School of Statistics and Mathematics, Zhongnan University of Economics and Law, Wuhan, 430073, China.
Sci Rep. 2023 Mar 22;13(1):4665. doi: 10.1038/s41598-023-31569-w.
A model with high accuracy and strong generalization performance is conducive to preventing serious pollution incidents and improving the decision-making ability of urban planning. This paper proposes a new neural network structure based on seasonal-trend decomposition using locally weighted scatterplot smoothing (Loess) (STL) and a dependency matrix attention mechanism (DMAttention) based on cosine similarity to predict the concentration of air pollutants. This method uses STL for series decomposition, temporal convolution, a bidirectional long short-term memory network (TCN-BiLSTM) for feature learning of the decomposed series, and DMAttention for interdependent moment feature emphasizing. In this paper, the long short-term memory network (LSTM) and the gated recurrent unit network (GRU) are set as the baseline models to design experiments. At the same time, to test the generalization performance of the model, short-term forecasts in hours were performed using PM, PM, SO, NO, CO, and O data. The experimental results show that the model proposed in this paper is superior to the comparison model in terms of root mean square error (RMSE) and mean absolute percentage error (MAPE). The MAPE values of the 6 kinds of pollutants are 6.800%, 10.492%, 9.900%, 6.299%, 4.178%, and 7.304%, respectively. Compared with the baseline LSTM and GRU models, the average reduction is 49.111% and 43.212%, respectively.
一个具有高精度和强泛化性能的模型有助于防止严重的污染事件,并提高城市规划的决策能力。本文提出了一种新的神经网络结构,该结构基于季节性趋势分解,使用局部加权散点平滑(Loess)(STL)和基于余弦相似度的依赖矩阵注意力机制(DMAttention)来预测空气污染物浓度。该方法使用 STL 进行序列分解,时间卷积,双向长短期记忆网络(TCN-BiLSTM)对分解序列的特征进行学习,以及 DMAttention 对相关时刻特征进行强调。在本文中,将长短期记忆网络(LSTM)和门控循环单元网络(GRU)设置为基线模型进行实验设计。同时,为了测试模型的泛化性能,使用 PM、PM、SO、NO、CO 和 O 数据进行小时内的短期预测。实验结果表明,与对比模型相比,本文提出的模型在均方根误差(RMSE)和平均绝对百分比误差(MAPE)方面具有优势。6 种污染物的 MAPE 值分别为 6.800%、10.492%、9.900%、6.299%、4.178%和 7.304%。与基线 LSTM 和 GRU 模型相比,平均降幅分别为 49.111%和 43.212%。