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生态学杂志 ›› 2025, Vol. 44 ›› Issue (1): 260-270.

• 研究报告 • 上一篇    下一篇

湖南省植被覆盖度变化及其与气候因子的多尺度关系

李思,谢红霞,周清,沈璇玚,段良霞*   

  1. (湖南农业大学资源学院, 长沙 410128)
  • 出版日期:2025-01-10 发布日期:2025-01-16

The relationships between vegetation coverage and climate factors over multiple scales in Hunan Province.

LI Si, XIE Hongxia, ZHOU Qing, SHEN Xuanyang, DUAN Liangxia*   

  1. (College of Resources, Hunan Agricultural University, Changsha 410128, China).
  • Online:2025-01-10 Published:2025-01-16

摘要: 气候变化对植被覆盖度的影响具有时间尺度依赖性。本文基于2000—2020年MODIS NDVI数据,利用像元二分模型获取湖南省植被覆盖度,运用多元经验模态分解法(multivariate empirical mode decomposition, MEMD)量化了植被覆盖度和气候因子在不同时间尺度上的相关性,并对植被覆盖度进行了预测。结果表明:利用MEMD将植被覆盖度分解成7个本征模函数(intrinsic mode function, IMFs)和残差,IMF3(12个月)尺度占主导地位,其次为IMF1(3个月)和IMF2(6个月),3个尺度对植被覆盖度方差贡献率之和达94.5%;植被覆盖度与降水和潜在蒸散发在每一尺度上均呈显著相关(P<0.05);在3个月时间尺度上,气温对植被覆盖度的影响不显著,而在大于12个月时间尺度上气温、降水和潜在蒸散发均对植被生长具有显著性影响(P<0.05);基于MEMD对原始数据分解后预测植被覆盖度的精度(R2=0.73)要优于直接使用原始数据的多元逐步回归结果(R2=0.67),气温和潜在蒸散发是预测植被覆盖度的重要因素。本研究可为区域植被恢复和生态环境可持续发展提供科学依据。


关键词: 植被覆盖度, 像元二分模型, 多元经验模态分解, 多尺度, 气候变化

Abstract: The effect of climate change on vegetation cover is time-scale dependent. Based on the MODIS NDVI data from 2000 to 2020, the pixel dichotomy model was used to obtain fractional vegetation coverage in Hunan Province. The correlations between vegetation coverage and climate factors at different temporal scales were quantified by using multivariate empirical mode decomposition (MEMD). The vegetation coverage in Hunan Province was predicted. The MEMD could decompose the fractional vegetation coverage into seven intrinsic mode functions (IMFs) and the residuals. The dominant scale was IMF3 (12 months), followed by IMF1 (3 months) and IMF2 (6 months). The total contribution rate of those three scales to the variance of fractional vegetation coverage was 94.5%. Fractional vegetation coverage was significantly correlated with precipitation and potential evapotranspiration at each scale (P<0.05). There was no relationship between air temperature and fractional vegetation cover at 3-month time scale. However, air temperature, precipitation and potential evapotranspiration all had significant effects on vegetation growth when the time scales were greater than 12 months (P<0.05). The accuracy of fractional vegetation coverage prediction based on MEMD (R2=0.73) was better than that of the stepwise multivariate regression directly using the original data (R2=0.67). Temperature and potential evapotranspiration were the predominant factors in predicting fractional vegetation coverage. This study can provide a scientific basis for regional vegetation restoration and sustainable development of ecological environment.


Key words: fractional vegetation coverage, pixel dichotomy model, multivariate empirical mode decomposition, multiscale, climate change