Publications

Zeng, YL; Hao, DL; Park, T; Zhu, P; Huete, A; Myneni, R; Knyazikhin, Y; Qi, JB; Nemani, RR; Li, F; Huang, JX; Gao, YY; Li, BG; Ji, FJ; Koehler, P; Frankenberg, C; Berry, JA; Chen, M (2023). Structural complexity biases vegetation greenness measures. NATURE ECOLOGY & EVOLUTION.

Abstract
Vegetation 'greenness' characterized by spectral vegetation indices (VIs) is an integrative measure of vegetation leaf abundance, biochemical properties and pigment composition. Surprisingly, satellite observations reveal that several major VIs over the US Corn Belt are higher than those over the Amazon rainforest, despite the forests having a greater leaf area. This contradicting pattern underscores the pressing need to understand the underlying drivers and their impacts to prevent misinterpretations. Here we show that macroscale shadows cast by complex forest structures result in lower greenness measures compared with those cast by structurally simple and homogeneous crops. The shadow-induced contradictory pattern of VIs is inevitable because most Earth-observing satellites do not view the Earth in the solar direction and thus view shadows due to the sun-sensor geometry. The shadow impacts have important implications for the interpretation of VIs and solar-induced chlorophyll fluorescence as measures of global vegetation changes. For instance, a land-conversion process from forests to crops over the Amazon shows notable increases in VIs despite a decrease in leaf area. Our findings highlight the importance of considering shadow impacts to accurately interpret remotely sensed VIs and solar-induced chlorophyll fluorescence for assessing global vegetation and its changes. Remote sensing often detects higher vegetation greenness for croplands than for forests, despite forests having a greater leaf area. This study shows that this is an artefact of shadows caused by forest structures and explores how to correct for this when interpreting global vegetation change data.

DOI:
10.1038/s41559-023-02187-6

ISSN: