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DOI

This article proposes a new approach to operational forecasting of power load schedules with the use of machine learning methods. In order to increase the accuracy of models and algorithms for operational forecasting of power load schedules, testing of several machine learning methods was implemented. The developed models were tested in the Python programming language using the sktime and scikit-learn libraries. A calculation of power modes was carried out, which showed high comparability of the results with the actual values of the mode. The residual values of the controlled parameters based on the results of using the calculated and predicted value of the power load with the use of machine learning methods showed a higher comparability of the results with the real power mode. This allows us to talk about obtaining a more accurate result when using the forecast of the power load in nodes with the use of machine learning methods and their possible use in dispatch centers as a basis for planning long-term conditions and coordinating repair schedules for the power grid equipment. © 2023 IEEE.
Язык оригиналаАнглийский
Название основной публикацииProceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023
Подзаголовок основной публикацииbook
ИздательInstitute of Electrical and Electronics Engineers Inc.
Страницы115-120
Число страниц6
ISBN (печатное издание)979-835035807-0
DOI
СостояниеОпубликовано - 2023
Событие2023 Belarusian-Ural-Siberian Smart Energy Conference (BUSSEC) - Ekaterinburg, Russian Federation
Продолжительность: 25 сент. 202329 сент. 2023

Конференция

Конференция2023 Belarusian-Ural-Siberian Smart Energy Conference (BUSSEC)
Период25/09/202329/09/2023

ID: 49267831