基于 VMD-IGWO-LSTM 的光伏功率预测研究

Zhiwei Xu, Kexian Xiang, Bin Wang, Xianguo Li
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引用次数: 0

摘要

本研究通过整合变异模态分解(VMD)、改进的灰狼优化算法(IGWO)和长短期记忆神经网络(LSTM)技术,提出了一种预测光伏发电功率的组合方法。该模型考虑了不同环境因素对光伏发电的影响,旨在提高预测精度。首先,通过变模态分解将制约光伏输出功率的四个环境因素分解为特征函数(IMF);然后采用改进的灰狼优化算法优化长短期记忆神经网络;最后,将降维后的数据集输入 LSTM 神经网络,并对多元特征序列进行动态时序建模和对比分析。结果表明,改进灰狼算法优化的 VMD-LSTM 模型的预测效果优于对比模型 LSTM、VMD-LSTM 和 VMD-GWO-LSTM,实现了对外部环境变化中时间-电压功率的准确预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on PV Power Prediction Based on VMD-IGWO-LSTM
This research proposes a combined approach for predicting photovoltaic power by integrating variational modal decomposition (VMD), an improved gray wolf optimization algorithm (IGWO), and long- and short-term memory neural network (LSTM) techniques. The model takes into account the impact of varying environmental factors on photovoltaic power and aims to enhance prediction accuracy. Firstly, the four environmental factors constraining the PV output power are decomposed into eigenfunctions (IMFs) through variational modal decomposition; then the improved gray wolf optimization algorithm is used to optimize the long and short-term memory neural network; finally, the dimensionality-reduced dataset is inputted into the LSTM neural network, and the dynamic temporal modeling and comparative analysis on the multivariate feature sequences are carried out. The results show that the VMD-LSTM model optimized by the improved Gray Wolf algorithm predicts better than the comparison models LSTM, VMD-LSTM and VMD-GWO-LSTM, and achieves the accurate prediction of time-volt power in the external environmental changes.
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