Department of Information Engineering, University of Brescia, Via Branze 38, I-25123 Brescia, Italy.
Sci Total Environ. 2013 Aug 1;458-460:7-14. doi: 10.1016/j.scitotenv.2013.03.089. Epub 2013 Apr 29.
To fulfill the requirements of the 2008/50 Directive, which allows member states and regional authorities to use a combination of measurement and modeling to monitor air pollution concentration, a key approach to be properly developed and tested is the data assimilation one. In this paper, with a focus on regional domains, a comparison between optimal interpolation and Ensemble Kalman Filter is shown, to stress pros and drawbacks of the two techniques. These approaches can be used to implement a more accurate monitoring of the long-term pollution trends on a geographical domain, through an optimal combination of all the available sources of data. The two approaches are formalized and applied for a regional domain located in Northern Italy, where the PM10 level which is often higher than EU standard limits is measured.
为了满足 2008/50 指令的要求,允许成员国和地区当局结合使用测量和建模来监测空气污染浓度,一个需要适当开发和测试的关键方法是数据同化方法。在本文中,重点关注区域域,展示了最优插值和集合卡尔曼滤波之间的比较,以强调这两种技术的优缺点。这些方法可用于通过对所有可用数据源进行最佳组合,更准确地监测地理区域的长期污染趋势。这两种方法已经形式化并应用于位于意大利北部的一个区域域,在该区域测量的 PM10 水平经常高于欧盟标准限值。