利用人工神经网络技术进行短期负荷预测:以北马其顿共和国为例

IF 1 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal on Information Technologies and Security Pub Date : 2023-09-01 DOI:10.59035/mysq1937
A. Kotevska, N. Rogleva
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引用次数: 0

摘要

北马其顿电力系统的现代化和自由化为监督和规范电力消费和电网提供了机会。本文提出了利用人工神经网络进行短期负荷预测的模型,以平衡电力需求和负荷需求,确定电价。神经网络方法具有直接从历史数据中学习的优点。该方法使用多个数据点。研究结果表明,短期预测的质量取决于数据集的大小和数据转换。
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Short-Term Load Forecasting using Artificial Neural Networks techniques: A case study for Republic of North Macedonia
Modernization and liberalization of power system in North Macedonia offers an opportunity to supervise and regulate the power consumption and power grid. This paper proposes models for short-term load forecasting using artificial neural network in order to balance the demand and load requirements and to determine electricity price. Neural network approach has the advantage of learning directly from the historical data. This method uses multiple data points. Results from the research show that the quality of the short-term prediction depends on the size of the data set and the data transformation.
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