Huang Rui, Hu Rui, Chen Huayou
School of Mathematical Sciences, Anhui University, Hefei, 230601, Anhui, China.
School of Mathematics and Computer, Tongling University, Tongling, 244000, Anhui, China.
Environ Monit Assess. 2024 Dec 26;197(1):96. doi: 10.1007/s10661-024-13466-5.
The monitoring of air pollution through the air quality index (AQI) is a fundamental tool in ensuring public health protection. Accurate prediction of air quality is necessary for the timely implementation of measures to control and manage air pollution, thereby mitigating its detrimental impact on human health. A novel hybrid prediction model is proposed, which is EMD-KMC-EC-SSA-VMD-LSTM. Raw AQI index data are decomposed into intrinsic mode functions (IMFs) by empirical mode decomposition (EMD) method. Subsequently, sample entropy (SE) is utilized to assess the intricacy of IMFs, and K-means clustering (KMC) is used to reconstruct them into joint intrinsic mode functions (Co-IMFs). Then, the variational mode decomposition (VMD) is used to transform the complex Co-IMF0 into simpler IMFs. Long short-term memory (LSTM), optimized either by the Sparrow Search Algorithm (SSA), is applied to forecast all IMFs, generating the first prediction sequence. To further refine the forecasting, an error correction (EC) technique is adopted. The error sequence is obtained by subtracting the forecasting sequence from the raw sequence, which is then decomposed by EMD-SSA-VMD. Subsequently, SSA-LSTM is engaged to forecast the decomposed error sequence, generating the error forecasting sequence. Finally, the forecast outcomes are combined with the error predictions to generate the final AQI prediction sequence. The proposed approach undergoes validation across four urban centers and undergoes comparison against a set of eight prediction models. Experimental findings underscore the heightened precision of this hybrid forecasting model in predicting AQI metrics.
通过空气质量指数(AQI)监测空气污染是保障公众健康的一项基本工具。准确预测空气质量对于及时采取措施控制和管理空气污染至关重要,从而减轻其对人类健康的有害影响。本文提出了一种新型混合预测模型,即EMD-KMC-EC-SSA-VMD-LSTM。原始AQI指数数据通过经验模态分解(EMD)方法分解为固有模态函数(IMF)。随后,利用样本熵(SE)评估IMF的复杂性,并使用K均值聚类(KMC)将其重构为联合固有模态函数(Co-IMF)。然后,使用变分模态分解(VMD)将复杂的Co-IMF0转换为更简单的IMF。采用麻雀搜索算法(SSA)优化的长短期记忆(LSTM)对所有IMF进行预测,生成第一个预测序列。为了进一步优化预测,采用了误差校正(EC)技术。误差序列通过从原始序列中减去预测序列获得,然后通过EMD-SSA-VMD进行分解。随后,使用SSA-LSTM预测分解后的误差序列,生成误差预测序列。最后,将预测结果与误差预测相结合,生成最终的AQI预测序列。所提出的方法在四个城市中心进行了验证,并与一组八个预测模型进行了比较。实验结果强调了这种混合预测模型在预测AQI指标方面具有更高的精度。