Liu Yang, Lü Yi-he, Zheng Hai-feng, Chen Li-ding
Institute of Urban Environment, Chinese Academy of Sciences, Xiamen 361003, Fujian, China.
Ying Yong Sheng Tai Xue Bao. 2010 May;21(5):1153-8.
Based on the 10-day SPOT VEGETATION NDVI data and the daily meteorological data from 1998 to 2007 in Yan' an City, the main meteorological variables affecting the annual and interannual variations of NDVI were determined by using regression tree. It was found that the effects of test meteorological variables on the variability of NDVI differed with seasons and time lags. Temperature and precipitation were the most important meteorological variables affecting the annual variation of NDVI, and the average highest temperature was the most important meteorological variable affecting the inter-annual variation of NDVI. Regression tree was very powerful in determining the key meteorological variables affecting NDVI variation, but could not build quantitative relations between NDVI and meteorological variables, which limited its further and wider application.
基于延安市1998 - 2007年的10天分辨率SPOT植被归一化植被指数(NDVI)数据和逐日气象数据,利用回归树确定了影响NDVI年际和年内变化的主要气象变量。结果表明,不同季节和时间滞后下,各试验气象变量对NDVI变化的影响存在差异。温度和降水是影响NDVI年变化的最重要气象变量,平均最高温度是影响NDVI年际变化的最重要气象变量。回归树在确定影响NDVI变化的关键气象变量方面非常有效,但无法建立NDVI与气象变量之间的定量关系,这限制了其进一步广泛应用。