Ensemble-based Solar Power Prediction System Using Missing Value Interpolation Algorithm

Su-Bin Park, Jin-Seong Kim, Se-Hoon Jung, Chun-Bo Sim
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Abstract

Environmental problems such as global warming due to excessive use of fossil fuels are becoming serious. In order to solve this problem, the supply of new and renewable energy is being activated, and the new and renewable energy market is also expanding. In particular, the share of solar and wind energy among new and renewable energies is rapidly increasing. However, uncertainty and volatility are inherent in renewable energy due to the characteristics of power generation that depend on natural conditions. This leads to a problem in which errors occur in the prediction of the amount of reserve energy required to secure the amount and cost of renewable energy generation. In this paper, we propose an ensemble-based solar power generation prediction system applying missing value interpolation algorithm. It predicts the amount of solar power generation by using weather forecast data from the Korea Meteorological Administration, and provides visualization and scheduling functions for the amount of power generation and predicted amount through a web page.
基于缺失值插值算法的集成太阳能发电预测系统
过度使用化石燃料导致的全球变暖等环境问题日益严重。为了解决这一问题,新能源和可再生能源的供应正在被激活,新能源和可再生能源市场也在不断扩大。特别是,太阳能和风能在新能源和可再生能源中所占的份额正在迅速增加。然而,由于发电依赖于自然条件的特点,可再生能源具有固有的不确定性和波动性。这就导致了一个问题,即在预测确保可再生能源发电的数量和成本所需的储备能量时,会出现错误。本文提出了一种应用缺失值插值算法的基于集成的太阳能发电预测系统。利用气象厅的天气预报资料预测太阳能发电量,并通过网页提供发电量和预测值的可视化和调度功能。
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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