预测太阳辐射的多级统计模式

Pratham Nayak, Aprameya Dash, Suyash Chintawar, M A.
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引用次数: 0

摘要

作为传统能源的替代品,太阳能正迅速成为一种受欢迎的可再生能源。从小型家庭和企业到大型公司和跨国公司的各种实体目前正在制定投资太阳能发电资源的计划。因此,在目前的情况下,对太阳辐射的准确预测已成为一种必要。由于缺乏适当的测量设备和气象部门数量较少等限制,在世界上许多地方无法准确预测太阳辐射。本文的重点是利用机器学习技术预测太阳辐射。太阳辐射取决于各种自然因素,这些因素更容易测量,这些因素可以帮助预测太阳辐射。本文探讨了现有的数据,以确定影响太阳辐射的各种因素。基于这些因素,本文研究了不同标准回归模型在太阳辐射预测中的性能。其次,提出了多层统计模型,将多个标准模型分层堆叠,并将这些自定义模型的R2得分与标准模型的R2得分进行比较。
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Multi-Level Statistical Model for Forecasting Solar Radiation
As a substitute for conventional energy sources, Solar energy is quickly becoming a popular source of renewable energy. Various entities ranging from small households and businesses to large firms and MNCs are currently making plans on investing resources in the generation of solar energy. Thus, accurate prediction of solar radiation has become a necessity in the present scenario. Due to limitations like the unavailability of proper measuring equipment and a small number of meteorological departments, accurate prediction of solar radiation is not possible in many places around the world. This paper focuses on forecasting solar radiation using machine learning techniques. Solar radiation depends upon various natural factors, which are easier to measure, and these factors can help forecast solar radiation. This paper explores the available data to identify the various factors which affect solar radiation. Based on these factors, the paper investigates the performance of different standard regression models based on solar radiation prediction. Next, multi-level statistical models are proposed, which stack multiple standard models into layers, and the R2 scores of these custom models is compared with the R2 scores of the standard models.
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