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Forecasting of preprocessed daily solar radiation time series using neural networks

机译:利用神经网络预测每日日照时间序列

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In this paper, we present an application of Artificial Neural Networks (ANNs) in the renewable energy domain. We particularly look at the Multi-Layer Perceptron (MLP) network which has been the most used of ANNs architectures both in the renewable energy domain and in the time series forecasting. We have used a MLP and an ad hoc time series pre-processing to develop a methodology for the daily prediction of global solar radiation on a horizontal surface. First results are promising with nRMSE~21% and RMSE ~ 3.59 MJ/m~2. The optimized MLP presents predictions similar to or even better than conventional and reference methods such as ARIMA techniques, Bayesian inference, Markov chains and k-Nearest-Neighbors. Moreover we found that the data pre-processing approach proposed can reduce significantly forecasting errors of about 6% compared to conventional prediction methods such as Markov chains or Bayesian inference. The simulator proposed has been obtained using 19 years of available data from the meteorological station of Ajaccio (Corsica Island, France, 41°55'N, 8°44'E, 4 m above mean sea level). The predicted whole methodology has been validated on a 1.175 kWc mono-Si PV power grid. Six prediction methods (ANN, clear sky model, combination...) allow to predict the best daily DC PV power production at horizon d + 1. The cumulated DC PV energy on a 6-months period shows a great agreement between simulated and measured data (R~2 > 0.99 and nRMSE < 2%).
机译:在本文中,我们介绍了人工神经网络(ANN)在可再生能源领域中的应用。我们特别关注多层感知器(MLP)网络,该网络是可再生能源领域和时间序列预测中最常用的ANN结构。我们已经使用MLP和临时时间序列预处理来开发用于每日预测水平面上的全球太阳辐射的方法。初步结果令人鼓舞,nRMSE〜21%和RMSE〜3.59 MJ / m〜2。优化的MLP可以提供类似于或什至优于常规方法和参考方法(例如ARIMA技术,贝叶斯推断,马尔可夫链和k最近邻)的预测。此外,我们发现与传统的预测方法(如马尔可夫链或贝叶斯推断)相比,所提出的数据预处理方法可将预测误差显着降低约6%。拟议的模拟器是使用来自阿雅克修气象站(法国科西嘉岛,法国41°55'N,8°44'E,平均海平面高4 m)的19年可获得的数据获得的。预测的整体方法已在1.175 kWc的单晶硅光伏电网上得到验证。六种预测方法(人工神经网络,晴空模型,组合...)可以预测水平d + 1处的最佳每日DC PV发电量。六个月期间的累积DC PV能量显示出模拟量与测量值之间的巨大一致性数据(R〜2> 0.99,nRMSE <2%)。

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