在能源时间序列预报中使用天气数据:输入数据转换的好处

Q2 Energy Energy Informatics Pub Date : 2023-11-02 DOI:10.1186/s42162-023-00299-8
Oliver Neumann, Marian Turowski, Ralf Mikut, Veit Hagenmeyer, Nicole Ludwig
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引用次数: 0

摘要

可再生能源系统依赖于天气,因此,天气信息在可再生能源系统的时间序列预测中起着至关重要的作用。然而,虽然天气数据通常用于提高预报准确性,但仍然需要确定这种天气数据在哪种输入形式下对预报模型最有利。在本文中,我们研究了天气数据输入(即基于台站和基于网格的天气数据)的转换如何影响能量时间序列预报的准确性。所选择的天气数据转换基于统计特征、降维、聚类、自动编码器和插值。我们在预测三种能源时间序列(电力需求、太阳能和风能)时评估了这些天气数据转换的性能。此外,我们比较了基于台站和基于网格的天气数据的最佳天气数据转换。我们发现,与使用原始天气数据相比,转换基于台站或网格的天气数据可以提高3.7%至5.2%的预报精度,具体取决于目标能量时间序列,其中统计和降维数据转换是最好的。
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Using weather data in energy time series forecasting: the benefit of input data transformations

Renewable energy systems depend on the weather, and weather information, thus, plays a crucial role in forecasting time series within such renewable energy systems. However, while weather data are commonly used to improve forecast accuracy, it still has to be determined in which input shape this weather data benefits the forecasting models the most. In the present paper, we investigate how transformations for weather data inputs, i. e., station-based and grid-based weather data, influence the accuracy of energy time series forecasts. The selected weather data transformations are based on statistical features, dimensionality reduction, clustering, autoencoders, and interpolation. We evaluate the performance of these weather data transformations when forecasting three energy time series: electrical demand, solar power, and wind power. Additionally, we compare the best-performing weather data transformations for station-based and grid-based weather data. We show that transforming station-based or grid-based weather data improves the forecast accuracy compared to using the raw weather data between 3.7 and 5.2%, depending on the target energy time series, where statistical and dimensionality reduction data transformations are among the best.

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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
期刊最新文献
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