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Correction of daily precipitation data of ITPCAS dataset over the Qinghai-Tibetan Plateau with KNN model

机译:用KNN模型校正青藏高原ITPCAS数据集的日降水量数据。

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As the meteorological stations in the Qinghai-Tibetan plateau (QTP) are scarcely and unevenly distributed, daily precipitation datasets generated from observation data and remote sensing inversion models are not accurate. The data accuracy can be improved by environmental and meteorological factors. This study selected k-Nearest Neighbor (KNN), a machine learning model, to correct the commonly used ITPCAS precipitation data over the QTP by establishing the relationship between daily precipitation and environmental (elevation, slope, aspect, vegetation) as well as meteorological factors (air temperature, humidity, wind speed). Error analysis shows that the KNN-corrected ITPCAS precipitation is more accurate than the original one. The spatial distribution of the corrected ITPCAS precipitation agrees well with the precipitation distribution pattern of the QTP. The error distribution of the corrected ITPCAS precipitation shows significant seasonal and regional characteristics.
机译:由于青藏高原的气象站分布稀少且不均匀,因此从观测数据和遥感反演模型生成的每日降水数据集并不准确。数据准确性可以通过环境和气象因素来提高。这项研究选择了k-最近邻居(KNN),这是一种机器学习模型,它通过建立每日降水量与环境(海拔,坡度,坡度,植被)以及气象因素之间的关系来校正QTP上常用的ITPCAS降水量数据(气温,湿度,风速)。误差分析表明,经KNN校正的ITPCAS降水比原始降水更为准确。校正后的ITPCAS降水的空间分布与QTP的降水分布模式非常吻合。校正后的ITPCAS降水的误差分布显示出明显的季节和区域特征。

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