Prediction and Early Warning of Air Quality based on the LSTM-ARIMA Model

Zishan Li, Yan Zhang, Yida Wang
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Abstract

At present, China's economy is transforming from a stage of high-speed growth to a stage of high-quality development. Building an ecological civilization is an important part of the realization of the Chinese dream of national rejuvenation. Air pollution will cause harm to human health, ecological environment, social and economic aspects, and its pollution level is affected by many factors, such as PM2.5, PM10, CO, temperature, wind speed, precipitation and so on. In order to implement the party's 20th spirit, strengthen the coordinated control of pollutants, basically eliminate heavy pollution weather, improve and improve the response and disposal mechanism of heavy pollution weather, a place issued an emergency plan for pollution weather, which will strengthen monitoring and early warning, energy conservation and emission reduction, and minimize the impact of pollution weather. To explore the influencing factors of PM2.5 concentration change, more accurate prediction PM2.5 concentration and AQI index, this paper for the prediction and warning of air quality, using the daily pollutants in January 2015 to April 2023, the data of analysis of PM2.5 concentration, the importance of the top three factors PM10, average temperature, CO as auxiliary variables, to construct the LSTM-ARIMA combination model. First, LSTM was used for multi-factor prediction. In order to improve the accuracy of the prediction results, the prediction error of LSTM was then linearly corrected based on the ARIMA model, the time step was adjusted to observe the previous data, and the prediction results of the model were evaluated by root mean square error (RMSE).
基于 LSTM-ARIMA 模型的空气质量预测和预警
当前,我国经济正由高速增长阶段转向高质量发展阶段。建设生态文明是实现民族复兴中国梦的重要内容。大气污染会对人体健康、生态环境、社会经济等方面造成危害,其污染程度受多种因素影响,如PM2.5、PM10、CO、气温、风速、降水等。为贯彻落实党的二十大精神,加强污染物协同控制,基本消除重污染天气,健全和完善重污染天气应对处置机制,某地出台了污染天气应急预案,将加强监测预警和节能减排,最大限度降低污染天气影响。为探究PM2.5浓度变化的影响因素,更准确地预测PM2.5浓度和AQI指数,本文针对空气质量的预测预警,利用2015年1月至2023年4月的日污染物PM2.5浓度分析数据,以重要性排名前三的因子PM10、平均气温、CO为辅助变量,构建LSTM-ARIMA组合模型。首先,利用 LSTM 进行多因素预测。为了提高预测结果的准确性,在 ARIMA 模型的基础上对 LSTM 的预测误差进行线性修正,并根据之前的数据调整时间步长,用均方根误差(RMSE)对模型的预测结果进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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