Paper
22 November 2022 PM2.5 prediction based on PCA-EDWaveNet-LSTM
Xin Zhou, Li Zhu, Wenping Jin, Ting Luo
Author Affiliations +
Proceedings Volume 12475, Second International Conference on Advanced Algorithms and Signal Image Processing (AASIP 2022); 124750S (2022) https://doi.org/10.1117/12.2660261
Event: Second International Conference on Advanced Algorithms and Signal Image Processing (AASIP 2022), 2022, Hulun Buir, China
Abstract
At this stage, the PM2.5 concentration prediction algorithm ignores the influence of other air pollution factors, and has not realized the time-dependent integration with the influence of other environmental pollutants. In this regard, the PCA-EDWaveNet-LSTM algorithm considering other air pollution characteristics is proposed. The algorithm proposes to consider other air pollution factors, combine the influence of other air pollution factors with the times dependence on PM2.5 particle concentration, and establish a PCA-EDWaveNet-LSTM algorithm based on air pollution characteristics. In the empirical analysis of PM2.5 historical concentration prediction in Xi’an, the algorithm is compared with RF_Regression algorithm, SVM algorithm, and LSTM neural network. The results show that the prediction performance of this algorithm is better than various traditional prediction algorithms in PM2.5 concentration prediction.
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Xin Zhou, Li Zhu, Wenping Jin, and Ting Luo "PM2.5 prediction based on PCA-EDWaveNet-LSTM", Proc. SPIE 12475, Second International Conference on Advanced Algorithms and Signal Image Processing (AASIP 2022), 124750S (22 November 2022); https://doi.org/10.1117/12.2660261
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KEYWORDS
Data modeling

Air contamination

Data acquisition

Principal component analysis

Autoregressive models

Convolution

Neural networks

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