Zhang Hanbo, Wei Mengsi, Qin Jinlan, et al. Downscaling and Error Correction of TRMM Data Based on Different Vegetation Indices[J]. Bulletin of Soiland Water Conservation, 2021, 41(4): 214-223.
DOI:
Zhang Hanbo, Wei Mengsi, Qin Jinlan, et al. Downscaling and Error Correction of TRMM Data Based on Different Vegetation Indices[J]. Bulletin of Soiland Water Conservation, 2021, 41(4): 214-223. DOI: 10.13961/j.cnki.stbctb.2021.04.030.
Downscaling and Error Correction of TRMM Data Based on Different Vegetation Indices
[Objective] The spatial downscaling and error correction of tropical rainfall measuring mission (TRMM) data at different time scales were researched in order to provide references for flood disaster monitoring in Central China. [Methods] This article mainly used geographically weighted regression (GWR) model to achieve spatial downscaling of TRMM data from 2001 to 2019 with the help of enhanced vegetation index (EVI) and normalized difference vegetation index (NDVI)
and compared and analyzed the annual
seasonal and monthly downscaled data through meteorological station data. Then combined with the geographic difference analysis (GDA) and geographic ratio analysis (GRA)
the downscaling results of the year
quarter and month were corrected for error
and the data before and after the correction were compared and analyzed. [Results] ① The coefficient of determination (R2) of TRMM data and meteorological station data in year (0.630)
season (0.710~0.865) and month (0.637~0.875) all showed that the TRMM data had better applicability in Central China. ② The spatial resolution of the TRMM data was downscaled from 0.25° to 1 km through the GWR model
and TRMMEVI data had better accuracy than TRMMNDVI data
indicating that TRMM data in Central China had a closer relationship with EVI than NDVI. ③ GDA and GRA corrections were performed on the optimized TRMMEVI data. The GDA correction results were better than the GRA corrections
and the correction effect was better in months with more precipitation. [Conclusion] In Central China
EVI is more suitable for TRMM data downscaling research than NDVI
and downscaling data using GDA correction is more effective than GRA correction.
关键词
Keywords
references
Chang A T C, Chiu L S, Kummerow C, et al. First results of the TRMM Microwave Imager (TMI) monthly oceanic rain rate:Comparison with SSM/I[J]. Geophysical Research Letters, 1999, 26(15):2379-2382.
Cao Yueqian, Zhang Wu, Wang Wenjing. Evaluation of TRMM 3B43 data over the Yangtze River Delta of China[J]. Scientific Reports, 2018, 8(1):1-12.
Abdelmoneim H, Soliman M R, Moghazy H M. Evaluation of TRMM 3B42V7 and CHIRPS Satellite Precipitation Products as an Input for Hydrological Model over Eastern Nile Basin[J]. Earth Systems and Environment, 2020, 4:685-6998.
Yan Yan, Wu Huan, Gu Guojun, et al. Climatology and interannual variability of floods during the TRMM era (1998-2013)[J]. Journal of Climate, 2020, 33(8):3289-3305.
Zhang Yueyuan, Li Yungang, Ji Xuan, et al. Fine-resolution precipitation mapping in a mountainous watershed:Geostatistical downscaling of TRMM products based on environmental variables[J]. Remote Sensing, 2018, 10(1):119.
Brunsdon C, Fotheringham A S, Charlton M E. Geographically weighted regression:A method for exploring spatial nonstationarity[J]. Journal of the Royal Statistical Society, 2017, 47(3):431-443.
Brunsdon C, Fotheringham S, Charlton M. Geographically weighted local statistics applied to binary data[C]//International Conference on Geographic Information Science. Berlin, Heidelberg:Springer, 2002:38-50.