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首页> 外文期刊>Journal of hydrometeorology >PERSIANN Dynamic Infrared-Rain Rate (PDIR-Now): A Near-Real-Time, Quasi-Global Satellite Precipitation Dataset
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PERSIANN Dynamic Infrared-Rain Rate (PDIR-Now): A Near-Real-Time, Quasi-Global Satellite Precipitation Dataset

机译:Persiann动态红外雨率(PDIR-NOW):近实时,准全球卫星降水数据集

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摘要

This study presents the Precipitation Estimation from Remotely Sensed Information Using Artificial Neural Networks-Dynamic Infrared Rain Rate (PDIR-Now) near-real-time precipitation dataset. This dataset provides hourly, quasi-global, infrared-based precipitation estimates at 0.04 degrees x 0.04 degrees spatial resolution with a short latency (15-60 min). It is intended to supersede the PERSIANN-Cloud Classification System (PERSIANN-CCS) dataset previously produced as the near-real-time product of the PERSIANN family. We first provide a brief description of the algorithm's fundamentals and the input data used for deriving precipitation estimates. Second, we provide an extensive evaluation of the PDIR-Now dataset over annual, monthly, daily, and subdaily scales. Last, the article presents information on the dissemination of the dataset through the Center for Hydrometeorology and Remote Sensing (CHRS) web-based interfaces. The evaluation, conducted over the period 2017-18, demonstrates the utility of PDIR-Now and its improvement over PERSIANN-CCS at all temporal scales. Specifically, PDIR-Now improves the estimation of rain/no-rain days as demonstrated by a critical success index (CSI) of 0.53 compared to 0.47 of PERSIANN-CCS. In addition, PDIR-Now improves the estimation of seasonal and diurnal cycles of precipitation as well as regional precipitation patterns erroneously estimated by PERSIANN-CCS. Finally, an evaluation is carried out to examine the performance of PDIR-Now in capturing two extreme events, Hurricane Harvey and a cluster of summer thunderstorms that occurred over the Netherlands, where it is shown that PDIR-Now adequately represents spatial precipitation patterns as well as subdaily precipitation rates with a correlation coefficient (CORR) of 0.64 for Hurricane Harvey and 0.76 for the Netherlands thunderstorms.
机译:本研究利用人工神经网络动态红外降雨率(PDIR Now)近实时降水数据,从遥感信息中估算降水量。该数据集以0.04度x 0.04度的空间分辨率提供每小时、准全球、基于红外的降水量估计,延迟时间短(15-60分钟)。它旨在取代之前作为波斯家族的近实时产品生产的波斯云分类系统(PERSIANN-CCS)数据集。我们首先简要介绍了该算法的基本原理和用于推导降水量估算的输入数据。其次,我们对PDIR Now数据集的年度、月度、每日和次每日量表进行了广泛评估。最后,本文介绍了通过水文气象和遥感中心(CHRS)基于网络的界面传播数据集的信息。在2017年至2018年期间进行的评估表明,PDIR现在的效用及其在所有时间尺度上都优于PERSINN-CCS。具体而言,PDIR现在改进了降雨/无雨天数的估计,关键成功指数(CSI)为0.53,而PERSINN-CCS为0.47。此外,PDIR现在改进了对降水季节和日周期的估计,以及PERSIANN-CCS错误估计的区域降水模式。最后,进行了评估,以检查PDIR在捕捉两个极端事件方面的表现,即飓风哈维和发生在荷兰上空的一系列夏季雷暴,其中表明,PDIR现在充分代表了空间降水模式和逐日降水率,飓风哈维的相关系数(CORR)为0.64,荷兰雷暴的相关系数(CORR)为0.76。

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