Huang Min, Crawford James H, Diskin Glenn S, Santanello Joseph A, Kumar Sujay V, Pusede Sally E, Parrington Mark, Carmichael Gregory R
George Mason University, Fairfax, VA, USA.
NASA Langley Research Center, Hampton, VA, USA.
J Geophys Res Atmos. 2018 Sep 27;123(18):10732-10756. doi: 10.1029/2018jd028554. Epub 2018 Aug 27.
This study evaluates the impact of assimilating soil moisture data from NASA's Soil Moisture Active Passive (SMAP) on short-term regional weather and air quality modeling in East Asia during the Korea-US Air Quality Study (KORUS-AQ) airborne campaign. SMAP data are assimilated into the Noah land surface model using an ensemble Kalman filter approach in the Land Information System framework, which is semi-coupled with the NASA-Unified Weather Research and Forecasting model with online chemistry (NUWRF-Chem). With SMAP assimilation included, water vapor and carbon monoxide (CO) transport from northern-central China transitional climate zones to South Korea is better represented in NUWRF-Chem during two studied pollution events. Influenced by different synoptic conditions and emission patterns, impact of SMAP assimilation on modeled CO in South Korea is intense (>30 ppbv) during one event and less significant (<8 ppbv) during the other. SMAP assimilation impact on air quality modeling skill is complicated by other error sources such as the chemical initial and boundary conditions (IC/LBC) and emission inputs of NUWRF-Chem. Using a satellite-observation-constrained chemical IC/LBC instead of a free-running, coarser-resolution chemical IC/LBC reduces modeled CO by up to 80 ppbv over South Korea. Consequently, CO performance is improved in the middle-upper troposphere whereas degraded in the lower troposphere. Remaining negative CO biases result largely from the emissions inputs. The advancements in land surface modeling and chemical IC/LBC presented here are expected to benefit future investigations on constraining emissions using observations, which can in turn enable more accurate assessments of SMAP assimilation and chemical IC/LBC impacts.
本研究评估了在美韩空气质量研究(KORUS - AQ)机载观测期间,同化美国国家航空航天局(NASA)土壤湿度主动被动探测(SMAP)数据对东亚短期区域天气和空气质量模拟的影响。在土地信息系统框架下,采用集合卡尔曼滤波方法将SMAP数据同化到诺亚陆面模型中,该框架与带有在线化学模块的NASA统一天气研究与预报模型(NUWRF - Chem)半耦合。在两次研究的污染事件期间,纳入SMAP同化后,NUWRF - Chem能更好地呈现水汽和一氧化碳(CO)从中国中北部过渡气候区向韩国的输送。受不同天气条件和排放模式影响,在一次事件中,SMAP同化对韩国模拟CO浓度的影响强烈(>30 ppbv),而在另一次事件中则不太显著(<8 ppbv)。SMAP同化对空气质量模拟技能的影响因其他误差源(如NUWRF - Chem的化学初始和边界条件(IC/LBC)以及排放输入)而变得复杂。使用卫星观测约束的化学IC/LBC而非自由运行、分辨率较粗的化学IC/LBC,可使韩国上空模拟的CO浓度降低多达80 ppbv。因此,对流层中上层的CO模拟效果得到改善,而对流层下层则变差。剩余的CO负偏差主要源于排放输入。本文介绍的陆面建模和化学IC/LBC方面的进展有望惠及未来利用观测约束排放的研究,进而能够更准确地评估SMAP同化和化学IC/LBC的影响。