首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Day-Ahead PM2.5 Concentration Forecasting Using WT-VMD Based Decomposition Method and Back Propagation Neural Network Improved by Differential Evolution
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Day-Ahead PM2.5 Concentration Forecasting Using WT-VMD Based Decomposition Method and Back Propagation Neural Network Improved by Differential Evolution

机译:使用基于WT-VMD的分解方法和差分传播改进的反向传播神经网络进行日前PM2.5浓度预测

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摘要

Accurate PM2.5 concentration forecasting is crucial for protecting public health and atmospheric environment. However, the intermittent and unstable nature of PM2.5 concentration series makes its forecasting become a very difficult task. In order to improve the forecast accuracy of PM2.5 concentration, this paper proposes a hybrid model based on wavelet transform (WT), variational mode decomposition (VMD) and back propagation (BP) neural network optimized by differential evolution (DE) algorithm. Firstly, WT is employed to disassemble the PM2.5 concentration series into a number of subsets with different frequencies. Secondly, VMD is applied to decompose each subset into a set of variational modes (VMs). Thirdly, DE-BP model is utilized to forecast all the VMs. Fourthly, the forecast value of each subset is obtained through aggregating the forecast results of all the VMs obtained from VMD decomposition of this subset. Finally, the final forecast series of PM2.5 concentration is obtained by adding up the forecast values of all subsets. Two PM2.5 concentration series collected from Wuhan and Tianjin, respectively, located in China are used to test the effectiveness of the proposed model. The results demonstrate that the proposed model outperforms all the other considered models in this paper.
机译:准确的PM2.5浓度预测对于保护公共健康和大气环境至关重要。然而,PM2.5浓度系列的间歇性和不稳定性使得其预测成为一项非常艰巨的任务。为了提高PM2.5浓度的预测精度,提出了一种基于小波变换(WT),变分模式分解(VMD)和反向传播(BP)神经网络的混合模型,并通过差分进化(DE)算法对其进行了优化。首先,WT被用于将PM2.5浓度系列分解为具有不同频率的多个子集。其次,VMD用于将每个子集分解为一组变分模式(VM)。第三,利用DE-BP模型对所有虚拟机进行预测。第四,通过汇总从该子集的VMD分解获得的所有VM的预测结果,获得每个子集的预测值。最后,通过将所有子集的预测值相加得出PM2.5浓度的最终预测序列。分别从位于中国武汉和天津的两个PM2.5浓度系列测试了该模型的有效性。结果表明,本文提出的模型优于所有其他模型。

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