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基于 CEEMD-RF 的中国五城市 PM2.5 短期预测。

Short-term PM2.5 forecasting based on CEEMD-RF in five cities of China.

机构信息

Economics and Management School, North China Electric Power University, Changping District, Beijing, 102206, China.

Institute of Smart Energy, North China Electric Power University, Changping District, Beijing, 102206, China.

出版信息

Environ Sci Pollut Res Int. 2019 Nov;26(32):32790-32803. doi: 10.1007/s11356-019-06339-9. Epub 2019 Sep 9.

Abstract

The development of industrial civilization has greatly enriched the material and spiritual life of human beings, but it is accompanied by the intensification of the consumption of earth resources and environmental pollution. The smog that has emerged in various parts of China in recent years is a typical problem, which not only endangers human health but also affects normal human work and life. It is difficult to control smog in a short time productively, so people need to understand the rule of smog formation gradually, and effectively predict the PM2.5 index to help people continuously analyze relevant mechanisms and timely protect-related hazards. This paper proposes a hybrid model that uses the Complementary Ensemble Empirical Modal Decomposition algorithm to mine the information in the original PM2.5 sequence and then predicts the pertinent random forests. The trend of PM2.5 concentration during the decomposition process is effectively reflected, and the decomposition sequence is modeled by the high tolerance of the random forest to the noise data and the good fitting ability. In the modeling process, the parameters are optimized according to the evaluation function of the model on the verification set, and eventually, the prediction sequences are superimposed to obtain the final predicted PM2.5 concentration value. The validity of the model is verified by the data of several Chinese cities with different geographical features in the past 5 years. The results show that the recommendation model is higher than other comparison models in terms of model stability and prediction accuracy.

摘要

工业文明的发展极大地丰富了人类的物质和精神生活,但也伴随着地球资源消耗的加剧和环境污染。近年来中国各地出现的雾霾就是一个典型问题,它不仅危害人类健康,还影响人类正常的工作和生活。短时间内很难有效地控制雾霾,因此人们需要逐步了解雾霾形成的规律,并有效地预测 PM2.5 指数,以帮助人们不断分析相关机制并及时保护相关危害。本文提出了一种混合模型,该模型使用互补集成经验模态分解算法挖掘原始 PM2.5 序列中的信息,然后预测相关的随机森林。该模型在分解过程中有效反映了 PM2.5 浓度的趋势,通过随机森林对噪声数据的高容忍度和良好的拟合能力对分解序列进行建模。在建模过程中,根据验证集上模型的评价函数对参数进行优化,最终将预测序列叠加以获得最终的预测 PM2.5 浓度值。通过过去 5 年具有不同地理特征的中国几个城市的数据验证了该模型的有效性。结果表明,该推荐模型在模型稳定性和预测精度方面均优于其他比较模型。

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