Vegetation Influences on Cloud Cover in Typical Plain and Plateau Regions of Eurasia: 2001–2021
Abstract
:1. Introduction
2. Materials and methods
2.1. Study Area
2.2. Datasets
2.2.1. Land Cover and Vegetation Data
2.2.2. Environmental Conditions, Heat Fluxes, and Surface Properties Data
2.2.3. Elevation Data
2.3. Methods
2.3.1. Regression Methods
2.3.2. The 10-Fold Cross-Validation
2.3.3. The Relative Contribution of Each Factor to TCC
2.3.4. K-Means Clustering
2.3.5. The Influence of LAI on the Factor Contribution
3. Results and Discussion
3.1. Temporal—Spatial Variations of TCC and LAI
3.2. The Relative Contribution of Different Factors to TCC
3.2.1. The Relative Contribution of LAI and Heat Fluxes
3.2.2. The Relative Contribution of Environmental Conditions
3.2.3. The Relative Contribution of Surface Properties
3.3. The Regulatory Role of Vegetation
3.3.1. The Regulation of Vegetation to Cenvironment
3.3.2. The Regulation of Vegetation to Csurface
3.3.3. The Regulation of Vegetation to Cheat
3.4. A New Idea for Slowing Global Warming
3.5. Limitations and Future Perspectives
4. Conclusions
- (1)
- During 2001–2021, TCC decreased in EEP (−0.0024 month−1) and WSP (−0.0026 month−1), while it increased in MGP (0.0002 month−1) and NCP (0.0024 month−1).
- (2)
- The relative contribution of different factors to TCC was closely related to the climate and vegetation characteristics. In energy-limited (moisture-limited) areas, temperature (relative humidity) was more likely to be the factor that strongly contributed to TCC variation. In terms of energy allocation, the dry MGP tended to convert more heat into SSH rather than SLH to promote cloud formation. The contribution of LAI to TCC was higher in forest ecosystems due to the high LAI.
- (3)
- The case study shows that the contribution of other factors to TCC changed significantly with the increasing LAI, i.e., vegetation significantly regulated the contribution of other factors to TCC, but this regulation varied among ecosystems.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Lu, T.; Han, Y.; Zhou, Q.; Dong, L.; Zhang, Y.; Deng, X.; Xu, D. Vegetation Influences on Cloud Cover in Typical Plain and Plateau Regions of Eurasia: 2001–2021. Remote Sens. 2024, 16, 2048. https://doi.org/10.3390/rs16122048
Lu T, Han Y, Zhou Q, Dong L, Zhang Y, Deng X, Xu D. Vegetation Influences on Cloud Cover in Typical Plain and Plateau Regions of Eurasia: 2001–2021. Remote Sensing. 2024; 16(12):2048. https://doi.org/10.3390/rs16122048
Chicago/Turabian StyleLu, Tianwei, Yong Han, Qicheng Zhou, Li Dong, Yurong Zhang, Ximing Deng, and Danya Xu. 2024. "Vegetation Influences on Cloud Cover in Typical Plain and Plateau Regions of Eurasia: 2001–2021" Remote Sensing 16, no. 12: 2048. https://doi.org/10.3390/rs16122048
APA StyleLu, T., Han, Y., Zhou, Q., Dong, L., Zhang, Y., Deng, X., & Xu, D. (2024). Vegetation Influences on Cloud Cover in Typical Plain and Plateau Regions of Eurasia: 2001–2021. Remote Sensing, 16(12), 2048. https://doi.org/10.3390/rs16122048