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Research on power prediction of photovoltaic power station based on similar hour and LM-BP neural network

机译:基于类似时间和LM-BP神经网络的光伏电站功率预测研究

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Aiming to solve the problem of low precision of traditional photovoltaic power forecast method under abrupt weather conditions. In this paper, a high-precision photovoltaic power prediction method based on similarity time and LM-BP neural network is proposed. Firstly, the factors affecting the output power of photovoltaic power station are analyzed, and the short-term output power model of photovoltaic power station is established based on similar day and LM-BP neural network. Then, from the perspective of model training efficiency and prediction accuracy, the deficiencies in the short-term power prediction of photovoltaic power stations based on similar days and LM-BP algorithm are analyzed. Secondly, the prediction model of LM-BP neural network based on similar hours is established. Finally, Jiaxing photovoltaic power station is taken as an example for simulation verification. The simulation results show that the proposed method has high accuracy in predicting photovoltaic power under abrupt weather conditions.
机译:旨在解决突然天气条件下传统光伏电力预测方法的低精度问题。本文提出了一种基于相似度和LM-BP神经网络的高精度光伏电力预测方法。首先,分析了影响光伏电站输出功率的因素,基于类似日和LM-BP神经网络建立光伏电站的短期输出功率模型。然后,从模型训练效率和预测准确度的角度来看,分析了基于类似天和LM-BP算法的光伏电站短期功率预测的缺陷。其次,建立了基于类似时间的LM-BP神经网络的预测模型。最后,嘉兴光伏发电站被视为仿真验证的示例。仿真结果表明,该方法在突然天气条件下预测光伏电力具有高精度。

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