Multi-period Prediction of Solar Radiation Using ARMA and ARIMA Models

I. Colak, M. Yesilbudak, N. Genç, R. Bayindir
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引用次数: 54

Abstract

Due to the variations in weather conditions, solar power integration to the electricity grid at a high penetration rate can cause a threat for the grid stability. Therefore, it is required to predict the solar radiation parameter in order to ensure the quality and the security of the grid. In this study, initially, a 1-h time series model belong to the solar radiation parameter is created for multi-period predictions. Afterwards, autoregressive moving average (ARMA) and autoregressive integrated moving average (ARIMA) models are compared in terms of the goodness-of-fit value produced by the log-likelihood function. As a result of determining the best statistical models in multi-period predictions, one-period, two-period and three-period ahead predictions are carried out for the solar radiation parameter in a comprehensive way. Many feasible comparisons have been made for the solar radiation prediction.
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利用ARMA和ARIMA模式对太阳辐射进行多周期预测
由于天气条件的变化,太阳能以高渗透率并入电网会对电网的稳定性造成威胁。因此,为了保证电网的质量和安全,需要对太阳辐射参数进行预测。本研究首先建立了一个属于太阳辐射参数的1 h时间序列模型,用于多周期预测。然后,根据对数似然函数产生的拟合优度值,比较了自回归移动平均(ARMA)和自回归综合移动平均(ARIMA)模型。在确定了多期预测的最佳统计模型的基础上,对太阳辐射参数进行了一期、两期和三期的综合预报。对太阳辐射预报进行了许多可行的比较。
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