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基于矩阵分解的降水时空插值方法
引用本文:陈华,盛晟,夏润亮,马瑞,朱跃龙,李涛. 基于矩阵分解的降水时空插值方法[J]. 河海大学学报(自然科学版), 2021, 49(1): 35-41
作者姓名:陈华  盛晟  夏润亮  马瑞  朱跃龙  李涛
作者单位:武汉大学水资源与水电工程科学国家重点实验室,湖北武汉 430072;黄河水利委员会黄河水利科学研究院,河南郑州 450003;长江空间信息技术工程有限公司,湖北武汉 430010;河海大学计算机与信息学院,江苏南京 210098
摘    要:为了提高基于雨量站网观测值估算降水空间分布的精度,同时考虑降水的时序发展趋势和站点空间分布,将传统的插值方法(反距离权重法、普通克里金法)和Funk矩阵分解(Funk-SVD)模型结合,提出了一种基于矩阵分解的插值方法,并采用黄河流域小浪底到花园口区间2009-2012年多场降水的日观测数据进行了精度检验.结果表明,通...

关 键 词:降水估算  矩阵分解  时空插值  反距离权重法  克里金法

Spatiotemporal interpolation method of rainfall based on matrix decomposition
CHEN Hu,SHENG Sheng,XIA Runliang,MA Rui,ZHU Yuelong,LI Tao. Spatiotemporal interpolation method of rainfall based on matrix decomposition[J]. Journal of Hohai University (Natural Sciences ), 2021, 49(1): 35-41
Authors:CHEN Hu  SHENG Sheng  XIA Runliang  MA Rui  ZHU Yuelong  LI Tao
Affiliation:State Key Laboratory of Water Resources and Hydropower Engineering Science, Wuhan University, Wuhan 430072, China;Yellow River Institute of Hydraulic Research, YRCC, Zhengzhou 450003, China;;Changjiang Spatial Information Technology Engineering Corporation, Wuhan 430010, China;College of Computer and Information, Hohai University, Nanjing 210098, China
Abstract:To improve the estimation accuracy of rainfall spatial distribution based on the gauge network, an interpolation method is proposed based on the matrix factorization. By combining the traditional interpolation methods, including the inverse distance weighting (IDW) method and the ordinary Kriging (OK) method, and the Funk SVD model, this method considered the temporal development of precipitation and the spatial distribution of gauges. The daily observation data of rainfall events from 2009 to 2012 between Xiaolangdi and Huayuankou were selected for the accuracy test. The results show that through combining with the Funk SVD model, the estimation errors of the IDW and OK can be reduced over 15% in terms of MAE and PERC, and the improvement is especially obvious when the surrounding stations are unevenly distributed, or the rainfall is heavy. The proposed method can greatly reduce the estimation error of traditional methods in the precipitation interpolation process and help improve the accuracy of spatial estimation.
Keywords:rainfall estimation   matrix decomposition   spatiotemporal interpolation   inverse distance weighting method   ordinary Kriging method
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