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Real time air quality forecasting using integrated parametric and non-parametric regression techniques

机译:使用集成的参数和非参数回归技术进行实时空气质量预测

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摘要

This paper presents a model for producing real time air quality forecasts with both high accuracy and high computational efficiency. Temporal variations in nitrogen dioxide (NO_2) levels and historical correlations between meteorology and NO_2 levels are used to estimate air quality 48 h in advance. Non-parametric kernel regression is used to produce linearized factors describing variations in concentrations with wind speed and direction and, furthermore, to produce seasonal and diurnal factors. The basis for the model is a multiple linear regression which uses these factors together with meteorological parameters and persistence as predictors. The model was calibrated at three urban sites and one rural site and the final fitted model achieved R values of between 0.62 and 0.79 for hourly forecasts and between 0.67 and 0.84 for daily maximum forecasts. Model validation using four model evaluation parameters, an index of agreement (IA), the correlation coefficient (R), the fraction of values within a factor of 2 (FAC2) and the fractional bias (FB), yielded good results. The IA for 24 hr forecasts of hourly NO_2 was between 0.77 and 0.90 at urban sites and 0.74 at the rural site, while for daily maximum forecasts it was between 0.89 and 0.94 for urban sites and 0.78 for the rural site. R values of up to 0.79 and 0.81 and FAC2 values of 0.84 and 0.96 were observed for hourly and daily maximum predictions, respectively. The model requires only simple input data and very low computational resources. It found to be an accurate and efficient means of producing real time air quality forecasts.
机译:本文提出了一种模型,该模型可产生高精度和高计算效率的实时空气质量预报。二氧化氮(NO_2)水平的时间变化以及气象学与NO_2水平之间的历史相关性可用于提前48小时估算空气质量。非参数核回归用于生成描述浓度随风速和风向变化的线性化因子,此外还用于生成季节性和昼夜因子。该模型的基础是多元线性回归,该回归将这些因素与气象参数和持续性一起用作预测因子。该模型在3个城市站点和1个农村站点进行了校准,最终拟合模型的小时预测R值介于0.62至0.79之间,每日最高预测的R值介于0.67至0.84之间。使用四个模型评估参数,一致性指数(IA),相关系数(R),因子2内的值的分数(FAC2)和分数偏差(FB)进行的模型验证产生了良好的结果。 24小时每小时NO_2的IA在城市地区为0.77至0.90,在农村地区为0.74,而对于每日最高预报,城市地区为0.89至0.94,农村地区为0.78。对于每小时和每天的最大预测值,分别观察到高达0.79和0.81的R值和0.84和0.96的FAC2值。该模型仅需要简单的输入数据和非常低的计算资源。它被认为是产生实时空气质量预测的准确而有效的方法。

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