Wu Zekai, Zhao Wenqin, Lv Yaqiong
School of Transportation and Logistics Engineering, Wuhan University of Technology, Wuhan, China.
Air Qual Atmos Health. 2022;15(12):2299-2311. doi: 10.1007/s11869-022-01252-6. Epub 2022 Sep 30.
Air quality affects people's daily life. Air quality index (AQI) is an essential indicator for controlling air pollution and ensuring public health, whose accurate forecasting can provide timely air pollution warnings and remind people to take protective measures against air pollution in advance. To address this issue, this paper developed a new ensemble learning model for AQI forecasting. In this study, (1) the signal decomposition technique complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) is introduced to decompose the nonlinear and nonstationary AQI history data series into several more regular and more stable subseries firstly. (2) Fuzzy entropy (FE) is selected as the feature indicator to recombine the subseries with similar trends to avoid the problem of over-decomposition and reduce the computing time. (3) An ensemble long short-term memory (LSTM) neural network is established to forecast each reconstructed subseries, whose values are superimposed to predict the AQI value eventually. To validate the predicting performance of the proposed model, daily AQI data of Wuhan, China, dating from January 1, 2019, to February 28, 2022, is used as the experiment case. And comparative analysis is made between the proposed model and other common-used forecasting models. Benchmarking results of the numerical study demonstrate that the proposed model is superior to the other forecasting models with better AQI prediction accuracy.
空气质量影响人们的日常生活。空气质量指数(AQI)是控制空气污染和保障公众健康的一项重要指标,其准确预测能够提供及时的空气污染预警,并提醒人们提前采取针对空气污染的防护措施。为解决这一问题,本文开发了一种用于AQI预测的新型集成学习模型。在本研究中,(1)首先引入信号分解技术——自适应噪声完备总体经验模态分解(CEEMDAN),将非线性、非平稳的AQI历史数据序列分解为若干更规则、更稳定的子序列。(2)选择模糊熵(FE)作为特征指标,对趋势相似的子序列进行重组,以避免过度分解问题并减少计算时间。(3)建立一个集成长短期记忆(LSTM)神经网络来预测每个重构后的子序列,最终将这些子序列的值叠加起来以预测AQI值。为验证所提模型的预测性能,选取中国武汉2019年1月1日至2022年2月28日的每日AQI数据作为实验案例。并在所提模型与其他常用预测模型之间进行了对比分析。数值研究的基准结果表明,所提模型优于其他预测模型,具有更好的AQI预测精度。