). Deep neural network for generalizing and forecasting on-demand drying kinetics of droplet solutions. Powder Technology, 403, 117392. https://doi.org/10.1016/j.powtec.2022.117392

Quantitative review and machine learning application of refractance window drying of tuber slices

International Journal of Food Engineering / Dec 29, 2023

Akinola, A. A., George, O. A., Ogbemhe, J., Ipinnimo, O., & Oribayo, O. (2023). Quantitative review and machine learning application of refractance window drying of tuber slices. International Journal of Food Engineering, 20(2), 125–140. https://doi.org/10.1515/ijfe-2023-0203

Hanging a droplet with minimized intervention

Chemical Engineering Science / Feb 01, 2024

Zhang, X., Ayodele George, O., Zhu, H., Zhang, Z., Zhuo, H., Fu, N., Wai Woo, M., Dong Chen, X., & Xiao, J. (2024). Hanging a droplet with minimized intervention. Chemical Engineering Science, 284, 119479. https://doi.org/10.1016/j.ces.2023.119479

Multi-Physical Modelling and Simulation of a Planar Translational Scissor Lift Mechanism for Maintenance of Rail Transmission Lines

Procedia CIRP / Jan 01, 2024

Ogbemhe, J., Ramatsetse, B., Mpofu, K., & George, O. A. (2024). Multi-Physical Modelling and Simulation of a Planar Translational Scissor Lift Mechanism for Maintenance of Rail Transmission Lines. Procedia CIRP, 121, 174–179. https://doi.org/10.1016/j.procir.2023.09.246

A TECHNICAL AND ECONOMIC COMPARISON OF CO2 REMOVAL TECHNOLOGIES IN AMMONIA PRODUCTION PLANTS

Open Journal of Engineering Science (ISSN: 2734-2115) / Dec 31, 2023

Oribayo, O., Bashorun, A. K., & George, O. A. (2023). A TECHNICAL AND ECONOMIC COMPARISON OF CO2 REMOVAL TECHNOLOGIES IN AMMONIA PRODUCTION PLANTS. Open Journal of Engineering Science (ISSN: 2734-2115), 4(2), 74–88. https://doi.org/10.52417/ojes.v4i2.530

Prediction of Pressure Gradient during Condensation in Inclined Heat Exchanger Using Machine Learning Techniques

Nov 06, 2022

Adekunle, A., Adelaja, A., George, O., Ogbemhe, J., Abolarin, S., & Olakoyejo, O. (2022). Prediction of Pressure Gradient during Condensation in Inclined Heat Exchanger Using Machine Learning Techniques. https://doi.org/10.46855/energy-proceedings-10141

Numerical probing of suspended lactose droplet drying experiment

Journal of Food Engineering / Aug 01, 2019

George, O. A., Xiao, J., Mercadé-Prieto, R., Fu, N., & Chen, X. D. (2019). Numerical probing of suspended lactose droplet drying experiment. Journal of Food Engineering, 254, 51–63. https://doi.org/10.1016/j.jfoodeng.2019.03.003

Education

Soochow University

PhD, Chemical Engineering / June, 2019

Suzhou

MSc, Chemical Engineering / December, 2013

Xiamen

Obafemi Awolowo University

BSc, Food Engineering / January, 2008

Ile-Ife

Experience

University of Lagos

2019July, 2021

2019July, 2021

2019July, 2021

Links & Social Media

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