基于二次模态分解和LSTM-MFO算法的配电网运行趋势预测

Tianzhong Zhang, Jinfeng Zhang, Huan Xue, Chengjin Wang, Wenzhi Han, Kunpeng Li
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引用次数: 0

摘要

配电网运行趋势预测是动态分析配电网安全运行状态和潜在隐患的关键技术,如何准确描述配电网运行状态和趋势变化是保证配电网安全稳定运行的重要工作。提出了一种配电网运行趋势预测策略。首先,融合集成经验模态分解(EEMD)和变分模态分解(VMD),建立配电网运行参数二次模态分解模型,提取相对稳定的子序列和趋势序列,降低高频序列中无序分量对预测精度的影响;蛾焰优化(MFO)对LSTM参数进行优化,利用优化后的长期记忆网络(LSTM)对运行参数的子子集进行预测,进一步提高了配电网运行趋势预测的准确性,最后在中国某省的实际电网中验证了本文方法的有效性。该方法可以准确地描述配电网运行的变化趋势,感知配电网可能意识到的安全风险。
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Prediction of Distribution Network Operation Trend Based on the Secondary Modal Decomposition and LSTM-MFO Algorithm
Distribution network operation trend prediction is a key technology to analyze the network security operation status and potential hidden dangers of distribution side dynamically, how to accurately depict distribution network operation status and trend change is an important work to ensure the safe and stable operation of distribution network. In this paper, a trend prediction strategy for distribution network operation is proposed. First, fusion integration Ensemble Empirical Mode Decomposition (EEMD) and Variational Mode Decom (VMD) establish a secondary modal decomposition model of distribution network operating parameters, extract relatively stable subsequents and trend sequences, in order to reduce the impact of disordered components in high frequency sequences on predictive accuracy; Moth Flame Optimization (MFO) optimizes the LSTM parameters and uses the optimized Long-term Memory Networks (LSTM) to predict the subsethics of the operating parameters to further improve the accuracy of the distribution network operation trend prediction, and finally, the validity of the method proposed in this paper is verified in the actual power grid in a province of China. This method can accurately depict the changing trend of distribution network operation and perceive the security risks that distribution network may awareness.
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