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Classification of Hourly Clearness Index of Solar Radiation in the District of Yamoussoukro

机译:Yamoussoukro地区太阳辐射的小时清晰度指数的分类

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摘要

The exploitation of systems using solar energy as a source of energy is not fluctuations free because of short passage of clouds on solar radiation. The amplitude, the persistence and the frequency of these fluctuations should be analyzed with appropriate tools, instead of focusing on their location over time. The analysis of these fluctuations should use the instantaneous clearness index whose distribution is given as a first approximation which is independent not only of the season but also of the site. It is important to evaluate the potential solar energy in a region. Indeed such evaluation helps the decision-makers in their reflections on agricultural or photovoltaic solar projects. Then this study was conducted for a predictive purpose. The method used in our work combines the classification method which is the hierarchical ascending classification and two partitioning methods, the principal component analysis and the K-means method. The partitioning method enabled to achieve a number of well-known situations (in advance) that are representative of the day. The study was based on the data of a climatic weather station in the district of Yamoussoukro located in the center region of Cote d'lvoire during the 2017 year. Using the clearness index, the study allowed the classification of the solar radiation in the region. Thus, it showed that only 346 days of the 365 days in 2017 were classified (95%). We identified three clusters of days, the cloudy sky (29%), the partly cloudy sky (32%) and the clear sky (39%). The statistical tests used for the characterization of these clusters will be detailed in a future study.
机译:利用太阳光作为能源的系统的开发并非没有波动,因为太阳辐射上的云层短时通过。应该使用适当的工具来分析这些波动的幅度,持续性和频率,而不是着眼于它们随时间的位置。对这些波动的分析应使用瞬时净度指数,其分布是作为第一近似值给出的,它不仅与季节有关,而且与地点无关。重要的是评估一个区域中潜在的太阳能。实际上,这种评估有助于决策者对农业或光伏太阳能项目进行反思。然后进行该研究是为了预测目的。在我们的工作中使用的方法结合了分类方法,这是分层的升序分类法和两种划分方法,主成分分析法和K-means方法。该分区方法使得能够(提前)实现代表一天的许多众所周知的情况。该研究基于2017年位于科特迪瓦中心地区Yamoussoukro的一个气候气象站的数据。使用净度指数,研究允许对该区域的太阳辐射进行分类。因此,它表明2017年的365天中只有346天被分类(95%)。我们确定了三天的群集,多云的天空(29%),部分多云的天空(32%)和晴朗的天空(39%)。用于表征这些簇的统计测试将在以后的研究中详细介绍。

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  • 来源
    《Energy and power engineering》 |2019年第5期|220-231|共12页
  • 作者单位

    Laboratory of Electricity and Energy Conversion (ECEN), Polytechnic National Institute Felix Houphouet-Boigny (INP-HB), Yamoussoukro, C6te d'lvoire;

    Laboratory of Physics of Condensed Matter and Technology (LPMCT), UFR SSMT, University Felix Houphouet-Boigny, Abidjan, Cote d'lvoire;

    Laboratory of Electricity and Energy Conversion (ECEN), Polytechnic National Institute Felix Houphouet-Boigny (INP-HB), Yamoussoukro, C6te d'lvoire;

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

    Clearness Index; Hierarchical Clustering; Principal Component Analysis;

    机译:清除指数;层次聚类;主成分分析;

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