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利用大气再分析资料预测内蒙古半干旱草原植被物候。

Prediction of vegetation phenology with atmospheric reanalysis over semiarid grasslands in Inner Mongolia.

机构信息

School of Land Science and Spatial Planning, Hebei GEO University, Shijiazhuang 050031, China.

Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture and Rural Affairs/Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, China.

出版信息

Sci Total Environ. 2022 Mar 15;812:152462. doi: 10.1016/j.scitotenv.2021.152462. Epub 2021 Dec 22.

Abstract

Vegetation phenology is a sensitive indicator of climate change and vegetation growth. In the present study, two phenological phases with respect to vegetation growth at the initial and mature stages, namely, the start of the season (SOS) and the peak of the season (POS), were estimated from a satellite-derived normalized difference vegetation index (NDVI) dataset over a long-term period of 32 years (1983 to 2014) and used to explore their responses to atmospheric variables, including air temperature, precipitation, solar radiation, wind speed and soil moisture. First, the forward feature selection method was used to determine whether each independent variable was linear or nonlinear to the SOS and POS. In addition, a generalized additive model (GAM) was used to analyze the correlation between the phenological phases and each independent variable at different temporal scales. The results show that soil moisture and precipitation are linearly correlated with the SOS, whereas the other variables are nonlinearly correlated. Meanwhile, soil moisture, wind speed and solar radiation are found to be nonlinearly correlated with the POS. However, air temperature and precipitation reveal a significant negative correlation with the POS. Furthermore, it was concluded that the aforementioned independent variables from the previous year could contribute to approximately 63%-85% of the SOS variations in the present year, whereas the atmospheric variables from April to June could contribute to approximately 70%-85% of the POS variations in the same year. Finally, the SOS and POS predicted by the GAM exhibit significant agreement with those derived from the satellite NDVI dataset, with the root mean square error of approximately 3 to 5 days.

摘要

植被物候是气候变化和植被生长的敏感指标。本研究利用 32 年(1983 年至 2014 年)的卫星归一化差异植被指数(NDVI)数据集,估计了植被生长初始和成熟两个物候阶段的开始季节(SOS)和季节峰值(POS),并探讨了它们对大气变量(包括气温、降水、太阳辐射、风速和土壤湿度)的响应。首先,采用前向特征选择方法确定每个自变量与 SOS 和 POS 是线性关系还是非线性关系。此外,还使用广义加性模型(GAM)分析了物候阶段与不同时间尺度下每个自变量之间的相关性。结果表明,土壤湿度和降水与 SOS 呈线性相关,而其他变量呈非线性相关。同时,土壤湿度、风速和太阳辐射与 POS 呈非线性相关。然而,气温和降水与 POS 呈显著负相关。此外,研究结果还表明,前一年的上述自变量可以解释当年 SOS 变化的 63%-85%,而 4 月至 6 月的大气变量可以解释当年 POS 变化的 70%-85%。最后,GAM 预测的 SOS 和 POS 与卫星 NDVI 数据集的结果具有显著的一致性,其均方根误差约为 3 至 5 天。

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