Photovoltaic system power forecasting based on combined grey model and BP neural network

Shouxiang Wang, N. Zhang, Yishu Zhao, J. Zhan
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引用次数: 31

Abstract

With the emergence of energy crisis and environmental pollution, the large scale photovoltaic power systems have been widely applied. However, the output power of photovoltaic power system has the property of uncertainties. In order to lighten the adverse influence for power grid, this paper attempts a method based on Grey combination model to forecast the short-term power output of a PV power system. The proposed method is a combination of grey model and BP neural network model. It takes the main factors of power output of photovoltaic power system into consideration and builds GM(1, 1) model by choosing proper samples, and then builds the BP Neutral Network model using residual error series between fitted values and real values, finally modifies the GM(1, 1) value. The result of test example shows that the Grey combination model can efficiently predict the short-term power output for photovoltaic system and has a potential value in practical applications.
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基于灰色模型和BP神经网络的光伏系统功率预测
随着能源危机和环境污染的出现,大型光伏发电系统得到了广泛的应用。然而,光伏发电系统的输出功率具有不确定性。为了减轻对电网的不利影响,本文尝试了一种基于灰色组合模型的光伏发电系统短期输出预测方法。该方法将灰色模型与BP神经网络模型相结合。考虑光伏发电系统输出功率的主要影响因素,选取合适的样本建立GM(1,1)模型,然后利用拟合值与实值之间的残差序列建立BP神经网络模型,最后对GM(1,1)值进行修正。算例结果表明,灰色组合模型能有效地预测光伏系统的短期输出功率,具有潜在的实际应用价值。
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