基于T-S模糊神经网络的光伏短期功率预测

Liao Kaiju, Xuefeng Li, Chaoxu Mu, Wang Dan
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引用次数: 4

摘要

由于天气条件、辐照度、环境温度、风速等气象因素以及部件温度、安装位置等非气象因素的影响,光伏发电系统的输出功率具有较强的间歇性、波动性和不确定性,光伏发电的预测精度较低。基于光伏系统历史发电数据和实际气象数据,利用T-S模糊神经网络预测模型对光伏发电进行短期预测。最后,比较了T-S神经网络与传统BP神经网络的预测结果。结果表明,采用T-S模糊神经网络预测方法可以提高光伏发电输出功率的预测精度。预测结果与实测值的平均误差控制在8%以内。该算法可有效地用于光伏系统的短期功率预测。
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Short-term photovoltaic power prediction based on T-S fuzzy neural network
Due to the meteorological factors, such as weather conditions, irradiance, ambient temperature and wind speed, as well as the non-meteorological factors, such as the temperature and installation location of components and parts, the output power of photovoltaic power generation system is characterized by strong intermittency, volatility and uncertainty, and low forecast accuracy of photovoltaic power generation. Based on the historical power generation data and the actual meteorological data of the photovoltaic system, the short-term prediction of the photovoltaic power generation is carried out by using the T-S fuzzy neural network prediction model. Finally, the prediction results of T-S neural network and traditional BP neural network are compared. The results show that the prediction accuracy of PV output power is improved by using the T-S fuzzy neural network prediction method. The average error percentage between the predicted result and the measured value is controlled within 8%. The algorithm can be effectively used for short-term power forecasting of photovoltaic systems.
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