Kang Daiwen, Hogrefe Christian, Sarwar Golam, East James D, Madden J Mike, Mathur Rohit, Henderson Barron H
Center for Environmental Measurement & Modeling, U.S. Environmental Protection Agency, Durham, NC 27711, USA.
Department of Civil, Construction, and Environmental Engineering, North Carolina State University, Raleigh, NC 27695, USA.
Atmosphere (Basel). 2022 Aug 6;13(8):1-18. doi: 10.3390/atmos13081248.
Comparison of lightning flash data from the National Lightning Detection Network (NLDN) and from the World Wide Lightning Location Network (WWLLN) over the contiguous United States (CONUS) for the 2016-2018 period reveals temporally and spatially varying flash rates that would influence lightning NO (LNO) production due to known detection efficiency differences especially during summer months over land (versus over ocean). However, the lightning flash density differences between the two networks show persistent seasonal patterns over geographical regions (e.g., land versus ocean). Since the NLDN data are considered to have higher accuracy (lightning detection with >95% efficiency), we developed scaling factors for the WWLLN flash data based on the ratios of WWLLN to NLDN flash data over time (months of year) and space. In this study, sensitivity simulations using the Community Multiscale Air Quality (CMAQ) model are performed utilizing the original data sets (both NLDN and WWLLN) and the scaled WWLLN flash data for LNO production over the CONUS. The model performance of using the different lightning flash datasets for ambient O and NO mixing ratios that are directly impacted by LNO emissions and the wet and dry deposition of oxidized nitrogen species that are indirectly impacted by LNO emissions is assessed based on comparisons with ground-based observations, vertical profile measurements, and satellite products. During summer months, the original WWLLN data produced less LNO emissions (due to its lower lightning detection efficiency) compared to the NLDN data, which resulted in less improvement in model performance than the simulation using NLDN data as compared to the simulation without any LNO emissions. However, the scaled WWLLN data produced LNO estimates and model performance comparable with the NLDN data, suggesting that scaled WWLLN may be used as a substitute for the NLDN data to provide LNO estimates in air quality models when the NLDN data are not available (e.g., due to prohibitive cost or lack of spatial coverage).
对2016 - 2018年期间美国本土(CONUS)国家闪电探测网络(NLDN)和全球闪电定位网络(WWLLN)的闪电数据进行比较,结果显示,由于已知的探测效率差异,特别是在夏季陆地(与海洋相比),闪电发生率在时间和空间上存在变化,这会影响闪电一氧化氮(LNO)的产生。然而,两个网络之间的闪电闪密度差异在地理区域(如陆地与海洋)呈现出持续的季节性模式。由于NLDN数据被认为具有更高的准确性(闪电探测效率>95%),我们根据WWLLN与NLDN闪电数据在时间(一年中的月份)和空间上的比率,为WWLLN闪电数据开发了缩放因子。在本研究中,利用社区多尺度空气质量(CMAQ)模型进行敏感性模拟,使用原始数据集(NLDN和WWLLN)以及缩放后的WWLLN闪电数据,以估算美国本土的LNO产生量。基于与地面观测、垂直剖面测量和卫星产品的比较,评估了使用不同闪电数据集对直接受LNO排放影响的环境氧气和一氧化氮混合比以及间接受LNO排放影响的氧化氮物种的干湿沉降的模型性能。在夏季,与NLDN数据相比,原始的WWLLN数据产生的LNO排放量较少(由于其较低的闪电探测效率),与不进行任何LNO排放的模拟相比,使用NLDN数据的模拟在模型性能上的提升比使用原始WWLLN数据的模拟更大。然而,缩放后的WWLLN数据产生的LNO估算值和模型性能与NLDN数据相当,这表明当NLDN数据不可用时(例如,由于成本过高或缺乏空间覆盖),缩放后的WWLLN可作为NLDN数据的替代品,用于空气质量模型中提供LNO估算值。