Prediction of wind energy with the use of tensor-train based higher order dynamic mode decomposition

IF 3.4 3区 经济学 Q1 ECONOMICS Journal of Forecasting Pub Date : 2024-04-14 DOI:10.1002/for.3126
Keren Li, Sergey Utyuzhnikov
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Abstract

As the international energy market pays more and more attention to the development of clean energy, wind power is gradually attracting the attention of various countries. Wind power is a sustainable and environmentally friendly resource of energy. However, it is unstable. Therefore, it is important to develop algorithms for its prediction. In this paper, we apply a recently developed algorithm that effectively combines the tensor train decomposition with the higher order dynamic mode decomposition (TT-HODMD). The dynamic mode decomposition (DMD) is a data-driven technique that does not need a prior mathematical model. It is based on the measurement data or time slots. As demonstrated, for prediction it is important to use the higher order DMD (HODMD). In turn, HODMD might lead to very large scale arrays that are sparse. The tensor train decomposition provides a highly efficient way to work with such arrays. It is demonstrated that the combined TT-HODMD algorithm is capable of providing quite accurate prediction of wind power for months ahead.

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利用基于张量列车的高阶动态模式分解预测风能
随着国际能源市场对清洁能源发展的日益重视,风力发电逐渐受到各国的关注。风能是一种可持续发展的环保能源。然而,它也具有不稳定性。因此,开发风能预测算法非常重要。在本文中,我们应用了一种最新开发的算法,它有效地结合了张量列车分解和高阶动态模式分解(TT-HODMD)。动态模式分解(DMD)是一种数据驱动技术,无需事先建立数学模型。它以测量数据或时隙为基础。如图所示,使用高阶 DMD(HODMD)进行预测非常重要。反过来,HODMD 可能会导致规模非常大的稀疏阵列。张量列车分解为处理此类阵列提供了一种高效的方法。实验证明,TT-HODMD 组合算法能够对未来几个月的风力发电量进行相当准确的预测。
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来源期刊
CiteScore
5.40
自引率
5.90%
发文量
91
期刊介绍: The Journal of Forecasting is an international journal that publishes refereed papers on forecasting. It is multidisciplinary, welcoming papers dealing with any aspect of forecasting: theoretical, practical, computational and methodological. A broad interpretation of the topic is taken with approaches from various subject areas, such as statistics, economics, psychology, systems engineering and social sciences, all encouraged. Furthermore, the Journal welcomes a wide diversity of applications in such fields as business, government, technology and the environment. Of particular interest are papers dealing with modelling issues and the relationship of forecasting systems to decision-making processes.
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