利用神经网络预测并网光伏发电系统的太阳能发电量

Mashud Rana, I. Koprinska, V. Agelidis
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引用次数: 43

摘要

对不同时间间隔的光伏发电进行预测是保证电网可靠经济运行的必要条件。在本文中,我们研究了神经网络在不使用任何外源数据的情况下,以前一个值为间隔30分钟预测第二天光伏发电量的应用。我们提出了基于神经网络集成的三种不同的方法-两种非迭代和一种迭代。我们使用四个澳大利亚一年的太阳数据集来评估这些方法的性能。这包括评估预测准确性、评估使用集成的好处,以及与用作基线的两种持久性模型和基于支持向量回归的预测模型进行性能比较。结果表明,在三种方法中,迭代法是最准确的,并且优于所有其他方法进行比较。
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Forecasting solar power generated by grid connected PV systems using ensembles of neural networks
Forecasting solar power generated from photovoltaic systems at different time intervals is necessary for ensuring reliable and economic operation of the electricity grid. In this paper, we study the application of neural networks for predicting the next day photovoltaic power outputs in 30 minutes intervals from the previous values, without using any exogenous data. We propose three different approaches based on ensembles of neural networks - two non-iterative and one iterative. We evaluate the performance of these approaches using four Australian solar datasets for one year. This includes assessing predictive accuracy, evaluating the benefit of using an ensemble, and comparing performance with two persistence models used as baselines and a prediction model based on support vector regression. The results show that among the three proposed approaches, the iterative approach was the most accurate and it also outperformed all other methods used for comparison.
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