首页> 外文会议>Asian conference on remote sensing;ACRS >STATISTICAL SPATIAL DOWNSCALING TECHNIQUE OF GLOBAL PRECIPITATION MEASUREMENT (GPM) PRECIPITATION USING SATELLITE DERIVED VEGETATION AND TOPOGRAPHIC DATA
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STATISTICAL SPATIAL DOWNSCALING TECHNIQUE OF GLOBAL PRECIPITATION MEASUREMENT (GPM) PRECIPITATION USING SATELLITE DERIVED VEGETATION AND TOPOGRAPHIC DATA

机译:利用卫星衍生植被和地形数据进行全球降水量测量(GPM)降水量的统计空间降级技术

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Global Precipitation Measurements (GPM) is the latest satellite mission operated to map the atmospheric precipitation over the globe by virtue of 0.1° spatial resolution and 3-hour temporal resolution. The recent GPM precipitation data improves the hydrological modelling quality by giving reliable now casting hydrological parameters from its raster-based precipitation pixels. Such advantages are best to be applied to map precipitation at regular period and higher diversity tropical rainfall particularly in Kelantan. Malaysia. Spatial resolution on pixels has greatly improved the modelling results by increasing the reliability and spatial accuracy of point measurement by gauge. Yet, the spatial variation propagates into GPM precipitation and has poorer correlation with gauges. This becomes more difficult if the gauge is sparsely located and having frequent void and unreliable readings. Therefore, localized precipitation map is needed and this may lead to spatial downscaling of the GPM precipitation image. Spatial downscaling approach determines the best scale at which the relationship between precipitation and other environmental parameters was established in the algorithm. Vegetation and local topography in the context of Normalized Difference Vegetation Index (NDVI) and Digital Elevation Model (DEM) respectively are common parameters being tested. Relationship of NDVI and DEM with GPM precipitation has never been tested in the Malaysia tropical rainfall and thus no intention was made for downscaling the GPM precipitation pixels. This study focuses to downscale the GPM precipitation by means of the statistical spatial downscaling method from the autocorrelation with the NDVI in Kelantan river basins. Online data repository of the GPM IMERG precipitation. Moderate Resolution Imaging Spectroradiometer (MODIS) derived NDVI and DEM from the Shuttle Radar Topography Mission (SRTM) were used. Temporal integration derives a monthly averaged 3-hour GPM precipitation and 16-day MODIS NDVI products taken from Nov 2014 to Dec 2014. DEMs STRM at specific locations were selected. Polynomial and exponential model between NDVI and GPM were used to predict the monthly precipitation. Monthly precipitation at 1 km2 was generated by superposition of the regressed precipitation estimate and interpolated the residual. The root mean square error (RMSE) and correlation coefficient (R2) were evaluated by comparing with gauge data. NDVI shows good correlation with GPM precipitation particularly in pixels where the intense rainfall is available. Exponential regression gives more representation of relation between NDVI and GPM as the bias was reducing. Spatial downscaling on GPM using NDVI is straightforward and can be used to determine large-scale precipitation map in Kelantan river basin area.
机译:全球降水测量(GPM)是最新的卫星飞行任务,凭借0.1°的空间分辨率和3小时的时间分辨率,可绘制全球大气降水图。最新的GPM降水数据通过从基于栅格的降水像素中提供可靠的现浇水文参数,提高了水文建模质量。最好将这些优势应用于定期降雨和更高多样性的热带降雨的制图,尤其是吉兰丹州。马来西亚。像素的空间分辨率通过提高量规点测量的可靠性和空间精度,极大地改善了建模结果。但是,空间变化会传播到GPM降水中,并且与轨距的相关性较差。如果仪表稀疏放置并且频繁出现空隙和不可靠的读数,这将变得更加困难。因此,需要局部降水图,这可能导致GPM降水图像的空间缩小。空间缩减方法确定了在算法中建立降水与其他环境参数之间关系的最佳尺度。在归一化植被指数(NDVI)和数字高程模型(DEM)的背景下,植被和局部地形是正在测试的常见参数。 NDVI和DEM与GPM降水之间的关系从未在马来西亚热带降雨中进行过测试,因此无意缩小GPM降水像素。这项研究的重点是通过吉兰丹河流域中与NDVI自相关的统计空间降尺度方法,通过统计空间降尺度方法来降尺度GPM降水。 GPM IMERG降水量的在线数据存储库。使用了从航天飞机雷达地形任务(SRTM)获得的中等分辨率成像光谱仪(MODIS)的NDVI和DEM。时间整合得出2014年11月至2014年12月期间每月平均3小时的GPM降水量和16天的MODIS NDVI产品。选择了特定位置的DEM STRM。 NDVI和GPM之间的多项式和指数模型用于预测月降水量。通过将回归的降水估算值叠加并插入残差,可产生1 km2的月降水量。通过与量规数据进行比较来评估均方根误差(RMSE)和相关系数(R2)。 NDVI与GPM降水表现出良好的相关性,特别是在有强降雨的像素中。随着偏差的减小,指数回归给出了NDVI与GPM之间关系的更多表示。使用NDVI对GPM进行空间缩减很简单,可以用来确定吉兰丹河流域地区的大规模降水图。

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