Matches in SemOpenAlex for { <https://semopenalex.org/work/W2573720666> ?p ?o ?g. }
- W2573720666 endingPage "313" @default.
- W2573720666 startingPage "299" @default.
- W2573720666 abstract "统计降尺度是指通过建立大尺度气候模式输出变量与小尺度气象要素之间的统计关系,产生站点或流域尺度气候变化情景的过程,是开展站点或流域尺度气候变化影响评估的重要技术环节。本文在总结统计降尺度方法国内外最新研究进展的基础上,综述了理想预报、模型输出估计以及随机天气发生器三类主要的统计降尺度方法,分析了各方法的优点与不足;阐述了统计降尺度方法发展所面临的问题与挑战,并提出针对各问题的解决思路和方法,以期为统计降尺度的发展指明方向,为气候变化影响评估提供参考。 Statistical downscaling is a process to build up statistical relationships between large-scale (usually 1˚-3˚ on latitude and longitude) climate model outputs and point/watershed-scale meteorological variables. It is an important technique to conduct climate change impact assessment for a specific site or a watershed. This paper systematically reviewed the recent advances in three fields related to statistical downscaling methods: perfect prognosis, model output statistics, and stochastic weather generator. Merits and draw-backs associated with each downscaling method were summarized. In addition, the challenges in pro-gressing statistical downscaling methods were stated, as well as the potential solutions. The contribution of this review is aimed at pointing out the direction of developing statistical downscaling methods and providing clues for climate change impact studies." @default.
- W2573720666 created "2017-01-26" @default.
- W2573720666 creator A5004044814 @default.
- W2573720666 creator A5057757229 @default.
- W2573720666 creator A5060264843 @default.
- W2573720666 creator A5089575288 @default.
- W2573720666 date "2016-01-01" @default.
- W2573720666 modified "2023-10-16" @default.
- W2573720666 title "Progress and Challenge in Statistically Downscaling Climate Model Outputs" @default.
- W2573720666 cites W1527805269 @default.
- W2573720666 cites W1533392108 @default.
- W2573720666 cites W1743406137 @default.
- W2573720666 cites W1766249972 @default.
- W2573720666 cites W1778428294 @default.
- W2573720666 cites W1898378792 @default.
- W2573720666 cites W1910751443 @default.
- W2573720666 cites W1917061602 @default.
- W2573720666 cites W1960103968 @default.
- W2573720666 cites W1967480822 @default.
- W2573720666 cites W1967879959 @default.
- W2573720666 cites W1969676767 @default.
- W2573720666 cites W1971250671 @default.
- W2573720666 cites W1974167084 @default.
- W2573720666 cites W1974470230 @default.
- W2573720666 cites W1975265747 @default.
- W2573720666 cites W1980290014 @default.
- W2573720666 cites W1980378914 @default.
- W2573720666 cites W1984726417 @default.
- W2573720666 cites W1987390828 @default.
- W2573720666 cites W1992992910 @default.
- W2573720666 cites W2000383402 @default.
- W2573720666 cites W2004147392 @default.
- W2573720666 cites W2006255177 @default.
- W2573720666 cites W2016198647 @default.
- W2573720666 cites W2017559255 @default.
- W2573720666 cites W2020098188 @default.
- W2573720666 cites W2028664034 @default.
- W2573720666 cites W2030496351 @default.
- W2573720666 cites W2038294068 @default.
- W2573720666 cites W2042852420 @default.
- W2573720666 cites W2043260633 @default.
- W2573720666 cites W2050613429 @default.
- W2573720666 cites W2052138108 @default.
- W2573720666 cites W2052616784 @default.
- W2573720666 cites W2055695879 @default.
- W2573720666 cites W2060918051 @default.
- W2573720666 cites W2061857023 @default.
- W2573720666 cites W2062014861 @default.
- W2573720666 cites W2064908124 @default.
- W2573720666 cites W2079000795 @default.
- W2573720666 cites W2081580680 @default.
- W2573720666 cites W2085907528 @default.
- W2573720666 cites W2088902948 @default.
- W2573720666 cites W2091206738 @default.
- W2573720666 cites W2093788300 @default.
- W2573720666 cites W2094678373 @default.
- W2573720666 cites W2122974524 @default.
- W2573720666 cites W2124154744 @default.
- W2573720666 cites W2125070304 @default.
- W2573720666 cites W2139433170 @default.
- W2573720666 cites W2141899511 @default.
- W2573720666 cites W2146495458 @default.
- W2573720666 cites W2147349378 @default.
- W2573720666 cites W2147447225 @default.
- W2573720666 cites W2150285422 @default.
- W2573720666 cites W2156224118 @default.
- W2573720666 cites W2161433330 @default.
- W2573720666 cites W2165834026 @default.
- W2573720666 cites W2167306860 @default.
- W2573720666 cites W2168945835 @default.
- W2573720666 cites W2172191993 @default.
- W2573720666 cites W2179874655 @default.
- W2573720666 cites W2285042355 @default.
- W2573720666 cites W2290165709 @default.
- W2573720666 cites W2414391554 @default.
- W2573720666 cites W2964422487 @default.
- W2573720666 doi "https://doi.org/10.12677/jwrr.2016.54037" @default.
- W2573720666 hasPublicationYear "2016" @default.
- W2573720666 type Work @default.
- W2573720666 sameAs 2573720666 @default.
- W2573720666 citedByCount "10" @default.
- W2573720666 countsByYear W25737206662017 @default.
- W2573720666 countsByYear W25737206662018 @default.
- W2573720666 countsByYear W25737206662019 @default.
- W2573720666 countsByYear W25737206662020 @default.
- W2573720666 countsByYear W25737206662021 @default.
- W2573720666 countsByYear W25737206662022 @default.
- W2573720666 countsByYear W25737206662023 @default.
- W2573720666 crossrefType "journal-article" @default.
- W2573720666 hasAuthorship W2573720666A5004044814 @default.
- W2573720666 hasAuthorship W2573720666A5057757229 @default.
- W2573720666 hasAuthorship W2573720666A5060264843 @default.
- W2573720666 hasAuthorship W2573720666A5089575288 @default.
- W2573720666 hasBestOaLocation W25737206661 @default.
- W2573720666 hasConcept C107054158 @default.
- W2573720666 hasConcept C127313418 @default.
- W2573720666 hasConcept C149782125 @default.
- W2573720666 hasConcept C153294291 @default.