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Ensemble of machine learning and spatiotemporal parameters to forecast very short-term solar irradiation to compute photovoltaic generators' output power

机译:机器学习和时空参数的集合预测非常短期的太阳辐照,以计算光伏发电机的输出功率

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摘要

Photovoltaic generation has arisen as a solution for the present energy challenge. However, power obtained through solar technologies has a strong correlation with certain meteorological variables such as solar irradiation, wind speed or ambient temperature. As a consequence, small changes in these variables can produce unexpected deviations in energy production. Although many research articles have been published in the last few years proposing different models for predicting these parameters, the vast majority of them do not consider spatiotemporal parameters. Hence, this paper presents a new solar irradiation forecaster which combines the advantages of machine learning and the optimisation of both spatial and temporal parameters in order to predict solar irradiation 10 min ahead. A validation step demonstrated that the deviation between the actual and forecasted solar irradiation was lower than 4% in 82.95% of the examined days. With regard to the error metrics, the root mean square error was 50.80 W/m(2), an improvement of 11.27% compared with the persistence model, which was used as a benchmark. The results indicate that the developed forecaster can be integrated into photovoltaic generators' to predict their output power, thus promoting their inclusion in the main power network. (C) 2021 Elsevier Ltd. All rights reserved.
机译:光伏发电作为目前能源挑战的解决方案。然而,通过太阳能技术获得的功率具有强烈的相关性与某些气象变量,如太阳照射,风速或环境温度。结果,这些变量的小变化可以产生能量产生的意外偏差。虽然在过去几年中发表了许多研究文章,提出了预测这些参数的不同模型,但绝大多数都不考虑时空参数。因此,本文提出了一种新的太阳照射预测搬运车,它结合了机器学习的优点以及空间和时间参数的优化,以预测未来10分钟的太阳照射。验证步骤证明,实际和预测太阳辐射之间的偏差低于检查日的82.95%的4%。关于误差度量,根均方误差为50.80W / m(2),与持久性模型相比,提高了11.27%,用作基准。结果表明,发达的预测转口可以集成到光伏发电机中以预测其输出功率,从而促进它们在主电网中的夹杂物。 (c)2021 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Energy》 |2021年第15期|120647.1-120647.12|共12页
  • 作者单位

    Ceit Basque Res & Technol Alliance BRTA Manuel Lardizabal 15 San Sebastian 20018 Spain|Univ Navarra Tecnun Manuel Lardizabal 13 San Sebastian 20018 Spain;

    Ceit Basque Res & Technol Alliance BRTA Manuel Lardizabal 15 San Sebastian 20018 Spain|Univ Navarra Tecnun Manuel Lardizabal 13 San Sebastian 20018 Spain;

    Ceit Basque Res & Technol Alliance BRTA Manuel Lardizabal 15 San Sebastian 20018 Spain|Univ Navarra Tecnun Manuel Lardizabal 13 San Sebastian 20018 Spain;

    Ceit Basque Res & Technol Alliance BRTA Manuel Lardizabal 15 San Sebastian 20018 Spain|Univ Navarra Tecnun Manuel Lardizabal 13 San Sebastian 20018 Spain;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Photovoltaic generation; Solar irradiation; Spatiotemporal forecaster; Artificial intelligence; Very short-term forecasting;

    机译:光伏发电;太阳辐照;时尚预报器;人工智能;非常短期预测;

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