Martin Cory R, Zeng N, Karion A, Mueller K, Ghosh S, Lopez-Coto I, Gurney K R, Oda T, Prasad K, Liu Y, Dickerson R R, Whetstone J
Department of Atmospheric and Oceanic Science, University of Maryland, College Park, MD, USA.
Earth System Science Interdisciplinary Center, University of Maryland, College Park, MD, USA.
Atmos Environ (1994). 2019 Feb;199. doi: 10.1016/j.atmosenv.2018.11.013.
As cities embark upon greenhouse gas (GHG) mitigation efforts, there is an increasing need for accurate quantification of urban emissions. In urban areas, transport and dispersion is particularly difficult to simulate using current mesoscale meteorological models due, in part, to added complexity from surface heterogeneity and fine spatial/temporal scales. It is generally assumed that the errors in GHG estimation methods in urban areas are dominated by errors in transport and dispersion. Other significant errors include, but are not limited to, those from assumed emissions magnitude and spatial distribution. To assess the predictability of simulated trace gas mole fractions in urban observing systems using a numerical weather prediction model, we employ an Eulerian model that combines traditional meteorological variables with multiple passive tracers of atmospheric carbon dioxide (CO) from anthropogenic inventories and a biospheric model. The predictability of the Eulerian model is assessed by comparing simulated atmospheric CO mole fractions to observations from four in situ tower sites (three urban and one rural) in the Washington DC/Baltimore, MD area for February 2016. Four different gridded fossil fuel emissions inventories along with a biospheric flux model are used to create an ensemble of simulated atmospheric CO observations within the model. These ensembles help to evaluate whether the modeled observations are impacted more by the underlying emissions or transport. The spread of modeled observations using the four emission fields indicates the model's ability to distinguish between the different inventories under various meteorological conditions. Overall, the Eulerian model performs well; simulated and observed average CO mole fractions agree within 1% when averaged at the three urban sites across the month. However, there can be differences greater than 10% at any given hour, which are attributed to complex meteorological conditions rather than differences in the inventories themselves. On average, the mean absolute error of the simulated compared to actual observations is generally twice as large as the standard deviation of the modeled mole fractions across the four emission inventories. This result supports the assumption, in urban domains, that the predicted mole fraction error relative to observations is dominated by errors in model meteorology rather than errors in the underlying fluxes in winter months. As such, minimizing errors associated with atmospheric transport and dispersion may help improve the performance of GHG estimation models more so than improving flux priors in the winter months. We also find that the errors associated with atmospheric transport in urban domains are not restricted to certain times of day. This suggests that atmospheric inversions should use CO observations that have been filtered using meteorological observations rather than assuming that meteorological modeling is most accurate at certain times of day (such as using only mid-afternoon observations).
随着城市着手开展温室气体减排工作,对城市排放进行准确量化的需求日益增加。在城市地区,由于地表异质性以及精细的空间/时间尺度所带来的额外复杂性,使用当前的中尺度气象模型来模拟传输和扩散尤其困难。一般认为,城市地区温室气体估算方法中的误差主要由传输和扩散误差主导。其他显著误差包括但不限于假设的排放规模和空间分布所导致的误差。为了使用数值天气预报模型评估城市观测系统中模拟痕量气体摩尔分数的可预测性,我们采用了一个欧拉模型,该模型将传统气象变量与来自人为排放清单的多种大气二氧化碳(CO)被动示踪剂以及一个生物圈模型相结合。通过将模拟的大气CO摩尔分数与2016年2月华盛顿特区/马里兰州巴尔的摩地区四个现场塔站点(三个城市站点和一个农村站点)的观测值进行比较,来评估欧拉模型的可预测性。使用四个不同的网格化化石燃料排放清单以及一个生物圈通量模型,在模型内创建了一组模拟的大气CO观测值。这些集合有助于评估模拟观测值受潜在排放或传输的影响程度。使用四个排放场的模拟观测值的离散程度表明了模型在各种气象条件下区分不同排放清单的能力。总体而言,欧拉模型表现良好;在整个月内对三个城市站点进行平均时,模拟和观测的平均CO摩尔分数相差在1%以内。然而,在任何给定时刻,差异可能大于10%,这归因于复杂的气象条件而非清单本身的差异。平均而言,模拟值与实际观测值相比的平均绝对误差通常是四个排放清单中模拟摩尔分数标准差的两倍。这一结果支持了在城市区域的假设,即相对于观测值,预测的摩尔分数误差主要由模型气象学误差而非冬季底层通量误差主导。因此,在冬季,将与大气传输和扩散相关的误差降至最低,可能比改进通量先验值更有助于提高温室气体估算模型的性能。我们还发现,城市区域中与大气传输相关的误差并不局限于一天中的特定时间。这表明大气反演应使用经过气象观测过滤的CO观测值,而不是假设气象建模在一天中的特定时间(如仅使用下午中段的观测值)最为准确。