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Spatiotemporally resolved ambient particulate matter concentration by fusing observational data and ensemble chemical transport model simulations

机译:通过融合观测数据和集合化学传输模拟模拟时,即割蓝的环境颗粒物质浓度

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In this work, we describe and implement a data assimilation approach for PM10pollution data in Northern Italy. This was done by combining the best available information from observations and chemical transport models. Specifically, by (1) incorporating PM10surface daily concentrations and model results from the CAMS (Copernicus Atmosphere Monitoring Service) ensemble; and (2) spreading the forecast corrections from the observation locations to the entire gridded domain covered by model forecasts by means of a data regularization approach. Results were verified against independent PM10observations measured at 169 stations by local Environmental Protection Agencies. Twelve months of observations were matched in time and space, from January to December 2017, with air pollution model results. The studied domain encompassed the Po Valley, one of the most polluted areas in Europe, and that still does not meet the air quality criteria for the annual average concentration and the maximum number of exceedances allowed for the particulate matter.Raw model data were found to be affected by a bias with a strong seasonal dependency: a large negative bias in winter and a small bias in the summer months. The data assimilation approach, embedded into a Bayesian hierarchical approach, was able to drastically reduce the bias. Furthermore, an advanced computational approach, based on the variational Bayes method coupled with the minimization of the Kullback–Leibler divergence to approximate the optimal solution, made it possible to cost-effectively assimilate data throughout the period under consideration. By using stratified cross-validation to test the accuracy of our predictions, we found high out-of-sampleR2(=0.83) and an average decrease of about two-thirds of the root mean square error.Assimilated data were used to produce daily resolved cumulative population exposures. The Po Valley, in relation to the interim targets (ITs) defined by the World Health Organization, accomplishe
机译:在这项工作中,我们描述并实施了意大利北部PM10Pollution数据的数据同化方法。这是通过将最佳可用信息与观察和化学传输模型相结合来完成的。具体而言,通过(1)包含PM10Surface日常浓度和模型来自凸轮(哥白尼大气监测服务)集合的模型; (2)通过数据正规化方法将预测校正从观察位置传播到由模型预测所涵盖的整个网格域。通过当地环境保护机构在169个站点测量的Offulfing PM10obserations验证了结果。从2017年1月到12月开始,12个月的观察结果与时间和空间相匹配,有空气污染模型结果。学习的域包括欧洲最污染的地区之一,仍然不符合年平均浓度的空气质量标准,并且允许颗粒物质的最大超标数。发现模型数据受到强大季节性依赖的偏见的影响:冬季的大负面偏见和夏季的小偏见。嵌入到贝叶斯分层方法中的数据同化方法能够大大减少偏差。此外,基于与变分贝叶斯方法的高级计算方法与最小化kullback-Leibler发散近似以近似最佳解决方案,使得可以在整个所考虑的时间内成本有效地同化数据。通过使用分层的交叉验证来测试预测的准确性,我们发现高样本量2(= 0.83),大约三分之二的根均线误差的平均减小。奇数数据用于生产日常分辨累积人口暴露。 PO Valley与世界卫生组织所定义的临时目标(其)有关,成就

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