Department of Bioenvironmental Systems Engineering, National Taiwan University, Taipei, 10617, Taiwan.
Department of Water Resources and Environmental Engineering, Tamkang University, New Taipei City, 25137, Taiwan.
Environ Pollut. 2022 Aug 1;306:119348. doi: 10.1016/j.envpol.2022.119348. Epub 2022 Apr 26.
Reliable long-horizon PM forecasts are crucial and beneficial for health protection through early warning against air pollution. However, the dynamic nature of air quality makes PM forecasts at long horizons very challenging. This study proposed a novel machine learning-based model (MCNN-BP) that fused multiple convolutional neural networks (MCNN) with a back-propagation neural network (BPNN) for making spatiotemporal PM forecasts for the next 72 h at 74 stations covering the whole Taiwan simultaneously. Model configuration involved an ensemble of massive hourly air quality and meteorological monitoring datasets and the existing publicly-available PM simulated (forecasted) datasets from an atmospheric chemical transport (ACT) model. The proposed methodology collaboratively constructed two CNNs to mine the observed data (the past) and the forecasted data from ACT (the future) separately. The results showed that the MCNN-BP model could significantly improve the accuracy of spatiotemporal PM forecasts and substantially reduce the forecast biases of the ACT model. We demonstrated that the proposed MCNN-BP model with effective feature extraction and good denoising ability could overcome the curse of dimensionality and offer satisfactory regional long-horizon PM forecasts. Moreover, the MCNN-BP model has considerably shorter computational time (5 min) and lower computational load than the compute-intensive ACT model. The proposed approach hits a milestone in multi-site and multi-horizon forecasting, which significantly contributes to early warning against regional air pollution.
可靠的长期 PM 预测对于通过空气污染预警来保护健康至关重要且有益。然而,空气质量的动态性质使得长时距的 PM 预测极具挑战性。本研究提出了一种新颖的基于机器学习的模型(MCNN-BP),该模型融合了多个卷积神经网络(MCNN)和一个反向传播神经网络(BPNN),可对未来 72 小时内的 PM 进行时空预测,共涵盖台湾地区的 74 个站点。模型配置涉及大量的小时空气质量和气象监测数据集以及大气化学输送(ACT)模型中现有的公开可用的 PM 模拟(预测)数据集的集合。所提出的方法协同构建了两个 CNN,分别挖掘观测数据(过去)和 ACT 预测数据(未来)。结果表明,MCNN-BP 模型可以显著提高时空 PM 预测的准确性,并大幅减少 ACT 模型的预测偏差。我们证明了所提出的 MCNN-BP 模型具有有效的特征提取和良好的去噪能力,可以克服维度灾难并提供令人满意的区域长时距 PM 预测。此外,MCNN-BP 模型的计算时间(5 分钟)和计算负荷都比计算密集型的 ACT 模型短得多。该方法在多站点和多时段预测方面取得了重大进展,为区域空气污染预警做出了重要贡献。