Influence of improved methodology and increased spatial resolution on gridded emissions

M. S. Plejdrup, O. Nielsen, H. G. Bruun
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引用次数: 0

Abstract

Spatial distribution of emissions is a key element in assessing human exposure to air pollution through the use of dispersion modelling. The quality of the spatial emission mapping is crucial for the quality, applicability and reliability of modelled air pollution levels, estimated human exposure and incurred health effects and related costs, all very important information for policymakers in decisions of implementation of environmental policies and measures. Detailed information on spatial distribution of emissions allows for a more targeted regulation, implementing measures focussing on areas where emissions are highest, allowing for more cost-effective initiatives on local, regional and national scale. The purpose of the MapEIre project, funded by Ireland’s Environmental Protection Agency, is to develop a high-resolution spatial mapping of the Irish emission inventory. The work is state-of-the-art and combines a large amount of statistical data with detailed spatial information to allow for a complete spatial emission mapping on a 1 km by 1 km resolution. When comparing the results from the MapEIre project with those of the previous studies, the impact of both methodological refinements and higher spatial resolution becomes very visible. A low resolution, such as the 50 × 50 km used in the official reporting, causes important variations to be obfuscated and, if used for air quality modelling, would introduce significant uncertainty. Methodological simplifications can also have significant influence on the results, which has been illustrated in this paper using specific examples comparing the detailed MapEIre methodology with less detailed methodologies used in the previous studies. The results from MapEIre represent a significant improvement over previous methodologies and will be a strong input for future air quality modelling.
改进的方法和提高的空间分辨率对网格化排放的影响
排放的空间分布是通过使用扩散模型评估人类暴露于空气污染的一个关键因素。空间排放制图的质量对于模拟空气污染水平的质量、适用性和可靠性、估计人类接触和产生的健康影响及相关成本至关重要,这些都是决策者在决定执行环境政策和措施时非常重要的信息。关于排放空间分布的详细信息有助于制定更有针对性的法规,针对排放最高的地区实施措施,从而在地方、区域和国家范围内采取更具成本效益的举措。由爱尔兰环境保护局资助的MapEIre项目的目的是开发爱尔兰排放清单的高分辨率空间地图。这项工作是最先进的,结合了大量的统计数据和详细的空间信息,以便以1公里乘1公里的分辨率绘制完整的空间发射图。当将MapEIre项目的结果与以前的研究结果进行比较时,方法改进和更高的空间分辨率的影响变得非常明显。低分辨率,如官方报告中使用的50 × 50公里,会混淆重要的变化,如果用于空气质量模型,将会带来很大的不确定性。方法的简化也会对结果产生重大影响,本文通过将详细的MapEIre方法与先前研究中使用的不太详细的方法进行比较的具体示例来说明这一点。MapEIre的结果代表了对以前方法的重大改进,并将为未来的空气质量建模提供强有力的输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
32
审稿时长
21 weeks
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