利用卫星观测评估美国西部的混合高度估算

IF 0.8 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Operational Meteorology Pub Date : 2023-03-21 DOI:10.15191/nwajom.2023.1103
Christopher Wright, Dean Berkowitz, Julia Liu, Lauren Mock, Brandy Nisbet-Wilcox, K. Ross, T. Toth, K. Weber
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引用次数: 0

摘要

野火产生的烟雾可以传播到远离其发源地的地方,对人类健康产生不利影响。大气混合层的高度,即对流层中湍流对流导致垂直混合的近地面层,称为混合高度。混合高度是监测野火和空气污染的机构使用的烟雾分散和空气质量模型的关键输入。这些模型,再加上预报员的专业知识,也被用来确定执行规定的燃烧是否安全。在本文中,我们从两个卫星数据集得出混合高度,以评估国家气象局(NWS)火灾天气计划产生的混合高度预报。也就是说,我们使用了具有正交偏振(CALIOP)、垂直特征掩模(VFM)的云气溶胶激光雷达和来自中分辨率成像光谱仪(MODIS)的垂直水蒸气剖面。我们的比较表明,NWS预测倾向于低估CALIOP混合高度,中位相对误差为-13%,平均相对误差为-3.34%。虽然MODIS和NWS混合高度在3 km以下显示出一些一致性,但MODIS估计的较低垂直分辨率阻碍了全面比较。我们研究了这些方法确定的野火烟羽混合高度之间的差异,并讨论了偏差和局限性。这项工作为当前混合高度预测中存在的潜在偏差模式提供了深入的见解,并为未来NWS混合高度预测和基于卫星的混合高度测量提供了方向。
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Evaluating Mixing Height Estimations in the Western United States Using Satellite Observations
Wildfire smoke can be transported far from its origin, adversely impacting human health. The height of the atmospheric mixing layer, the near-surface layer of the troposphere in which turbulent convection leads to vertical mixing, is called the mixing height. Mixing height is a critical input in the smoke dispersion and air quality models used by agencies that monitor wildfires and air pollution. These models, coupled with forecaster expertise, are also used to determine if it is safe to execute a prescribed burn. In this paper, we derive mixing heights from two satellite datasets in order to assess mixing height forecasts produced by the National Weather Service (NWS) Fire Weather Program. Namely, we use Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) Vertical Feature Masks (VFM) and vertical water vapor profiles from the Moderate Resolution Imaging Spectroradiometer (MODIS). Our comparison indicates that NWS forecasts tend to underestimate CALIOP mixing heights with a median relative error of –13% and a mean relative error of –3.34%. Although MODIS and NWS mixing heights showed some agreement below 3 km, the lower vertical resolution of the MODIS estimates hindered a full comparison. We examine the discrepancies among mixing heights over wildfire smoke plumes determined by these methods and discuss biases and limitations. This work provides insight into potential bias patterns present in current mixing height forecasts and provides directions for future improvements in both NWS mixing height forecasts and satellite-based measurements of mixing height.
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来源期刊
Journal of Operational Meteorology
Journal of Operational Meteorology METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
2.40
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0.00%
发文量
4
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