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Online 3-h forecasting of the power output from a BIPV system using satellite observations and ANN

机译:使用卫星观测和人工神经网络对BIPV系统的输出功率进行3小时在线预测

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Photovoltaic (PV) systems are the reference technology in the solar-based electricity generation market. Rapid changes in solar radiation can alter PV power output; for this reason, knowledge of future atmospheric scenarios helps system operators to control the PV production in advance, reducing the instabilities that the electrical grid may suffer in electricity integration, and managing the auto consumption power output. With this is mind, we present a model to forecast (up to 3 h ahead) the building integrated photovoltaic (BIPV) system's power output, which is installed on the roof of the Solar Energy Research Center (CIESOL), Almeria, Spain. The satellite images have been combined with Artificial Neural Networks (ANN) primarily to predict power output using the lowest number of input variables. The results, which can be considered highly satisfactory, demonstrate the ANN's prediction accuracy with an normalized root mean square error for all sky conditions of less than 26%, and with practically no deviation. We demonstrate how beneficial matching of two already proven techniques can bring about spectacular results in energy generation prediction for the BIPV system.
机译:光伏(PV)系统是太阳能发电市场中的参考技术。太阳辐射的快速变化会改变光伏发电量;因此,对未来大气情景的了解有助于系统运营商提前控制光伏发电,减少电网在电力集成中可能遭受的不稳定性以及管理自动消耗的功率输出。考虑到这一点,我们提出了一个模型(最多3小时)以预测建筑物集成光伏(BIPV)系统的功率输出,该系统安装在西班牙阿尔梅里亚太阳能研究中心(CIESOL)的屋顶上。卫星图像已与人工神经网络(ANN)结合在一起,主要是使用最少数量的输入变量来预测功率输出。可以被认为是非常令人满意的结果证明了ANN的预测准确性,在所有天空条件下的归一化均方根误差均小于26%,并且几乎没有偏差。我们证明了两种已经证明的技术的有益匹配如何在BIPV系统的发电预测中带来惊人的结果。

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