中国农业气象 ›› 2026, Vol. 47 ›› Issue (6): 841-853.doi: 10.3969/j.issn.1000-6362.2026.06.003

• 农业生态环境栏目 • 上一篇    下一篇

贵州省日尺度NDVI时间序列重建法的差异对比

田桐桤,曾康,申选英,陈淋淋,刘绥华   

  1. 1. 贵州师范大学地理与环境科学学院,贵阳 550025;2. 贵州省山地资源与环境遥感应用重点实验室,贵阳 550025
  • 收稿日期:2025-05-23 出版日期:2026-06-20 发布日期:2026-06-18
  • 作者简介:田桐桤,E-mail:ttq84267@163.com
  • 基金资助:
    国家自然科学基金项目(42161029);贵州师范大学学术新苗基金项目(黔师新苗[2022]022号);贵州师范大学2024年省级大学生创新训练项目(S2024106631117);贵州师范大学地理与环境科学学院‘黄大年地理实验班’科研创新专项项目(2023009)

Differences Comparison of Daily-Scale NDVI Time Series Reconstruction Methods in Guizhou Province

TIAN Tong-qi, ZENG Kang, SHEN Xuan-ying, CHEN Lin-lin, LIU Sui-hua   

  1. 1. School of Geography and Environmental Science, Guizhou Normal University, Guiyang 550025, China; 2. Guizhou Mountain Resources and Environmental Remote Sensing Application Laboratory, Guiyang 550025
  • Received:2025-05-23 Online:2026-06-20 Published:2026-06-18

摘要:

日尺度的NDVI时间序列数据能更精细地反映植被在时间上的动态变化,贵州省受常年多云、多雾加之卫星重访周期等因素影响,使其日尺度NDVI时间序列数据严重受损。利用MOD09GQMYD09GQ的日尺度地表反射率产品,分别计算2023年贵州省日尺度NDVI时序数据并进行最大值合成,选取线性插值、SG滤波和Whittaker滤波时间序列重建法的三大类6种模型,其中SG滤波设置3组不同滑动时间窗口大小与多项式拟合系数组合,Whittaker滤波设置2组不同粗糙度系数,比较检验6种模型的单景和月尺度NDVI模拟效果,评价其在贵州省的重建空缺值能力、保真性、相关关系、拟合性能及重建精度。结果表明:6种模型对2023年贵州省日尺度NDVI时序数据的表现存在差异。Linear在重建空缺值能力方面表现最为出色,LinearSG_2_3保真性均展现了最佳性能,R2均达到1.000SG_3_5在月尺度与现有贵州省2023250250m逐月NDVI数据集相关关系最强,相关系数为0.557。就拟合性能与重建精度而言,SG_2_15方法最优,其模拟的NDVI年平均RMSEMAE分别为0.01380.0871可根据具体的应用需求和场景特点,灵活选择最适宜的技术路

关键词: 日尺度, Linear, SG滤波, Whittaker滤波, 贵州省

Abstract:

Dailyscale NDVI time series data can more precisely reflect the temporal dynamics of vegetation. However, the combination of persistent cloud cover and fog in Guizhou province with factors such as satellite revisit cycles has severely compromised its dailyscale NDVI time series data. In this study, dailyscale surface reflectance products from MOD09GQ and MYD09GQ were used to calculate the dailyscale NDVI time series data of Guizhou province in 2023, followed by maximum value compositing. 6 models belonging to three categories of time series reconstruction methodslinear interpolation, SavitzkyGolay (SG) filtering, and Whittaker filteringwere selected. Among them, the SG filter was configured with three different combinations of sliding time window sizes and polynomial fitting coefficients, while the Whittaker filtering was set with two different roughness parameters. The NDVI simulation effects of the 6 models at the single-scene and monthly scales were compared and verified to evaluate their performance in Guizhou province, including gapfilling capability, fidelity, correlation, fitting performance and reconstruction accuracy. The results showed that the 6 models exhibit differences in their performance on the dailyscale NDVI time series data of Guizhou province in 2023. The Linear interpolation performed the best in gapfilling capability. Both Linear interpolation and SG_2_3 demonstrated optimal fidelity with their R² values reaching 1.000. SG_3_5 showed the strongest correlation with the existing 2023 250m×250m monthly NDVI dataset for Guizhou province on a monthly scale, with a correlation coefficient (R) of 0.557. In terms of fitting performance and reconstruction accuracy, the SG_2_15 was the bestperforming method, with simulated NDVI annual average RMSE and MAE being 0.0138 and 0.0871, respectively. These findings indicate that each model has its own strengths, and the most suitable technical approach can be flexibly selected based on specific application requirements and scenario characteristics.

Key words: Daily-scale, Linear, SG filter, Whittaker filter, Guizhou province