Wang Xiaohu, Zhang Suo, Chen Yi, He Longying, Ren Yongmei, Zhang Zhen, Li Juan, Zhang Shiqing
School of Intelligent Manufacturing and Mechanical Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
School of Electrical and Information Engineering, Hunan Institute of Technology, Hengyang, 421002, Hunan, China.
Sci Rep. 2024 Aug 1;14(1):17841. doi: 10.1038/s41598-024-68874-x.
The precise forecasting of air quality is of great significance as an integral component of early warning systems. This remains a formidable challenge owing to the limited information of emission source and the considerable uncertainties inherent in dynamic processes. To improve the accuracy of air quality forecasting, this work proposes a new spatiotemporal hybrid deep learning model based on variational mode decomposition (VMD), graph attention networks (GAT) and bi-directional long short-term memory (BiLSTM), referred to as VMD-GAT-BiLSTM, for air quality forecasting. The proposed model initially employ a VMD to decompose original PM data into a series of relatively stable sub-sequences, thus reducing the influence of unknown factors on model prediction capabilities. For each sub-sequence, a GAT is then designed to explore deep spatial relationships among different monitoring stations. Next, a BiLSTM is utilized to learn the temporal features of each decomposed sub-sequence. Finally, the forecasting results of each decomposed sub-sequence are aggregated and summed as the final air quality prediction results. Experiment results on the collected Beijing air quality dataset show that the proposed model presents superior performance to other used methods on both short-term and long-term air quality forecasting tasks.
作为预警系统的一个组成部分,空气质量的精确预测具有重要意义。由于排放源信息有限以及动态过程中存在的大量不确定性,这仍然是一个巨大的挑战。为了提高空气质量预测的准确性,这项工作提出了一种基于变分模态分解(VMD)、图注意力网络(GAT)和双向长短期记忆(BiLSTM)的新型时空混合深度学习模型,即VMD-GAT-BiLSTM,用于空气质量预测。所提出的模型首先采用VMD将原始PM数据分解为一系列相对稳定的子序列,从而减少未知因素对模型预测能力的影响。对于每个子序列,然后设计一个GAT来探索不同监测站之间的深度空间关系。接下来,利用BiLSTM学习每个分解子序列的时间特征。最后,将每个分解子序列的预测结果进行汇总并求和,作为最终的空气质量预测结果。在收集的北京空气质量数据集上的实验结果表明,所提出的模型在短期和长期空气质量预测任务上均表现出优于其他所用方法的性能。