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A Two-Stage Deep Neural Network Framework for Precipitation Estimation from Bispectral Satellite Information

机译:双光谱卫星信息的降水估计两阶段深神经网络框架

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摘要

Compared to ground precipitation measurements, satellite-based precipitation estimation products have the advantage of global coverage and high spatiotemporal resolutions. However, the accuracy of satellite-based precipitation products is still insufficient to serve many weather, climate, and hydrologic applications at high resolutions. In this paper, the authors develop a state-of-the-art deep learning framework for precipitation estimation using bispectral satellite information, infrared (IR), and water vapor (WV) channels. Specifically, a two-stage framework for precipitation estimation from bispectral information is designed, consisting of an initial rain/no-rain (R/NR) binary classification, followed by a second stage estimating the nonzero precipitation amount. In the first stage, the model aims to eliminate the large fraction of NR pixels and to delineate precipitation regions precisely. In the second stage, the model aims to estimate the pointwise precipitation amount accurately while preserving its heavily skewed distribution. Stacked denoising autoencoders (SDAEs), a commonly used deep learning method, are applied in both stages. Performance is evaluated along a number of common performance measures, including both R/NR and real-valued precipitation accuracy, and compared with an operational product, Precipitation Estimation from Remotely Sensed Information Using Artificial Neural Networks-Cloud Classification System (PERSIANN-CCS). For R/NR binary classification, the proposed two-stage model outperforms PERSIANN-CCS by 32.56% in the critical success index (CSI). For real-valued precipitation estimation, the two-stage model is 23.40% lower in average bias, is 44.52% lower in average mean squared error, and has a 27.21% higher correlation coefficient. Hence, the two-stage deep learning framework has the potential to serve as a more accurate and more reliable satellite-based precipitation estimation product. The authors also provide some future directions fo
机译:与地面降水测量相比,基于卫星的降水估计产品具有全球覆盖率和高时的分辨率的优势。然而,卫星沉淀产品的准确性仍然不足以在高分辨率下提供许多天气,气候和水文应用。在本文中,作者使用双光谱卫星信息,红外线(IR)和水蒸气(WV)通道来开发用于降水估计的最先进的深度学习框架。具体地,设计了来自双光谱信息的降水估计的两阶段框架,由初始雨/无雨(R / NR)二进制分类组成,然后估计非零沉淀量的第二阶段。在第一阶段,模型旨在消除大部分NR像素并精确地描绘沉淀区域。在第二阶段,该模型的目的是准确地估计点沉淀量,同时保持其严重偏斜的分布。堆叠的去噪自动化器(SDAES),一种常用的深度学习方法,适用于两个阶段。性能沿着许多常见的性能措施进行评估,包括R / NR和实值降水精度,与操作产品相比,使用人工神经网络 - 云分类系统(PERSIANN-CCS)与远程感测信息的降水估计。对于R / NR二进制分类,所提出的两级模型在关键成功指数(CSI)中以32.56%优于32.56%。对于实际值的降水估计,平均偏差的两级模型较低23.40%,平均平均方形误差下降44.52%,具有27.21%的相关系数较高。因此,两级深度学习框架具有潜力作为一种更准确和更可靠的卫星沉淀估计产品。作者还提供了一些未来的方向

著录项

  • 来源
    《Journal of hydrometeorology》 |2018年第2期|共16页
  • 作者单位

    Univ Calif Irvine Ctr Hydrometeorol &

    Remote Sensing Irvine CA 92697 USA;

    Univ Calif Irvine Ctr Hydrometeorol &

    Remote Sensing Irvine CA 92697 USA;

    Univ Calif Irvine Dept Comp Sci Irvine CA USA;

    Univ Calif Irvine Ctr Hydrometeorol &

    Remote Sensing Irvine CA 92697 USA;

    Univ Calif Irvine Ctr Hydrometeorol &

    Remote Sensing Irvine CA 92697 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 水文循环与水文气象;
  • 关键词

  • 入库时间 2022-08-20 09:26:18

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