...
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Impacts of snow and cloud covers on satellite-derived PM2.5 levels
【24h】

Impacts of snow and cloud covers on satellite-derived PM2.5 levels

机译:雪和云覆盖对卫星衍生的PM2.5水平的影响

获取原文
获取原文并翻译 | 示例
           

摘要

Satellite aerosol optical depth (ADD) has been widely employed to evaluate ground fine particle (PM2.5) levels, whereas snow/cloud covers often lead to a large proportion of non-random missing AOD. As a result, the fully covered and unbiased PM2.5 estimates will be hard to generate. Among the current approaches to deal with the data gap issue, few have considered the cloud-AOD relationship and none of them have considered the snow-AOD relationship. This study examined the impacts of snow and cloud covers on AOD and PM2.5 and made full-coverage PM2.5 predictions with the consideration of these impacts. To estimate the missing AOD, daily gap-filling models with snow/cloud fractions and meteorological covariates were developed using the random forest algorithm. By using these models in New York State, a daily AOD data set with a 1-km resolution was generated with a complete coverage. The "out-of-bag" R-2 of the gap-filling models averaged 0.93 with an interquartile range from 0.90 to 0.95. Subsequently, a random forest-based PM2.5 prediction model with the gap-filled AOD and covariates was built to predict fully covered PM2.5 estimates. A ten-fold cross-validation for the prediction model showed a good performance with an R-2 of 0.82. In the gap-filling models, the snow fraction was of higher significance in the snow season compared with the rest of the year. The prediction models fitted with/without the snow fraction also suggested the discernible changes in PM2.5 patterns, further confirming the significance of this parameter. Compared with the methods without considering snow and cloud covers, our PM2.5 prediction surfaces showed more spatial details and reflected small-scale terrain-driven PM2.5 patterns. The proposed methods can be generalized to the areas with extensive snow/cloud covers and large proportions of missing satellite AOD for predicting PM2.5 levels with high resolutions and complete coverage.
机译:卫星气溶胶光学深度(ADD)已被广泛用于评估磨碎的细颗粒(PM2.5)水平,而雪/云盖经常导致大部分非随机缺失AOD。结果,完全覆盖和无偏见的PM2.5估计难以产生。在处理数据差距问题的目前的方法中,很少有人考虑过云AOD关系,而且他们都没有考虑过雪AOD关系。本研究检测了雪和云盖对AOD和PM2.5的影响,并通过考虑这些影响来实现全面覆盖PM2.5预测。为了估算缺失的AOD,使用随机林算法开发了具有雪/云分数和气象协变量的日常间隙填充模型。通过在纽约状态下使用这些模型,通过完整的覆盖率生成具有1公里处分辨率的日常AOD数据集。间隙填充模型的“外袋”R-2平均为0.93,间条形为0.90至0.95。随后,建立了具有间隙填充AOD和协变量的随机林的PM2.5预测模型以预测完全覆盖PM2.5估计。预测模型的十倍交叉验证显示出具有0.82的R-2的良好性能。在间隙填充模型中,与今年剩余的剩余时间相比,雪季比较较高的雪季度。安装/不带雪分数的预测模型也建议PM2.5模式的可辨别变化,进一步证实了该参数的重要性。与未考虑雪和云盖的方法相比,我们的PM2.5预测表面显示出更多的空间细节,并反映了小型地形驱动的PM2.5模式。所提出的方法可以推广到具有广泛的雪/云覆盖的区域和大量缺失的卫星AOD,用于预测高分辨率和完全覆盖的PM2.5水平。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号