TY - JOUR
T1 - Revealing subtle vegetation productivity dynamics in China via a reference-based framework
AU - Zhang, Shuyi
AU - Ci, Mengyao
AU - Zhang, Rui
AU - Tang, Hanxin
AU - Jin, Ziwen
AU - Zeng, Ke
AU - Wang, Yue
AU - Zhang, Jiarui
AU - Niu, Aoying
AU - Deng, Jie
AU - He, Honglin
AU - Liu, Min
N1 - Publisher Copyright:
© 2026 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
PY - 2026
Y1 - 2026
N2 - Vegetation productivity exhibits substantial spatiotemporal heterogeneity under the combined influence of climate change and anthropogenic disturbance. However, conventional long-term assessments focus on absolute changes, neglecting ecological heterogeneity and climatic confounding, thus limiting their utility for ecosystem management. From ecological and human activity perspectives, we established a reference-based framework using undisturbed ecosystems as ecological baselines, to detect subtle vegetation productivity dynamics across China between 2000 and 2020, capturing deviations between observed and reference productivity. The results showed that the RBRA significantly improved the detection of productivity declines, identifying a decline-affected area in China 39 percentage points larger than that of the CAA, particularly in temperate humid zones and northern regions with high human activity. By combining RBRA and CAA, four vegetation productivity change categories (sustained improvement, potential improvement, latent degradation, and sustained degradation) were identified. At the ecological zone level, the Tibetan Plateau emerged as the primary hotspot of relative decline (80.41%), while over 50% of the humid south-central region achieved sustained improvement. At the human activity zone level, high-intensity zones exhibited over 42% latent degradation, whereas low-intensity areas were dominated by sustained improvement (48–61%). Attribution analysis revealed that while climatic constraints remained the dominant drivers of vegetation productivity change, degradation risks driven by land-use change and economic expansion were more clearly captured by the RBRA framework, particularly in vulnerable and human-impacted regions. Overall, the reference-based framework enhances sensitivity to subtle vegetation change signals and provides a robust scientific basis for targeted conservation and adaptive ecosystem management.
AB - Vegetation productivity exhibits substantial spatiotemporal heterogeneity under the combined influence of climate change and anthropogenic disturbance. However, conventional long-term assessments focus on absolute changes, neglecting ecological heterogeneity and climatic confounding, thus limiting their utility for ecosystem management. From ecological and human activity perspectives, we established a reference-based framework using undisturbed ecosystems as ecological baselines, to detect subtle vegetation productivity dynamics across China between 2000 and 2020, capturing deviations between observed and reference productivity. The results showed that the RBRA significantly improved the detection of productivity declines, identifying a decline-affected area in China 39 percentage points larger than that of the CAA, particularly in temperate humid zones and northern regions with high human activity. By combining RBRA and CAA, four vegetation productivity change categories (sustained improvement, potential improvement, latent degradation, and sustained degradation) were identified. At the ecological zone level, the Tibetan Plateau emerged as the primary hotspot of relative decline (80.41%), while over 50% of the humid south-central region achieved sustained improvement. At the human activity zone level, high-intensity zones exhibited over 42% latent degradation, whereas low-intensity areas were dominated by sustained improvement (48–61%). Attribution analysis revealed that while climatic constraints remained the dominant drivers of vegetation productivity change, degradation risks driven by land-use change and economic expansion were more clearly captured by the RBRA framework, particularly in vulnerable and human-impacted regions. Overall, the reference-based framework enhances sensitivity to subtle vegetation change signals and provides a robust scientific basis for targeted conservation and adaptive ecosystem management.
KW - ecological zones
KW - gross primary production
KW - human activity zones
KW - long-term dynamics
KW - Reference-based
UR - https://www.scopus.com/pages/publications/105028116384
U2 - 10.1080/15481603.2026.2617775
DO - 10.1080/15481603.2026.2617775
M3 - 文章
AN - SCOPUS:105028116384
SN - 1548-1603
VL - 63
JO - GIScience and Remote Sensing
JF - GIScience and Remote Sensing
IS - 1
M1 - 2617775
ER -