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Generalized Variational Merging of Multi-source Precipitation Data Based on the Non-Gaussian Model

Generalized Variational Merging of Multi-source Precipitation Data Based on the Non-Gaussian Model
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摘要 Different from other domestic and foreign research in which the optimum interpolation(OI) merging algorithm is commonly used,this paper constructs the non-Gaussian model for generalized variational precipitation data merging research based on the non-Gaussianity of precipitation data. For CMORPH data correction,the probability density function( PDF) matching method is adopted,during which the GAMMA function fitting is utilized,and the generalized variational merging based on non-Gaussian model is used to merge corrected CMORPH precipitation data and station ground observation precipitation data. Meanwhile,we carry out an experiment on CMORPH precipitation data correction and the merging of multisource precipitation data based on non-Gaussian model. By measuring the structural similarity between the merged field and the reference field,we get a merging method that can better retain useful " outliers" which represent weather phenomena. The experimental results accord with our expectations. Different from other domestic and foreign research in which the optimum interpolation(OI) merging algorithm is commonly used,this paper constructs the non-Gaussian model for generalized variational precipitation data merging research based on the non-Gaussianity of precipitation data. For CMORPH data correction,the probability density function( PDF) matching method is adopted,during which the GAMMA function fitting is utilized,and the generalized variational merging based on non-Gaussian model is used to merge corrected CMORPH precipitation data and station ground observation precipitation data. Meanwhile,we carry out an experiment on CMORPH precipitation data correction and the merging of multisource precipitation data based on non-Gaussian model. By measuring the structural similarity between the merged field and the reference field,we get a merging method that can better retain useful " outliers" which represent weather phenomena. The experimental results accord with our expectations.
出处 《Meteorological and Environmental Research》 CAS 2017年第6期20-26,共7页 气象与环境研究(英文版)
基金 Supported by the Science Technology Foundation of State Grid Corporation of China Natural Science Foundation of Anhui Province(1708085QD89) Huaihe River Basin Meteorological Open Research Fund(HRM201407) Shenyang Institute of Atmospheric Environment of China Meteorological Administration Open Fund Project(2016SYIAE14)
关键词 CMORPH GAMMA function PDF CORRECTIONS NON-GAUSSIAN model Generalized VARIATIONAL MERGING CMORPH GAMMA function PDF corrections Non-Gaussian model Generalized variational merging
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