地球信息科学学报
地毬信息科學學報
지구신식과학학보
GEO-INFORMATION SCIENCE
2013年
6期
819-828
,共10页
统计降尺度%月平均气温%NCEP/NCAR%NDVI%DEM
統計降呎度%月平均氣溫%NCEP/NCAR%NDVI%DEM
통계강척도%월평균기온%NCEP/NCAR%NDVI%DEM
statistical downscaling%mean monthly temperature%NCEP/NCAR%NDVI%DEM
近地表气温是影响陆表过程的一项重要因素,中高分辨率的栅格化气温数据是生态环境、水文、水循环等模拟和分析的重要参数,获得准确和较高空间分辨率的栅格化气温数据对更好地理解陆地表面过程和全球变化等有非常重要的意义。本文提出一种基于气温与地形、植被等环境因子,以及地理位置的统计降尺度方法,以回归树模型建立气温与NDVI、DEM及地理位置之间的定量关系,将NCEP/NCAR近地表气温数据降尺度到公里级分辨率,并利用该方法得到2000年1月至2010年12月全国陆地范围1km分辨率逐月月平均气温数据。最后,采用全国380个气象站点的观测数据对结果进行对比分析,结果表明:该方法得到的气温数据可以有效地反映全国陆地范围气温空间分布特点和月际变化趋势,验证结果的R2范围在0.861-0.95之间,RMSE范围在1.88~2.68℃之间。
近地錶氣溫是影響陸錶過程的一項重要因素,中高分辨率的柵格化氣溫數據是生態環境、水文、水循環等模擬和分析的重要參數,穫得準確和較高空間分辨率的柵格化氣溫數據對更好地理解陸地錶麵過程和全毬變化等有非常重要的意義。本文提齣一種基于氣溫與地形、植被等環境因子,以及地理位置的統計降呎度方法,以迴歸樹模型建立氣溫與NDVI、DEM及地理位置之間的定量關繫,將NCEP/NCAR近地錶氣溫數據降呎度到公裏級分辨率,併利用該方法得到2000年1月至2010年12月全國陸地範圍1km分辨率逐月月平均氣溫數據。最後,採用全國380箇氣象站點的觀測數據對結果進行對比分析,結果錶明:該方法得到的氣溫數據可以有效地反映全國陸地範圍氣溫空間分佈特點和月際變化趨勢,驗證結果的R2範圍在0.861-0.95之間,RMSE範圍在1.88~2.68℃之間。
근지표기온시영향륙표과정적일항중요인소,중고분변솔적책격화기온수거시생태배경、수문、수순배등모의화분석적중요삼수,획득준학화교고공간분변솔적책격화기온수거대경호지리해륙지표면과정화전구변화등유비상중요적의의。본문제출일충기우기온여지형、식피등배경인자,이급지리위치적통계강척도방법,이회귀수모형건립기온여NDVI、DEM급지리위치지간적정량관계,장NCEP/NCAR근지표기온수거강척도도공리급분변솔,병이용해방법득도2000년1월지2010년12월전국륙지범위1km분변솔축월월평균기온수거。최후,채용전국380개기상참점적관측수거대결과진행대비분석,결과표명:해방법득도적기온수거가이유효지반영전국륙지범위기온공간분포특점화월제변화추세,험증결과적R2범위재0.861-0.95지간,RMSE범위재1.88~2.68℃지간。
Near-surface air temperature is an important controlling parameter for land surface processes, and is critical to ecological, environmental and hydrological modeling. Temperature records observed at meteorological stations have been widely used, but there has been an increasing need for temperature data in grid for modeling purposes. Although grid temperature can be estimated from in-situ temperature records using interpolation algo-rithm, low accuracy have been reported due to limited ground stations and their clustering distribution, especially when there were insufficient sites to represent all land cover types and terrain conditions in the area. NCEP/NCAR reanalysis project uses a frozen state-of-art global data assimilation system and a database as complete as possible. Although the NCEP/NCAR data has a coarse resolution (0.5 degree), it provides global, consistent, and long term estimation of climate variables. This paper presents a downscaling approach to derive monthly temper-ature at 1km resolution from the NCEP/NCAR by utilizing derived relationships between monthly aggregated NCEP/NCAR temperature and other ground elements, i.e., terrain, vegetation and geographic locations. Regres-sion tree model was chosen to detect the possible relationships. Monthly temperature with 1km resolution for China land area from 2000 to 2010 has been produced using the approach. The final predicted temperatures were compared with observed records at 380 meteorological stations in China. The results indicate that the down-scaled estimations can represent spatial distribution and trends and the magnitude of inter-month temperature with R2 ranging from 0.861 to 0.95, and RMSE from 1.88℃to 2.681℃.