全球太阳辐射预测模型输入变量选择的数据挖掘方法

H. Mori, A. Takahashi
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引用次数: 21

摘要

本文提出了一种全球太阳辐射预报解释变量的选择方法。天气状况对可再生能源的发电量影响很大。因此,智能电网增加了由光伏(PV)和/或风力发电的电力注入引起的不确定性。为了实现智能电网的平稳运行,需要对预测模型的预测输入变量进行选择。由于日本在未来能源政策框架中对光伏发电的重视程度更高,因此本文讨论了如何在光伏发电预测模型中选择解释变量。太阳总辐射是光伏发电出力预测中最重要的变量之一。本文主要讨论了太阳总辐射与其解释变量之间的关系。该方法利用数据挖掘方法中的CART (Classification and Regression Trees)算法来选择全球太阳辐射预测模型中的解释变量或输入变量。CART具有通过称为变量重要性的索引为解释变量赋予优先级的功能。将该方法应用于日本东京地区全球太阳辐射的实际数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A data mining method for selecting input variables for forecasting model of global solar radiation
This paper proposes a method for selecting explanatory variables for global solar radiation forecasting. The weather conditions affect generation output of renewable energy significantly. As a result, smart grids increase the uncertainties caused by the power injections of photovoltaic (PV) and/or wind power generation. To smooth smart grid operation, it is necessary to select the predicted input variables for the forecasting model. In this paper, how to select explanatory variables in the forecasting model of PV generation is discussed because Japan gives much higher priority to PV generation in the framework of future energy policy. The global solar radiation is one of the most important variables in dealing with PV generation output forecasting. This paper focuses on the relationship between the global solar radiation and its explanatory variables. The proposed method makes use of the CART (Classification and Regression Trees) algorithm of data mining method to select the explanatory or input variables in the forecasting model of global solar radiation. CART has the function to give priority to explanatory variables through an index called Variable Importance. The proposed method was applied to real data of global solar radiation in Tokyo, Japan.
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