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DOI

This paper is an overview of the current research in the field of predicting the energy consumption of electric arc furnaces with emphasis on literature review. Electric arc furnaces play a key role in the metallurgical and metalworking industries, and optimizing their energy consumption is a crucial task to improve production efficiency. This paper analyzes the state-of-the-art machine learning methods used to predict the energy consumption of electric arc furnaces. Special attention is given to the literature review, which is a comparative analysis of previous research in this area. Various methods including neural networks, regression analysis, time series and others are reviewed. The literature review not only provides an assessment of the current state of research, but also identifies limitations and potential directions for future research. The conclusions and recommendations presented in the paper can serve as a basis for further research in the field of optimizing energy consumption in electric arc furnaces and improving the efficiency of metallurgical production. © 2023 IEEE.
Язык оригиналаАнглийский
Название основной публикацииProceedings - 2023 Russian Workshop on Power Engineering and Automation of Metallurgy Industry: Research and Practice, PEAMI 2023
Подзаголовок основной публикацииbook
ИздательInstitute of Electrical and Electronics Engineers Inc.
Страницы205-210
Число страниц6
ISBN (печатное издание)979-835032215-6
DOI
СостояниеОпубликовано - 2023
Событие2023 Russian Workshop on Power Engineering and Automation of Metallurgy Industry: Research & Practice (PEAMI) - Magnitogorsk, Russian Federation
Продолжительность: 29 сент. 20231 окт. 2023

Конференция

Конференция2023 Russian Workshop on Power Engineering and Automation of Metallurgy Industry: Research & Practice (PEAMI)
Период29/09/202301/10/2023

ID: 49270762