天空云密度分类的统计方法

M. Paralic
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引用次数: 0

摘要

在可再生能源中,从太阳能电池板中开采的能源对于了解未来的能源产量至关重要。太阳是一种相对稳定的能量来源,我们可以根据一天中的小时、一年中的一天以及与太阳的距离精确地估计地外太阳的强度。入射到地球的太阳辐射受到地球大气层、气候和云层密度的影响。我们需要预测天空的晴朗度,分别是天空中云的密度。本文讨论了用统计方法估计天空云密度的问题。数据是由面向天空的地面鱼眼相机获取的。在第一步中,我们手动标注了各种天空类型,将天空分割成人工图像——太阳、晴空、部分云、云层和地面背景。我们使用高斯混合模型集对这些伪影进行分类。我们优化了适合不同类别要求的混合物中组分的数量。模拟的结果应该是根据鱼眼相机捕获的图像预测云密度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Approach for Sky Clouds Density Classification
In the renewal energy mined from solar panels is essential to know the future amount of produced energy. The sun is a relatively stable source of energy, and we can precisely estimate extra-terrestrial sun intensity based on the hour of the day, day of the year, and respectful distance from the sun. The incident solar radiation hitting the Earth is affected by the Earth's atmosphere, climate, and the density of clouds. We need to predict sky clearness, respectively the density of clouds in the sky. This paper deals with sky clouds density estimation using a statistical approach. The data are acquired by a terrestrial fisheye camera facing the sky. In the first step, the various sky types were manually annotated to segment sky into artifacts - sun, clear sky, partial clouds, clouds, and terrestrial background. We used the set of Gaussian Mixture Models for the classification of such artifacts. We optimized the number of components in mixtures appropriate to different class requirements. The result of modelling should be the prediction of clouds density depending on the image captured by the fish-eye camera.
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