Sai Ravindra Panuganti, Nor Hadhirah Halim, Tan Nian Wei, Wasan Saphanuchart, Emad Elsebakhi
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Harness AI and machine learning in de-emulsifier chemical selection
The most common method of preventing the formation of emulsions in the petroleum industry is by the application of a de-emulsifier chemical. The standard approach of selecting an appropriate de-emulsifying agent is by scanning different chemistries with changing properties to identify the emulsion breaking region. However, the disadvantage is that these tests are time-consuming. This work presents a faster alternative for choosing de-emulsifier chemicals by using machine learning. For data to train and test machine learning models, several bottle tests are analyzed at different combination of essential parameters. For both non-EOR/normal and EOR-induced emulsion, the models are validated with real crude oil to output a list of de-emulsifiers that work in breaking the emulsion and rank them for success based on probability. An application workflow of this de-emulsifier prediction tool is also created for deploying the model to provide guideline for quick de-emulsifier chemical selection.
期刊介绍:
Egyptian Journal of Petroleum is addressed to the fields of crude oil, natural gas, energy and related subjects. Its objective is to serve as a forum for research and development covering the following areas: • Sedimentation and petroleum exploration. • Production. • Analysis and testing. • Chemistry and technology of petroleum and natural gas. • Refining and processing. • Catalysis. • Applications and petrochemicals. It also publishes original research papers and reviews in areas relating to synthetic fuels and lubricants - pollution - corrosion - alternate sources of energy - gasification, liquefaction and geology of coal - tar sands and oil shale - biomass as a source of renewable energy. To meet with these requirements the Egyptian Journal of Petroleum welcomes manuscripts and review papers reporting on the state-of-the-art in the aforementioned topics. The Egyptian Journal of Petroleum is also willing to publish the proceedings of petroleum and energy related conferences in a single volume form.