基于贝叶斯神经网络- LSTM模型的光伏发电功率概率预测

Rui Chen, Jie Cao, Dan Zhang
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引用次数: 3

摘要

光伏发电的确定性预测可以支持调度系统的长期优化,但在复杂天气条件下,光伏发电短期波动较大,确定性预测方法的预测精度将显著降低,影响电网的安全稳定运行。提出了一种基于贝叶斯神经网络长短期记忆(BNN-LSTM)模型的光伏发电概率分布预测方法。首先,利用路径分析方法选取相关度最高的数值天气预报特征变量。然后,利用LSTM单元提取数值天气预报和历史时间序列数据的特征,提高模式预测精度。最后,将贝叶斯神经网络中的参数以概率分布的形式表示,用于拟合光伏发电的概率分布。实例研究表明,该方法比确定性预测方法更能处理光伏电力波动。与传统的光伏发电区间预测方法相比,在相同的预测精度下,预测区间宽度更窄。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic Prediction of Photovoltaic Power Using Bayesian Neural Network - LSTM Model
The deterministic prediction of photovoltaic power can support the long-term optimization of the dispatching system, but under complex weather conditions, the short-term fluctuation of photovoltaic power will be large, and the prediction accuracy of the deterministic prediction method will be significantly reduced, which will affect the safe and stable operation of the power grid. A prediction method of the photovoltaic power probability distribution based on the Bayesian Neural Network -Long Short-Term Memory (BNN-LSTM) model is proposed. Firstly, use path analysis to select the most related numerical weather forecast feature variables. Then, the LSTM unit is used to extract features of the numerical weather forecast and historical time series data to improve model prediction accuracy. Finally, the parameters in the Bayesian neural network are expressed in the form of a probability distribution, which can be used to fit the probability distribution of photovoltaic power. The case study shows that the proposed method is more capable of dealing with photovoltaic power fluctuations than the deterministic prediction method. Compared with the traditional photovoltaic power interval predicting method, the prediction interval width is narrower under the same forecast accuracy.
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