TY - JOUR
T1 - Global dominance of seasonality in shaping lake-surface-extent dynamics
AU - Li, Luoqi
AU - Long, Di
AU - Wang, Yiming
AU - Woolway, R Iestyn
PY - 2025/6/12
Y1 - 2025/6/12
N2 - Lakes are crucial for ecosystems , greenhouse gas emissions and water resources , yet their surface-extent dynamics, particularly seasonality, remain poorly understood at continental to global scales owing to limitations in satellite observations . Although previous studies have focused on long-term changes , comprehensive assessments of seasonality have been constrained by trade-offs between spatial resolution and temporal resolution in single-source satellite data. Here we show that seasonality is the dominant driver of lake-surface-extent variations globally. By leveraging a deep-learning-based spatiotemporal fusion of MODIS and Landsat-based datasets, combined with high-performance computing, we achieved monthly mapping of 1.4 million lakes (2001-2023). Our approach yielded basin-level median user's and producer's accuracies of 93% and 96%, respectively, when validated against the Global Surface Water dataset . Seasonality-dominated lakes constitute 66% of the global lake area and approximately 60% of total lake counts, with over 90% of the world's population residing in regions where such lakes prevail. During seasonality-induced extreme events, the impacts can exceed the combined magnitude of 23-year long-term changes and regular seasonal variations, doubling the contraction of 42% of shrinking lakes and fully offsetting the expansion of 45% of growing lakes. These results uncover previously hidden seasonal dynamics that are crucial for understanding hydrospheric responses to environmental changes , protecting lacustrine systems and improving global climate models . Our findings underscore the importance of incorporating seasonality into future research and suggest that advancements in the fusion of multisource remote-sensing data offer a promising path forward. [Abstract copyright: © 2025. The Author(s), under exclusive licence to Springer Nature Limited.]
AB - Lakes are crucial for ecosystems , greenhouse gas emissions and water resources , yet their surface-extent dynamics, particularly seasonality, remain poorly understood at continental to global scales owing to limitations in satellite observations . Although previous studies have focused on long-term changes , comprehensive assessments of seasonality have been constrained by trade-offs between spatial resolution and temporal resolution in single-source satellite data. Here we show that seasonality is the dominant driver of lake-surface-extent variations globally. By leveraging a deep-learning-based spatiotemporal fusion of MODIS and Landsat-based datasets, combined with high-performance computing, we achieved monthly mapping of 1.4 million lakes (2001-2023). Our approach yielded basin-level median user's and producer's accuracies of 93% and 96%, respectively, when validated against the Global Surface Water dataset . Seasonality-dominated lakes constitute 66% of the global lake area and approximately 60% of total lake counts, with over 90% of the world's population residing in regions where such lakes prevail. During seasonality-induced extreme events, the impacts can exceed the combined magnitude of 23-year long-term changes and regular seasonal variations, doubling the contraction of 42% of shrinking lakes and fully offsetting the expansion of 45% of growing lakes. These results uncover previously hidden seasonal dynamics that are crucial for understanding hydrospheric responses to environmental changes , protecting lacustrine systems and improving global climate models . Our findings underscore the importance of incorporating seasonality into future research and suggest that advancements in the fusion of multisource remote-sensing data offer a promising path forward. [Abstract copyright: © 2025. The Author(s), under exclusive licence to Springer Nature Limited.]
U2 - 10.1038/s41586-025-09046-3
DO - 10.1038/s41586-025-09046-3
M3 - Article
C2 - 40437085
SN - 1476-4687
VL - 642
SP - 361
EP - 368
JO - Nature
JF - Nature
ER -