Тип публикации: доклад, тезисы доклада, статья из сборника материалов конференций
Конференция: 23rd IEEE International Conference of Young Professionals in Electron Devices and Materials, EDM 2022
Год издания: 2022
Идентификатор DOI: 10.1109/EDM55285.2022.9855092
Ключевые слова: automation, hydrocracking, machine learning, oil refinery, simulation
Аннотация: Intelligent automation is a term that can be applied to the more complex field of workflow automation, consisting of robotic workplace automation, robotic process automation, machine learning, and artificial intelligence. Depending on the type of business, companies often use one or more types of automation to improve efficiency orПоказать полностьюeffectiveness. As you move from process-driven automation to more flexible data-driven automation, additional costs arise in the form of training datasets, technical development, infrastructure, and expertise. But the potential benefits in terms of new ideas and financial development can increase significantly. The development of mechanized oil production in recent years has been accompanied by significant achievements in the field of digitalization. Machine learning, as an important element of digitalization, can successfully solve many production problems. The paper describes the application of some machine learning algorithms for solving the problem of classifying and predicting failures of hydrocracking process equipment that occur during oil refining and diesel fuel production. The application of random forest, principal component analysis and hyperparameter tuning methods is considered. The effectiveness of their application is compared. © 2022 IEEE.
Журнал: International Conference of Young Specialists on Micro/Nanotechnologies and Electron Devices, EDM
Выпуск журнала: Vol. 2022-June
Номера страниц: 599-604
ISSN журнала: 23254173
Издатель: IEEE Computer Society