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Water vapor mapping by fusing InSAR and GNSS remote sensing data and atmospheric simulations

机译:通过融合InSAR和GNSS遥感数据以及大气模拟来绘制水蒸气图

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摘要

Data fusion aims at integrating multiple data sources that can be redundant or complementary to produce complete, accurate information of the parameter of interest. In this work, data fusion of precipitable water vapor (PWV) estimated from remote sensing observations and data from the Weather Research and Forecasting (WRF) modeling system are applied to provide complete grids of PWV with high quality. Our goal is to correctly infer PWV at spatially continuous, highly resolved grids from heterogeneous data sets. This is done by a geostatistical data fusion approach based on the method of fixed-rank kriging. The first data set contains absolute maps of atmospheric PWV produced by combining observations from the Global Navigation Satellite Systems (GNSS) and Interferometric Synthetic Aperture Radar (InSAR). These PWV maps have a high spatial density and a millimeter accuracy; however, the data are missing in regions of low coherence (e.g., forests and vegetated areas). The PWV maps simulated by the WRF model represent the second data set. The model maps are available for wide areas, but they have a coarse spatial resolution and a still limited accuracy. The PWV maps inferred by the data fusion at any spatial resolution show better qualities than those inferred from single data sets. In addition, by using the fixed-rank kriging method, the computational burden is significantly lower than that for ordinary kriging.
机译:数据融合旨在集成多个冗余或互补的数据源,以生成感兴趣参数的完整,准确的信息。在这项工作中,将从遥感观测估计的可沉淀水汽(PWV)数据融合和来自气象研究与预报(WRF)建模系统的数据融合,以提供高质量的完整PWV网格。我们的目标是从异构数据集正确推断空间连续,高度解析的网格上的PWV。这是通过基于固定秩克里金法的地统计数据融合方法完成的。第一个数据集包含通过结合来自全球导航卫星系统(GNSS)和干涉式合成孔径雷达(InSAR)的观测结果产生的大气PWV绝对图。这些PWV地图具有很高的空间密度和毫米精度;但是,在相关性较低的区域(例如,森林和植被区)缺少数据。 WRF模型模拟的PWV映射表示第二个数据集。模型图可用于大范围区域,但它们的空间分辨率较粗,准确性仍然有限。通过数据融合在任何空间分辨率下推断出的PWV映射,都比从单个数据集推断出的PWV映射具有更好的质量。此外,通过使用固定秩数克里金法,计算负担明显低于普通克里金法。

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