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A comparative study on multi-regression analysis and BP neural network of PM2.5 index

机译:PM2.5指标的多元回归分析与BP神经网络的比较研究

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The air pollution PM2.5 index is affected by a variety of factors. The research shows that the PM 2.5 index of yesterday, precipitation of yesterday, average temperature, average humidity, precipitation and wind velocity are the main factors which can affect PM2.5 index. The paper utilizes the data of surface meteorological observation and air pollution PM2.5 index of Wuhan City from November 1, 2013 to January 31, 2014. We construct the air pollution PM2.5 index forecasting model according to multiple regression analysis and BP neural network. The empirical study shows that compared to regression prediction model, BP neural network prediction model obtains the nonlinear relation among the prediction factors after training. The predictive model based on BP neural network is of higher predictive precision and better prediction effect which can be used in kinds of prediction research and has good value to popularize.
机译:空气污染PM2.5指数受多种因素影响。研究表明,昨天的PM 2.5指数,昨天的降水,平均温度,平均湿度,降水和风速是影响PM2.5指数的主要因素。本文利用武汉市2013年11月1日至2014年1月31日的地面气象观测数据和空气污染PM2.5指数数据,通过多元回归分析和BP神经网络构建空气污染PM2.5指数预测模型。 。实证研究表明,与回归预测模型相比,BP神经网络预测模型获得了训练后预测因子之间的非线性关系。基于BP神经网络的预测模型具有较高的预测精度和较好的预测效果,可用于各种预测研究,具有很好的推广价值。

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