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Improving PM2.5 Air Quality Model Forecasts in China Using a Bias-Correction Framework

机译:利用偏更框架改善中国的PM2.5空气质量模型预测

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摘要

Chinese cities are experiencing severe air pollution in particular, with extremely high PM2.5 levels observed in cold seasons. Accurate forecasting of occurrence of such air pollution events in advance can help the community to take action to abate emissions and would ultimately benefit the citizens. To improve the PM2.5 air quality model forecasts in China, we proposed a bias-correction framework that utilized the historic relationship between the model biases and forecasted and observational variables to post-process the current forecasts. The framework consists of four components: (1) a feature selector that chooses the variables that are informative to model forecast bias based on historic data; (2) a classifier trained to efficiently determine the forecast analogs (clusters) based on clustering analysis, such as the distance-based method and the classification tree, etc.; (3) an error estimator, such as the Kalman filter, to predict model forecast errors at monitoring sites based on forecast analogs; and (4) a spatial interpolator to estimate the bias correction over the entire modeling domain. One or more methods were tested for each step. We applied five combinations of these methods to PM2.5 forecasts in 2014–2016 over China from the operational AiMa air quality forecasting system using the Community Multiscale Air Quality (CMAQ) model. All five methods were able to improve forecast performance in terms of normalized mean error (NME) and root mean square error (RMSE), though to a relatively limited degree due to the rapid changing of emission rates in China. Among the five methods, the CART-LM-KF-AN (a Classification And Regression Trees-Linear Model-Kalman Filter-Analog combination) method appears to have the best overall performance for varied lead times. While the details of our study are specific to the forecast system, the bias-correction framework is likely applicable to the other air quality model forecast as well.
机译:中国城市尤其正在经历严重的空气污染,在冷季节观察到极高的PM2.5水平。预先发生这种空气污染事件的发生准确预测可以帮助社区采取行动,以减少排放,并最终会使公民受益。为了提高中国的PM2.5空气质量模型预测,我们提出了一个偏正纠正框架,利用模型偏差和预测和观测变量之间的历史关系,以便在流程后当前预测。该框架由四个组件组成:(1)一个特征选择器,可选择基于历史数据的模型预测偏置的变量; (2)培训的分类器,以基于聚类分析(例如基于距离的方法和分类树等)有效地确定预测类似物(群集)。 (3)误差估计器,例如卡尔曼滤波器,以预测基于预测类似物的监测站点的模型预测误差; (4)空间内插器,以估计整个建模域上的偏置校正。对每个步骤测试了一种或多种方法。我们将这些方法的五种组合应用于2014 - 2016年在2014 - 2016年中国从中国的运营AIMA空气质量预测系统(CMAQ)模型的运营AIMA空气质量预测系统。所有五种方法都能够在归一化的平均误差(NME)和均方根误差(RMSE)方面提高预测性能,但由于中国的排放率快速变化而导致的程度相对有限。在五个方法中,CART-LM-KF-AN(分类和回归树-线性模型卡尔曼滤波 - 模拟组合)方法似乎对变化的交货时间,最佳的整体性能。虽然我们研究的细节特定于预测系统,但偏差框架也可能适用于其他空气质量模型预测。

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