globalchange  > 全球变化的国际研究计划
DOI: 10.1002/joc.5995
Scopus记录号: 2-s2.0-85061356158
论文题名:
High-resolution mapping of daily climate variables by aggregating multiple spatial data sets with the random forest algorithm over the conterminous United States
作者: Hashimoto H.; Wang W.; Melton F.S.; Moreno A.L.; Ganguly S.; Michaelis A.R.; Nemani R.R.
刊名: International Journal of Climatology
ISSN: 8998418
出版年: 2019
语种: 英语
英文关键词: daily surface climate ; machine learning ; NEX-GDM ; precipitation ; random forest ; solar radiation and wind speed ; temperature
Scopus关键词: Decision trees ; Earth (planet) ; Learning systems ; Machine learning ; NASA ; Precipitation (chemical) ; Satellites ; Solar radiation ; Temperature ; Wind ; Computational technique ; High-resolution mapping ; NEX-GDM ; Random forests ; Regional surface climate ; Surface climate ; Urban Heat Island Effects ; Wind speed ; Climate models
英文摘要: High-resolution gridded climate data products are crucial to research and practical applications in climatology, hydrology, ecology, agriculture, and public health. Previous works to produce multiple data sets were limited by the availability of input data as well as computational techniques. With advances in machine learning and the availability of several daily satellite data sets providing unprecedented information at 1 km or higher spatial resolutions, it is now possible to improve upon earlier data sets in terms of representing spatial variability. We developed the NEX (NASA Earth Exchange) Gridded Daily Meteorology (NEX-GDM) model, which can estimate the spatial pattern of regional surface climate variables by aggregating several dozen two-dimensional data sets and ground weather station data. NEX-GDM does not require physical assumptions and can easily extend spatially and temporally. NEX-GDM employs the random forest algorithm for estimation, which allows us to find the best estimate from the spatially continuous data sets. We used the NEX-GDM model to produce historical 1-km daily spatial data for the conterminous United States from 1979 to 2017, including precipitation, minimum temperature, maximum temperature, dew point temperature, wind speed, and solar radiation. In this study, NEX-GDM ingested a total of 30 spatial variables from 13 different data sets, including satellite, reanalysis, radar, and topography data. Generally, the spatial patterns of precipitation and temperature produced were similar to previous data sets with the exception of mountain regions in the western United States. The analyses for each spatially continuous data set show that satellite and reanalysis led to better estimates and that the incorporation of satellite data allowed NEX-GDM to capture the spatial patterns associated with urban heat island effects. The NEX-GDM data is available to the community through the NEX data portal. © 2019 Royal Meteorological Society
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/116634
Appears in Collections:全球变化的国际研究计划

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作者单位: School of Natural Sciences, California State University-Monterey Bay, Seaside, CA, United States; NASA Earth Exchange, NASA Ames Research Center, Moffett Field, CA, United States; Bay Area Environmental Research Institute, Petaluma, CA, United States

Recommended Citation:
Hashimoto H.,Wang W.,Melton F.S.,et al. High-resolution mapping of daily climate variables by aggregating multiple spatial data sets with the random forest algorithm over the conterminous United States[J]. International Journal of Climatology,2019-01-01
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