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Time Series Calibration Model for NO2 Based on Multiple Linear Regression

机译:基于多元线性回归的NO2时间序列标定模型

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NO2 is one of the main air pollutants, and is the precursor of PM2.5, PM10, and O3 pollutions. Real-time monitoring of the concentration of NO2 can grasp the air quality in time and take corresponding measures to the pollution sources. Monitoring data may be affected by the internal factors and the external factors. ARIMA was used for the internal factor as A. Meteorological factors were taken as external factors, and the difference of NO2 between the standard data and monitoring data was taken as dependent variable. Multivariate linear regression was modeled as B. Time series calibration model was obtained Y=A+B. The error analysis showed that the accuracies of NO2 was improved. Therefore, the model based on ARIMA and multiple linear regression could effectively calibrate NO2 monitoring data.
机译:NO2是主要的空气污染物之一,是PM2.5,PM10和O3污染的前兆。实时监测二氧化氮浓度可以及时掌握空气质量,并对污染源采取相应措施。监视数据可能会受到内部因素和外部因素的影响。 ARIMA作为内在因子,A作为气象因子,作为外在因子,标准数据与监测数据之间的NO2差异作为因变量。将多元线性回归建模为B。获得时间序列校准模型Y = A + B。误差分析表明,NO2的准确性有所提高。因此,基于ARIMA和多元线性回归的模型可以有效地校准NO2监测数据。

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