Yuan Zijing, Gao Shangce, Wang Yirui, Li Jiayi, Hou Chunzhi, Guo Lijun
Faculty of Engineering, University of Toyama, Toyama-shi, 930-8555 Japan.
Engineering and Computer Science, Ningbo University, Zhejiang, 315221 China.
Neural Comput Appl. 2023;35(21):15397-15413. doi: 10.1007/s00521-023-08513-0. Epub 2023 Apr 11.
The rapid industrial development in the human society has brought about the air pollution, which seriously affects human health. PM2.5 concentration is one of the main factors causing the air pollution. To accurately predict PM2.5 microns, we propose a dendritic neuron model (DNM) trained by an improved state-of-matter heuristic algorithm (DSMS) based on STL-LOESS, namely DS-DNM. Firstly, DS-DNM adopts STL-LOESS for the data preprocessing to obtain three characteristic quantities from original data: seasonal, trend, and residual components. Then, DNM trained by DSMS predicts the residual values. Finally, three sets of feature quantities are summed to obtain the predicted values. In the performance test experiments, five real-world PM2.5 concentration data are used to test DS-DNM. On the other hand, four training algorithms and seven prediction models were selected for comparison to verify the rationality of the training algorithms and the accuracy of the prediction models, respectively. The experimental results show that DS-DNM has the more competitive performance in PM2.5 concentration prediction problem.
人类社会的快速工业发展带来了空气污染,严重影响人类健康。PM2.5浓度是造成空气污染的主要因素之一。为了准确预测PM2.5微米浓度,我们提出了一种基于STL-LOESS的改进物质状态启发式算法(DSMS)训练的树突神经元模型(DNM),即DS-DNM。首先,DS-DNM采用STL-LOESS进行数据预处理,从原始数据中获得三个特征量:季节分量、趋势分量和残差分量。然后,由DSMS训练的DNM预测残差值。最后,将三组特征量相加得到预测值。在性能测试实验中,使用五个真实世界的PM2.5浓度数据来测试DS-DNM。另一方面,选择四种训练算法和七种预测模型进行比较,分别验证训练算法的合理性和预测模型的准确性。实验结果表明,DS-DNM在PM2.5浓度预测问题上具有更具竞争力的性能。