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首页> 外文期刊>Computational intelligence and neuroscience >A New Hybrid Model FPA-SVM Considering Cointegration for Particular Matter Concentration Forecasting: A Case Study of Kunming and Yuxi, China
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A New Hybrid Model FPA-SVM Considering Cointegration for Particular Matter Concentration Forecasting: A Case Study of Kunming and Yuxi, China

机译:一种新的混合模型FPA-SVM考虑CONIGLEATION特定物质集中预测 - 以昆明与玉溪,中国

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摘要

Air pollution in China is becoming more serious especially for the particular matter (PM) because of rapid economic growth and fast expansion of urbanization. To solve the growing environment problems, daily PM2.5 and PM10 concentration data form January 1, 2015, to August 23, 2016, in Kunming and Yuxi (two important cities in Yunnan Province, China) are used to present a new hybrid model CI-FPA-SVM to forecast air PM2.5 and PM10 concentration in this paper. The proposed model involves two parts. Firstly, due to its deficiency to assess the possible correlation between different variables, the cointegration theory is introduced to get the input-output relationship and then obtain the nonlinear dynamical system with support vector machine (SVM), in which the parameters c and g are optimized by flower pollination algorithm (FPA). Six benchmark models, including FPA-SVM, CI-SVM, CI-GA-SVM, CI-PSO-SVM, CI-FPA-NN, and multiple linear regression model, are considered to verify the superiority of the proposed hybrid model. The empirical study results demonstrate that the proposed model CI-FPA-SVM is remarkably superior to all considered benchmark models for its high prediction accuracy, and the application of the model for forecasting can give effective monitoring and management of further air quality.
机译:由于经济增长快速增长和城市化快速扩张,中国的空气污染尤其是特定的事项(PM)更严重。要解决日益增长的环境问题,每日PM2.5和PM10集中数据表陈述2016年1月1日至2016年8月1日,在昆明和玉溪(云南省的两个重要城市)用于呈现新的混合模型CI -FPA-SVM预测本文中的空气PM2.5和PM10浓度。该模型涉及两部分。首先,由于其缺陷来评估不同变量之间可能的相关性,引入协整理论以获得输入输出关系,然后通过支持向量机(SVM)获得非线性动力系统,其中参数C和G是由花授粉算法(FPA)进行优化。六种基准模型,包括FPA-SVM,CI-SVM,CI-GA-SVM,CI-PSO-SVM,CI-FPA-NN和多元线性回归模型被认为是验证所提出的混合模型的优越性。实证研究结果表明,所提出的CI-FPA-SVM对于其高预测准确性,所有考虑的基准模型都非常优于所有考虑的基准模型,并且对预测模型的应用可以有效监测和管理进一步的空气质量。

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