Abstract

Satellite remote sensing of vegetation at regional to global scales is undertaken at considerable variations in solar zenith angle (SZA) across space and time, yet the extent to which these SZA variations matter for the retrieval of phenology remains largely unknown. Here we examined the effect of seasonal and spatial variations in SZA on retrieving vegetation phenology from time series of the Normalized Difference Vegetation Index (NDVI) and Enhanced Vegetation Index (EVI) across a study area in southeastern Australia encompassing forest, woodland, and grassland sites. The vegetation indices (VI) data span two years and are from the Advanced Himawari Imager (AHI), which is onboard the Japanese Himawari-8 geostationary satellite. The semi-empirical RossThick-LiSparse-Reciprocal (RTLSR) bidirectional reflectance distribution function (BRDF) model was inverted for each spectral band on a daily basis using 10-minute reflectances acquired by H-8 AHI at different sun-view geometries for each site. The inverted RTLSR model was then used to forward calculate surface reflectance at three constant SZAs (20°, 40°, 60°) and one seasonally varying SZA (local solar noon), all normalised to nadir view. Time series of NDVI and EVI adjusted to different SZAs at nadir view were then computed, from which phenological metrics such as start and end of growing season were retrieved. Results showed that NDVI sensitivity to SZA was on average nearly five times greater than EVI sensitivity. VI sensitivity to SZA also varied among sites (biome types) and phenological stages, with NDVI sensitivity being higher during the minimum greenness period than during the peak greenness period. Seasonal SZA variations altered the temporal profiles of both NDVI and EVI, with more pronounced differences in magnitude among NDVI time series normalised to different SZAs. When using VI time series that allowed SZA to vary at local solar noon, the uncertainties in estimating start, peak, end, and length of growing season introduced by local solar noon varying SZA VI time series, were 7.5, 3.7, 6.5, and 11.3 days for NDVI, and 10.4, 11.9, 6.5, and 8.4 days for EVI respectively, compared to VI time series normalised to a constant SZA. Furthermore, the stronger SZA dependency of NDVI compared with EVI, resulted in up to two times higher uncertainty in estimating annual integrated VI, a commonly used remote-sensing proxy for vegetation productivity. Since commonly used satellite products are not generally normalised to a constant sun-angle across space and time, future studies to assess the sun-angle effects on satellite applications in agriculture, ecology, environment, and carbon science are urgently needed. Measurements taken by new-generation geostationary (GEO) satellites offer an important opportunity to refine this assessment at finer temporal scales. In addition, studies are needed to evaluate the suitability of different BRDF models for normalising sun-angle across a broad spectrum of vegetation structure, phenological stages and geographic locations. Only through continuous investigations on how sun-angle variations affect spatiotemporal vegetation dynamics and what is the best strategy to deal with it, can we achieve a more quantitative remote sensing of true signals of vegetation change across the entire globe and through time.

Highlights

  • Resolving accurate vegetation dynamics not confounded by varying atmosphere condition, soil background, and sun-view geometry have been a long-running and prominent pursuit of the remote-sensing community [1,2,3,4,5,6,7,8]

  • The widely used MODerate Resolution Imaging Spectroradiometer (MODIS) surface reflectance (MOD09) [12], vegetation indices product (MOD13) [13] do not correct both view and illumination geometry, and the MCD43 nadir bidirectional reflectance distribution function (BRDF) adjusted reflectance (NBAR) product normalised to nadir view angle, still allows for sun-angle to vary at local solar noon across time [14]

  • Smaller solar zenith angle (SZA) resulted in lower Normalized Difference Vegetation Index (NDVI), with the magnitude of NDVIS-local solar noon (LSN) was close to that of NDVIS-20 due to the selection of the lowest SZA within each day to generate the NDVIS-LSN (Figure 5)

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Summary

Introduction

Resolving accurate vegetation dynamics not confounded by varying atmosphere condition, soil background, and sun-view geometry have been a long-running and prominent pursuit of the remote-sensing community [1,2,3,4,5,6,7,8]. To date we still do not know much about the extent of the uncertainty caused by sun-angle variation on surface reflectance and VIs and how this will be propagated to the retrieval of vegetation parameters, nor do we know if an optimal sun-angle correction approach, and a universal “best” sun-angle exists, across a broad spectrum of vegetation structural classes and latitudes. These knowledge gaps need to be confronted and filled by the remote-sensing community in order for the users in various sectors to more confidently use satellite measurements in their vegetation applications

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