Solar Radiation Forecasting Model

F. Hocaoglu, Ö. N. Gerek, M. Kurban
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引用次数: 3

Abstract

The prediction of hourly solar radiation data has important consequences in many solar applications (Markvart, Fragaki & Ross, 2006). Such data can be regarded as a time series and its prediction depends on accurate modeling of the stochastic process. The computation of the conditional expectation, which is in general non-linear, requires the knowledge of the high order distribution of the samples. Using a finite data, such distributions can only be estimated or fit into a pre-set stochastic model. Methods like Auto-Regressive (AR) prediction, Fourier Analysis (Dorvlo, 2000) Markov chains (Jain & Lungu, 2002) (Muselli, Poggi, Notton & Louche, 2001) and ARMA model (Mellit, Benghanem, Hadj Arab, & Guessoum, 2005) for designing the non-linear signal predictors are examples to this approach. The neural network (NN) approach also provides a good to the problem by utilizing the inherent adaptive nature (Elminir, Azzam, Younes, 2007). Since NNs can be trained to predict results from examples, they are able to deal with non-linear problems. Once the training is complete, the predictor can be set to a fixed value for further prediction at high speed. A number of researchers have worked on prediction of global solar radiation data (Kaplanis, 2006) (Bulut & Buyukalaca, 2007). In these works, the data is treated in its raw form as a 1-D time series, therefore the inter-day dependencies are not exploited. This article introduces a new and simple approach for hourly solar radiation forecasting. First, the data are rendered in a matrix to form a 2-D image-like model. As a first attempt to test the 2-D model efficiency, optimal linear image prediction filters (Gonzalez, 2002) are constructed. In order to take into account the adaptive nature for complex and non-stationary time series, NNs are also applied to the forecasting problem and results are discussed. BACKGROUND
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太阳辐射预报模型
每小时太阳辐射数据的预测在许多太阳能应用中具有重要的影响(Markvart, Fragaki & Ross, 2006)。这些数据可以看作是一个时间序列,它的预测依赖于对随机过程的精确建模。条件期望的计算通常是非线性的,需要了解样本的高阶分布。使用有限的数据,这样的分布只能估计或拟合到一个预先设定的随机模型中。自回归(AR)预测、傅里叶分析(Dorvlo, 2000)、马尔可夫链(Jain & Lungu, 2002) (Muselli, Poggi, Notton & Louche, 2001)和ARMA模型(Mellit, Benghanem, Hadj Arab, & Guessoum, 2005)等设计非线性信号预测器的方法都是这种方法的例子。神经网络(NN)方法也通过利用其固有的自适应特性为该问题提供了一个很好的解决方案(Elminir, Azzam, Younes, 2007)。由于神经网络可以通过训练来预测示例的结果,因此它们能够处理非线性问题。一旦训练完成,预测器可以设置为一个固定的值,以便在高速下进一步预测。许多研究人员从事全球太阳辐射数据的预测工作(Kaplanis, 2006) (Bulut & Buyukalaca, 2007)。在这些工作中,数据以原始形式作为1-D时间序列处理,因此没有利用日之间的依赖关系。本文介绍了一种新的、简单的逐时太阳辐射预报方法。首先,将数据以矩阵形式呈现,形成二维图像模型。作为测试二维模型效率的第一次尝试,构建了最优线性图像预测滤波器(Gonzalez, 2002)。为了考虑复杂和非平稳时间序列的自适应特性,将神经网络应用于预测问题,并对结果进行了讨论。背景
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