Data completing of missing wind power data based on adaptive BP neural network

Y. Mao, Ma Jian
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引用次数: 10

Abstract

The integrity of wind power output data is of great significance for the accurate prediction of wind power and the utilization of wind energy. In this paper, it is found that the power output affected by many factors, through the analysis of the mathematical model of wind turbine, and the solution of the specific expressions of the relationship with the traditional mathematical methods is hard to find. Based on the measured data of wind field, such as fan current, rotor speed, wind direction, and so on, a kind of model based on adaptive BP neural network is proposed to fill the missing wind power data. The simulation experiment shows that the accuracy rate and the average relative error of complete data get better results, besides the quality of completed data is improved effectively.
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基于自适应BP神经网络的风电数据缺失补全
风电输出数据的完整性对于风电的准确预测和风能的利用具有重要意义。本文通过对风力发电机组数学模型的分析,发现其输出功率受诸多因素的影响,并且用传统的数学方法很难找到其具体表达式的求解关系。基于风机电流、转子转速、风向等风场实测数据,提出了一种基于自适应BP神经网络的模型来填补风电数据缺失。仿真实验表明,该方法不仅提高了完整数据的准确率和平均相对误差,而且有效地提高了完整数据的质量。
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