A Rank Analysis and Ensemble Machine Learning Model for Load Forecasting in the Nodes of the Central Mongolian Power System

被引:0
|
作者
Osgonbaatar, Tuvshin [1 ]
Matrenin, Pavel [1 ,2 ]
Safaraliev, Murodbek [2 ]
Zicmane, Inga [3 ]
Rusina, Anastasia [1 ]
Kokin, Sergey [2 ]
机构
[1] Novosibirsk State Tech Univ, Fac Energy, 20 K Marx Ave, Novosibirsk 630073, Russia
[2] Ural Fed Univ, Ural Power Engn Inst, 19 Mira Str, Ekaterinburg 620002, Russia
[3] Riga Tech Univ, Fac Elect & Environm Engn, 12-1 Azenes Str, LV-1048 Riga, Latvia
关键词
forecasting; machine learning; rank models; daily load schedule; power supply zone; node substations; central power system of Mongolia;
D O I
10.3390/inventions8050114
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Forecasting electricity consumption is currently one of the most important scientific and practical tasks in the field of electric power industry. The early retrieval of data on expected load profiles makes it possible to choose the optimal operating mode of the system. The resultant forecast accuracy significantly affects the performance of the entire electrical complex and the operating conditions of the electricity market. This can be achieved through using a model of total electricity consumption designed with an acceptable margin of error. This paper proposes a new method for predicting power consumption in all nodes of the power system through the determination of rank coefficients calculated directly for the corresponding voltage level, including node substations, power supply zones, and other parts of the power system. The forecast of the daily load schedule and the construction of a power consumption model was based on the example of nodes in the central power system in Mongolia. An ensemble of decision trees was applied to construct a daily load schedule and rank coefficients were used to simulate consumption in the nodes. Initial data were obtained from daily load schedules, meteorological factors, and calendar features of the central power system, which accounts for the majority of energy consumption and generation in Mongolia. The study period was 2019-2021. The daily load schedules of the power system were constructed using machine learning with a probability of 1.25%. The proposed rank analysis for power system zones increases the forecasting accuracy for each zone and can improve the quality of management and create more favorable conditions for the development of distributed generation.
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页数:20
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