Lin Min-Der, Liu Ping-Yu, Huang Chi-Wei, Lin Yu-Hao
Department of Environmental Engineering, National Chung Hsing University, 145 Xingda Rd., Taichung 402, Taiwan.
General Education Center, National Yunlin University of Science and Technology, 123 University Road, Section 3, Douliou, Yunlin 64002, Taiwan.
Sci Total Environ. 2024 Jan 1;906:167892. doi: 10.1016/j.scitotenv.2023.167892. Epub 2023 Oct 16.
Many cities have long suffered from the events of fine particulate matter (PM) pollutions. The Taiwanese Government has long strived to accurately predict the short-term hourly concentration of PM for the warnings on air pollution. Long Short-Term Memory neural network (LSTM) based on deep learning improves the prediction accuracy of daily PM concentration but PM prediction for next hours still needs to be improved. Therefore, this study proposes innovative Application-Strategy-based LSTM (ASLSTM) to accurately predict the short-term hourly PM concentrations, especially for the high PM predictions. First, this study identified better spatiotemporal input feature of a LSTM for obtaining this Better LSTM (BLSTM). In doing so, BLSTM trained by appropriate datasets could accurately predict the next hourly pollution concentration. Next, the application strategy was applied on BLSTM to construct ASLSTM. Specifically, from a timeline perspective, ASLSTM concatenates several BLSTMs to predict the concentration of PM at the following next several hours during which the predicted outputs of BLSTM at this time t was selected and included as the inputs of the next BLSTM at the next time t + 1, and the oldest input used as BLSTM at the time t was removed. The result demonstrated that BLSTM were trained by the dataset collected from 2008 to 2010 at Dali measurement station because there is a relatively large amount of data on high PM concentration in this dataset. Besides, a comparison of the performance of the ASLSTM with that of the LSTM was made to validate this proposed ASLSTM, especially for the range of higher PM concentration that people concerned. More importantly, the feasibility of this proposed application strategy and the necessity of optimizing the input parameters of LSTM were validated. In summary, this ASLSTM could accurately predict the short-term PM in Taichung city.
许多城市长期饱受细颗粒物(PM)污染事件之苦。台湾地区政府长期致力于准确预测PM的短期每小时浓度,以便发布空气污染预警。基于深度学习的长短期记忆神经网络(LSTM)提高了每日PM浓度的预测准确性,但未来几小时的PM预测仍有待改进。因此,本研究提出了基于创新应用策略的LSTM(ASLSTM),以准确预测短期每小时的PM浓度,特别是对于高PM浓度的预测。首先,本研究确定了LSTM更好的时空输入特征,以获得这种更好的LSTM(BLSTM)。通过这样做,由适当数据集训练的BLSTM可以准确预测下一小时的污染浓度。接下来,将应用策略应用于BLSTM以构建ASLSTM。具体而言,从时间线的角度来看,ASLSTM串联多个BLSTM来预测接下来几个小时的PM浓度,在此期间,选择此时t的BLSTM的预测输出并将其作为下一个时间t + 1的下一个BLSTM的输入,并且删除在时间t用作BLSTM的最旧输入。结果表明,BLSTM是由从2008年至2010年在大里测量站收集的数据集训练的,因为该数据集中有相对大量关于高PM浓度的数据。此外,将ASLSTM与LSTM的性能进行了比较,以验证所提出的ASLSTM,特别是对于人们关注的较高PM浓度范围。更重要的是,验证了所提出的应用策略的可行性以及优化LSTM输入参数的必要性。总之,这种ASLSTM可以准确预测台中市的短期PM。