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

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY Inventions Pub Date : 2023-09-05 DOI:10.3390/inventions8050114
Tuvshin Osgonbaatar, P. Matrenin, M. Safaraliev, I. Zicmane, Anastasia Rusina, Sergey Kokin
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Abstract

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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中部蒙古电力系统节点负荷预测的秩分析与集成机器学习模型
用电量预测是当前电力工业领域最重要的科学和实用任务之一。对预期负荷分布数据的早期检索使选择系统的最佳运行模式成为可能。由此产生的预测准确性显著影响整个电力综合体的性能和电力市场的运行条件。这可以通过使用以可接受的误差范围设计的总电力消耗模型来实现。本文提出了一种新的方法,通过确定直接为相应电压电平计算的秩系数来预测电力系统所有节点的功耗,包括节点变电站、供电区和电力系统的其他部分。以蒙古国中央电力系统节点为例,对日负荷计划进行了预测,并建立了用电模型。应用决策树集合来构建日负荷调度,并使用秩系数来模拟节点中的消耗。初始数据来自中央电力系统的日负荷计划、气象因素和日历特征,中央电力系统占蒙古能源消耗和发电的大部分。研究期间为2019年至2021年。利用机器学习构建了电力系统的日负荷调度,概率为1.25%。所提出的电力系统分区秩分析提高了每个分区的预测精度,可以提高管理质量,为分布式发电的发展创造更有利的条件。
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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