Source Journal of CSCD
Source Journal for Chinese Scientific and Technical Papers
Core Journal of RCCSE
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Volume 39 Issue 10
Jan.  2022
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LU Yao, YANG Jie, SHAO Zhi-juan, ZHU Cong-cong. PM2.5 ROBUST PREDICTION BASED ON STAGED TEMPORAL ATTENTION NETWORK[J]. ENVIRONMENTAL ENGINEERING , 2021, 39(10): 93-100. doi: 10.13205/j.hjgc.202110013
Citation: LU Yao, YANG Jie, SHAO Zhi-juan, ZHU Cong-cong. PM2.5 ROBUST PREDICTION BASED ON STAGED TEMPORAL ATTENTION NETWORK[J]. ENVIRONMENTAL ENGINEERING , 2021, 39(10): 93-100. doi: 10.13205/j.hjgc.202110013

PM2.5 ROBUST PREDICTION BASED ON STAGED TEMPORAL ATTENTION NETWORK

doi: 10.13205/j.hjgc.202110013
  • Received Date: 2020-11-28
    Available Online: 2022-01-26
  • The forecast of PM2.5 concentration plays an important role in air pollution control and improvement of environmental quality. Affected by multiple factors such as changes in meteorological conditions and air pollutants emissions, the PM2.5 forecast was usually susceptible to sudden changes and noise data. Therefore, in-depth exploration of the PM2.5 concentration change law and modeling robust prediction models have become key steps in this task. Based on the analysis of the correlation between meteorological conditions and atmospheric pollutants on PM2.5, a staged temporal-attention network (STAN) was proposed. This method combined a multi-stage attention module and a recurrent neural network (RNN) to model the cross-influence of meteorological factors and atmospheric pollutants on PM2.5 concentration. Statistical analysis of the absolute error values of the prediction results of Beijing, Shanghai, and Guangzhou showed the following results:1) compared with the widely used support vector machine (SVM), long short-term memory (LSTM), and multilayer perceptron (MLP), the performance of the proposed method increased more than 10%. 2) compared with the latest fusion model U-net, the proposed STAN still achieved a decrease in the error of 7%. Taking Beijing's winter forecast results as an example for statistical analysis, the fitting coefficient between the predicted value of STAN and the measured value could reach 95.2%. In the robustness analysis, it was found that the error increased by only 9.3% when the proposed method ran on data with 10% noise. The above results proved that the combination of the attention mechanism and the temporal learning module could deeply mine the change law of PM2.5 and suppress noise data. It also showed that the STAN could achieve the robust prediction of PM2.5 concentration.
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