Comparison between Time- and Observation-Based Gaussian Process Regression Models for Global Horizontal Irradiance Forecasting

IF 0.9 Q4 GEOCHEMISTRY & GEOPHYSICS
Shab Gbémou, J. Eynard, S. Thil, S. Grieu
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引用次数: 0

Abstract

With the development of predictive management strategies for power distribution grids, reliable information on the expected photovoltaic power generation, which can be derived from forecasts of global horizontal irradiance (GHI), is needed. In recent years, machine learning techniques for GHI forecasting have proved to be superior to classical approaches. This work addresses the topic of multi-horizon forecasting of GHI using Gaussian process regression (GPR) and proposes an in-depth study on some open questions: should time or past GHI observations be chosen as input? What are the appropriate kernels in each case? Should the model be multi-horizon or horizon-specific? A comparison between time-based GPR models and observation-based GPR models is first made, along with a discussion on the best kernel to be chosen; a comparison between horizon-specific GPR models and multi-horizon GPR models is then conducted. The forecasting results obtained are also compared to those of the scaled persistence model. Four performance criteria and five forecast horizons (10 min, 1 h, 3 h, 5 h, and 24 h) are considered to thoroughly assess the forecasting results. It is observed that, when seeking multi-horizon models, using a quasiperiodic kernel and time as input is favored, while the best horizon-specific model uses an automatic relevance determination rational quadratic kernel and past GHI observations as input. Ultimately, the choice depends on the complexity and computational constraints of the application at hand.
基于时间和观测的高斯过程回归模型在全球水平辐射预测中的比较
随着配电网预测管理策略的发展,需要从全球水平辐照度(GHI)预测中获得可靠的光伏发电预期信息。近年来,机器学习预测GHI的技术已被证明优于经典方法。这项工作解决了使用高斯过程回归(GPR)对GHI进行多视界预测的主题,并提出了对一些开放性问题的深入研究:应该选择时间或过去的GHI观测值作为输入?每种情况下合适的内核是什么?这个模型应该是多视界的还是特定视界的?首先对基于时间的探地雷达模型和基于观测的探地雷达模型进行了比较,并讨论了应选择的最佳核;然后对特定水平雷达模型和多水平雷达模型进行了比较。并与尺度持续模型的预测结果进行了比较。考虑了四个性能标准和五个预测范围(10分钟,1小时,3小时,5小时和24小时)来全面评估预测结果。在寻找多视界模型时,使用准周期核和时间作为输入是有利的,而最佳视界特定模型使用自动相关性确定有理二次核和过去的GHI观测作为输入。最终,选择取决于当前应用程序的复杂性和计算约束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Solar-Terrestrial Physics
Solar-Terrestrial Physics GEOCHEMISTRY & GEOPHYSICS-
CiteScore
1.50
自引率
9.10%
发文量
38
审稿时长
12 weeks
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