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Machine Learning-Based Error Modeling to Improve GPM IMERG Precipitation Product over the Brahmaputra River Basin

机译:基于机器学习的错误建模,以提高Brahmaputra河流域GPM Imerg Propidation产品

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The Integrated Multisatellite Retrievals for Global Precipitation Measurement (GPM) (IMERG) Level 3 estimates rainfall from passive microwave sensors onboard satellites that are associated with several uncertainty sources such as sensor calibration, retrieval errors, and orographic effects. This study aims to provide a comprehensive investigation of multiple machine learning (ML) techniques (Random Forest, and Neural Networks), to stochastically generate an error-corrected improved IMERG precipitation product at a daily time scale and 0.1-degree spatial resolution over the Brahmaputra river basin. In this study, we used the operational IMERG-Late Run version 06 product along with several meteorological and land surface parameters (elevation, soil type, land type, soil moisture, and daily maximum and minimum temperature) to produce an improved precipitation product in the Brahmaputra basin. We trained, tested, and optimized ML algorithms using 4 years (from 2015 through 2019) of reference rainfall data derived from the rain gauge. The ML generated precipitation product exhibited improved systematic and random error statistics for the study area, which is a strong indication for using the proposed algorithms in retrieving precipitation across the globe. We conclude that the proposed ML-based ensemble framework has the potential to quantify and correct the error sources for improving and promoting the use of satellite-based precipitation estimates for water resources applications.
机译:全球降水测量的集成多卫星检索(GPM)(IMERG)级别3估计从无源微波传感器的降雨与诸如传感器校准,检索误差和地形效果的多个不确定性源相关联的卫星。本研究旨在提供对多机器学习(ML)技术(随机林和神经网络)的全面调查,以便在日常时间尺度和胸罩上的0.1度空间分辨率下随机校正改进的改进的IMERG沉淀产品流域。在这项研究中,我们使用了运营的IMERG-LATE RUN版06产品以及多种气象和地表参数(升高,土壤类型,土壤类型,土壤水分和每日最大和最低温度),以产生改进的沉淀产品Brahmaputra盆地。我们使用4年(从2015年到2019年)培训,测试和优化的ML算法,从雨量计中得出的参考降雨数据。 ML产生的沉淀产品表现出研究区域的系统和随机误差统计,这是使用所提出的算法在全球检索降水中的强烈指示。我们得出结论,拟议的基于ML的集合框架有可能量化和纠正用于改善和促进水资源应用卫星降水估计的误差源。

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