...
首页> 外文期刊>Environmental Science and Pollution Research >PM2.5 mapping using integrated geographically temporally weighted regression (GTWR) and random sample consensus (RANSAC) models
【24h】

PM2.5 mapping using integrated geographically temporally weighted regression (GTWR) and random sample consensus (RANSAC) models

机译:PM2.5使用集成的地理上临时加权回归(GTWR)和随机样本共识(RANSAC)模型进行映射

获取原文
获取原文并翻译 | 示例

摘要

An uncertainty in the relationship between aerosol optical depth (AOD) and fine particulate matter (PM2.5) comes from the uncertainty of AOD by aerosol models and the estimated surface reflectance, a mismatch in spatiotemporal resolution, integration of AOD and PM2.5 data, and data modeling. In this study, an integrated geographically temporally weighted regression (GTWR) and RANdom SAmple Consensus (RANSAC) models, which provide fine goodness-of-fit between observed PM2.5 and AOD data, were used for mapping of PM2.5 over Taiwan for the year 2014. For this, dark target (DT) AOD observations at 3-km resolution (DT3K) only for high-quality assurance flag (QA=3) were obtained from the scientific data set (SDS) Optical_Depth_Land_And_Ocean. AOD observations were also obtained from the merged DT and DB (deep blue) product (DTB3K) which was generated using the simplified merge scheme (SMS), i.e., using an average of the DT and DB highest quality AOD retrievals or the available one. The GTWR model integrated with RANSAC can use the effective sampling and fitting to overcome the estimation problem of AOD-PM2.5 with the uncertainty and outliers of observation data. Results showed that the model dealing with spatiotemporal heterogeneity and uncertainty is a powerful tool to infer patterns of PM2.5 from a RANSAC subset samples. Moreover, spatial variability and hotspot analysis were applied after PM2.5 mapping. The hotspot and spatial variability of PM2.5 maps can give us a summary of the spatiotemporal patterns of PM2.5 variations.
机译:气雾光学深度(AOD)和细颗粒物质(PM2.5)之间的关系的不确定性来自AOD的不确定度和气溶胶模型和估计的表面反射率,时空分辨率的不匹配,AOD和PM2.5数据的集成和数据建模。在本研究中,在观察到的PM2.5和AOD数据之间提供了优质适应性的综合地理上临时加权回归(GTWR)和随机样本共识(RANSAC)模型,用于在台湾映射PM2.5为此,从科学数据集(SDS)光学_Depth_land_And_ocean获得了3公里分辨率(DT3K)的黑暗目标(DT)AOD观察,仅用于高质量保证标志(QA = 3)。也从合并的DT和DB(深蓝色)产品(DTB3K)获得AOD观察,其使用简化的合并方案(SMS),即使用DT和DB最高质量AOD检索或可用的ID的平均值而产生。与Ransac集成的GTWR模型可以使用有效的采样和拟合来克服AOD-PM2.5的估计问题,以及观察数据的不确定性和异常值。结果表明,处理时空异质性和不确定性的模型是一种强大的工具,可以从RANSAC子集样品中推断PM2.5的模式。此外,在PM2.5映射后应用了空间变异性和热点分析。 PM2.5地图的热点和空间可变性可以给我们概述PM2.5变化的时空模式。

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