电力不平衡短期预测模型的比较

I. Blinov, V. Miroshnyk, V. Sychova
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引用次数: 1

摘要

乌克兰现代电力市场中电力不平衡短期预测问题的紧迫性以及可再生能源在乌克兰IPS平衡中所占份额的增加得到了证实。本文比较了自回归模型ARIMA、SARIMA和组合模型在考虑太阳能和风力发电量预测值影响的情况下对电力失衡日调度的预测结果。研究采用了均衡市场的实际数据和RES的供电量数据。结果分析表明,SARIMA模型和组合模型的计算结果更为准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of models for short-term forecasting of electricity imbalances
The urgency of the problem of short-term forecasting of electricity imbalances in the modern electricity market of Ukraine and the growing share of renewable energy sources in the balance of the IPS of Ukraine are substantiated. The article compares the results of forecasting daily schedules of electricity imbalances using autoregressive models ARIMA, SARIMA and combined model, taking into account the influence of forecasted values of solar and wind generation. The actual data of the balancing market and volumes of electricity supply from RES were used for the research. Analysis of the results shows that the SARIMA models and the combined model have more accurate results.
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