利用二次分解和混合深度学习模型的新型短期 PM2.5 预测方法

IF 2.6 3区 工程技术 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Ruru Liu, Liping Xu, Tao Zeng, Tao Luo, Mengfei Wang, Yuming Zhou, Chunpeng Chen, Shuo Zhao
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引用次数: 0

摘要

PM2.5 污染对大气环境和人类健康构成了重要威胁。为了精确预测 PM2.5 浓度,本研究提出了一种创新的组合模型:EMD-SE-GWO-VMD-ZCR-CNN-LSTM。首先,利用经验模式分解(EMD)对 PM2.5 进行分解,并利用样本熵(SE)评估子序列复杂性。其次,利用灰狼优化(GWO)算法优化变异模式分解(VMD)的超参数,并对复杂子序列进行两次分解。然后,利用过零率(ZCR)将序列分为高频和低频两部分;利用卷积神经网络(CNN)预测高频序列,利用长短期记忆网络(LSTM)预测低频序列。最后,对高频和低频序列的预测值进行重构,得出最终结果。实验基于北京地区三个空气质量监测站的 1009A、1010A 和 1011A 数据进行。结果表明,与其他单一模型和混合模型相比,所设计模型在三个空气质量监测站的 R2 值平均分别提高了 2.63%、0.59% 和 1.88%,验证了所提模型的显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Short-Term PM2.5 Forecasting Approach Using Secondary Decomposition and a Hybrid Deep Learning Model
PM2.5 pollution poses an important threat to the atmospheric environment and human health. To precisely forecast PM2.5 concentration, this study presents an innovative combined model: EMD-SE-GWO-VMD-ZCR-CNN-LSTM. First, empirical mode decomposition (EMD) is used to decompose PM2.5, and sample entropy (SE) is used to assess the subsequence complexity. Secondly, the hyperparameters of variational mode decomposition (VMD) are optimized by Gray Wolf Optimization (GWO) algorithm, and the complex subsequences are decomposed twice. Next, the sequences are divided into high-frequency and low-frequency parts by using the zero crossing rate (ZCR); the high-frequency sequences are predicted by a convolutional neural network (CNN), and the low-frequency sequences are predicted by a long short-term memory network (LSTM). Finally, the predicted values of the high-frequency and low-frequency sequences are reconstructed to obtain the final results. The experiment was conducted based on the data of 1009A, 1010A, and 1011A from three air quality monitoring stations in the Beijing area. The results indicate that the R2 value of the designed model increased by 2.63%, 0.59%, and 1.88% on average in the three air quality monitoring stations, respectively, compared with the other single model and the mixed model, which verified the significant advantages of the proposed model.
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来源期刊
Electronics
Electronics Computer Science-Computer Networks and Communications
CiteScore
1.10
自引率
10.30%
发文量
3515
审稿时长
16.71 days
期刊介绍: Electronics (ISSN 2079-9292; CODEN: ELECGJ) is an international, open access journal on the science of electronics and its applications published quarterly online by MDPI.
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