Solar Irradiation Forecasting Uses Time Series Analysis

Pandu Lukhyswara, L. M. Putranto, D. D. Ariananda
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引用次数: 1

Abstract

In recent years, the ever-increasing demand on electricity cannot be followed by the amount of energy supply mainly produced from fossil. In order to mitigate this issue, many researches have been conducted in the field of renewable energy (RE), which aims at reducing the dependence on fossil based energy. In Indonesia, one form of RE that has a promising potential is solar power. Unfortunately, solar power has intermittent nature and thus, the output of RE plants (solar power plants) tends to be unpredictable. It has been found that there is a linear relationship between the amount of solar irradiation and the power produced by the solar power plants. This linear relationship can be exploited to predict the power produced by the solar power plant by performing forecasting on the amount of solar irradiation. This paper discusses three methods for forecasting solar irradiation. The first forecasting method discussed in this paper is multivariate linear regression. In this method, the forecasting is performed by using data on temperature, air pressure, humidity, and wind speed. The other two methods are support vector regression (SVR) and hybrid fast Fourier transform-autoregressive (FFT-AR). In these two methods, the forecasting process is performed based on the historical solar irradiation data sets. All the aforementioned three methods are applied to the solar irradiation data obtained from Cirata solar plant and the automatic weather station, the meteorology, climatology, and geophysics agency. Based on the study discussed in this paper, it can be concluded that the hybrid FFT-AR method offers a better performance than the other two methods. The hybrid FFT-AR method produces a normalized root mean square error (NRMSE) value of 7.18% for all scenarios. The smallest NRMSE is 4.5%, which is produced in FFT (99) – AR (48) hybrid model and which is used for short-term forecasting (7-days forecast period).
太阳辐射预报采用时间序列分析
近年来,不断增长的电力需求无法跟上主要来自化石能源的供应量。为了缓解这一问题,人们在可再生能源(RE)领域开展了许多研究,旨在减少对化石能源的依赖。在印度尼西亚,太阳能是一种很有潜力的可再生能源。不幸的是,太阳能具有间歇性,因此,可再生能源发电厂(太阳能发电厂)的输出往往是不可预测的。人们已经发现,太阳辐照量与太阳能发电厂的发电量之间存在线性关系。这种线性关系可以通过对太阳辐照量的预测来预测太阳能发电厂的发电量。本文讨论了预测太阳辐照的三种方法。本文讨论的第一种预测方法是多元线性回归。在这种方法中,利用温度、气压、湿度和风速等数据进行预报。另外两种方法是支持向量回归(SVR)和快速傅立叶变换-自回归混合(FFT-AR)。在这两种方法中,预报过程都是基于历史太阳辐照数据集进行的。上述三种方法均应用于Cirata太阳能电站和自动气象站、气象、气候和地球物理机构获得的太阳辐照数据。根据本文的研究,可以得出结论,混合FFT-AR方法比其他两种方法具有更好的性能。混合FFT-AR方法对所有场景产生的归一化均方根误差(NRMSE)值为7.18%。最小的NRMSE为4.5%,在FFT (99) - AR(48)混合模型中产生,用于短期预测(7天预测期)。
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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