基于人工神经网络模型对光伏系统实际性能的敏感性

A. Ameen, J. Pasupuleti, T. Khatib
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引用次数: 3

摘要

提出了一种新的光伏组件输出电流预测模型。该模型基于双输入一输出的级联前向反向传播人工神经网络。太阳辐射和环境温度是输入,预测电流是输出。在阿曼Sohar市安装的1.4 kWp光伏系统的实验数据用于开发所提出的模型。为了考虑系统输出电流的不确定性,这些数据的间隔为2秒。为了评估神经网络的准确性,使用了三个统计值,即平均绝对百分比误差(MAPE)、平均偏差误差(MBE)和均方根误差(RMSE)。此外,还验证了该模型在高不确定率下的性能预测能力。结果表明,该模型的MAPE、MBE和RMSE分别为7.08%、-4.98%和7.8%。
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Sensitivity of artificial neural network based model for photovoltaic system actual performance
A novel prediction model for the output current of PV module is proposed in this paper. The proposed model is based on cascade-forward back propagation artificial neural network with two inputs and one output. Solar radiation and ambient temperature are the inputs and the predicted current is the output. Experiment data for a 1.4 kWp PV systems installed in Sohar city, Oman are utilized in developing the proposed model. These data has an interval of 2 seconds in order to consider the uncertainty of the system's output current. In order to evaluate the accuracy of the neural network, three statistical values are used namely mean absolute percentage error (MAPE), mean bias error (MBE) and root mean square error (RMSE). Moreover, the ability of the proposed model to predict performance with high uncertainty rate is validated. The results show that the MAPE, MBE and RMSE of the proposed model are 7.08%, -4.98% and 7.8%, respectively.
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