基于改进变分模态分解和置换熵的风电预测

IF 2.9 4区 环境科学与生态学 Q3 ENERGY & FUELS Clean Energy Pub Date : 2023-09-20 DOI:10.1093/ce/zkad043
Zhijian Qu, Xinxing Hou, Wenbo Hu, Rentao Yang, Chao Ju
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引用次数: 0

摘要

由于风力发电具有明显的间歇性、随机性和非平稳性,很难达到预期的预测精度。为此,提出了一种基于改进的带置换熵变分模态分解的风电功率预测方法。首先,基于风电场的气象数据,采用Spearman相关系数法对与风电强相关的气象数据进行过滤,建立风电预测模型数据集;然后利用改进的变分模态分解技术对原始风电功率进行分解,消除数据中的噪声,并利用置换熵将分解后的风电功率重构为新的子序列;以气象数据和新子序列为输入变量,建立了层叠深度集成预测模型;最后通过遗传算法对模型算法的超参数进行优化,得到预测结果。利用西北某风电场的实测数据验证了模型的有效性。结果表明,与自回归综合移动平均模型、支持向量机模型、长短期记忆模型、极值梯度增强模型和卷积神经网络与长短期记忆模型相比,该方法的平均绝对误差、均方根误差和平均绝对百分比误差分别提高了33.1%、56.1%和54.2%,表明该方法具有更高的预测精度。
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Wind power forecasting based on improved variational mode decomposition and permutation entropy
Abstract Due to the significant intermittent, stochastic and non-stationary nature of wind power generation, it is difficult to achieve the desired prediction accuracy. Therefore, a wind power prediction method based on improved variational modal decomposition with permutation entropy is proposed. First, based on the meteorological data of wind farms, the Spearman correlation coefficient method is used to filter the meteorological data that are strongly correlated with the wind power to establish the wind power prediction model data set; then the original wind power is decomposed using the improved variational modal decomposition technique to eliminate the noise in the data, and the decomposed wind power is reconstructed into a new subsequence by using the permutation entropy; with the meteorological data and the new subsequence as input variables, a stacking deeply integrated prediction model is developed; and finally the prediction results are obtained by optimizing the hyperparameters of the model algorithm through a genetic algorithm. The validity of the model is verified using a real data set from a wind farm in north-west China. The results show that the mean absolute error, root mean square error and mean absolute percentage error are improved by at least 33.1%, 56.1% and 54.2% compared with the autoregressive integrated moving average model, the support vector machine, long short-term memory, extreme gradient enhancement and convolutional neural networks and long short-term memory models, indicating that the method has higher prediction accuracy.
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来源期刊
Clean Energy
Clean Energy Environmental Science-Management, Monitoring, Policy and Law
CiteScore
4.00
自引率
13.00%
发文量
55
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