Solazzo Efisio, Bianconi Roberto, Hogrefe Christian, Curci Gabriele, Tuccella Paolo, Alyuz Ummugulsum, Balzarini Alessandra, Barô Rocio, Bellasio Roberto, Bieser Johannes, Brandt Jørgen, Christensen Jesper H, Colette Augistin, Francis Xavier, Fraser Andrea, Vivanco Marta Garcia, Jiménez-Guerrero Pedro, Im Ulas, Manders Astrid, Nopmongcol Uarporn, Kitwiroon Nutthida, Pirovano Guido, Pozzoli Luca, Prank Marje, Sokhi Ranjeet S, Unal Alper, Yarwood Greg, Galmarini Stefano
European Commission, Joint Research Centre (JRC), Directorate for Energy, Transport and Climate, Air and Climate Unit, Ispra (VA), Italy.
Enviroware srl, Concorezzo, MB, Italy.
Atmos Chem Phys. 2017;17(4):3001-3054. doi: 10.5194/acp-17-3001-2017.
Through the comparison of several regional-scale chemistry transport modeling systems that simulate meteorology and air quality over the European and North American continents, this study aims at (i) apportioning error to the responsible processes using timescale analysis, (ii) helping to detect causes of model error, and (iii) identifying the processes and temporal scales most urgently requiring dedicated investigations. The analysis is conducted within the framework of the third phase of the Air Quality Model Evaluation International Initiative (AQMEII) and tackles model performance gauging through measurement-to-model comparison, error decomposition, and time series analysis of the models biases for several fields (ozone, CO, SO, NO, NO, PM, PM, wind speed, and temperature). The operational metrics (magnitude of the error, sign of the bias, associativity) provide an overallsense of model strengths and deficiencies, while apportioning the error to its constituent parts (bias, variance, and covariance) can help assess the nature and quality of the error. Each of the error components is analyzed independently and apportioned to specific processes based on the corresponding timescale (long scale, synoptic, diurnal, and intraday) using the error apportionment technique devised in the former phases of AQMEII. The application of the error apportionment method to the AQMEII Phase 3 simulations provides several key insights. In addition to reaffirming the strong impact of model inputs (emission and boundary conditions) and poor representation of the stable boundary layer on model bias, results also highlighted the high interdependencies among meteorological and chemical variables, as well as among their errors. This indicates that the evaluation of air quality model performance for individual pollutants needs to be supported by complementary analysis of meteorological fields and chemical precursors to provide results that are more insightful from a model development perspective. This will require evaluaion methods that are able to frame the impact on error of processes, conditions, and fluxes at the surface. For example, error due to emission and boundary conditions is dominant for primary species (CO, particulate matter (PM)), while errors due to meteorology and chemistry are most relevant to secondary species, such as ozone. Some further aspects emerged whose interpretation requires additional consideration, such as the uniformity of the synoptic error being region- and model-independent, observed for several pollutants; the source of unexplained variance for the diurnal component; and the type of error caused by deposition and at which scale.
通过比较几个模拟欧洲和北美大陆气象与空气质量的区域尺度化学传输模型系统,本研究旨在:(i)使用时间尺度分析将误差归因于相关过程;(ii)帮助检测模型误差的原因;(iii)识别最迫切需要专门研究的过程和时间尺度。该分析在空气质量模型评估国际倡议(AQMEII)第三阶段的框架内进行,通过测量与模型比较、误差分解以及对多个领域(臭氧、一氧化碳、二氧化硫、一氧化氮、二氧化氮、颗粒物、风速和温度)模型偏差的时间序列分析来衡量模型性能。操作指标(误差大小、偏差符号、关联性)提供了模型优缺点的总体认识,而将误差分解为其组成部分(偏差、方差和协方差)有助于评估误差的性质和质量。使用AQMEII前几个阶段设计的误差分配技术,对每个误差分量进行独立分析,并根据相应时间尺度(长尺度、天气尺度、日尺度和日内尺度)将其归因于特定过程。将误差分配方法应用于AQMEII第三阶段模拟提供了几个关键见解。除了再次确认模型输入(排放和边界条件)的强烈影响以及稳定边界层的不良表示对模型偏差的影响外,结果还突出了气象和化学变量之间以及它们的误差之间的高度相互依赖性。这表明,对单个污染物的空气质量模型性能评估需要通过对气象场和化学前体的补充分析来支持,以便从模型开发的角度提供更有洞察力的结果。这将需要能够界定表面过程、条件和通量对误差影响的评估方法。例如,排放和边界条件导致的误差对于一次物种(一氧化碳、颗粒物(PM))占主导,而气象和化学导致的误差与二次物种(如臭氧)最为相关。还出现了一些需要额外考虑才能解释的进一步方面,例如几种污染物观测到的天气尺度误差的均匀性与区域和模型无关;日分量未解释方差的来源;以及沉积导致的误差类型和尺度。