Changing Climate–Productivity Relationships: Nonlinear Trends and State-Dependent Sensitivities in Eurasian Grasslands
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources
2.2.1. ANPP Data
2.2.2. Climatic Variables
2.3. Methods
2.3.1. Trend Analysis of ANPP and Climatic Factors
2.3.2. Correlation Analysis Between Vegetation Dynamics and Climate Change
3. Results
3.1. Dynamics of Regional-Scale ANPP and Its Relationships with Climatic Factors
3.1.1. Interannual Trends in Regional-Scale ANPP and Climatic Factors
3.1.2. Correlations Between Regional-Scale ANPP Dynamics and Climatic Factors
3.2. Spatial ANPP Trend Patterns
3.3. Spatial Patterns of Correlations Between ANPP and Climatic Factors
4. Discussion
4.1. Nonlinear Trajectories of ANPP and Underlying Hydrothermal Driving Mechanisms
4.2. Non-Stationarity and State-Dependent Characteristics of ANPP Climate Sensitivity
4.3. Spatiotemporal Heterogeneity of ANPP Dynamics and Climate Driving Mechanisms
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| EASR | the Eurasian steppe region |
| LOWESS | locally weighted scatterplot smoothing |
| PLS | piecewise linear regression |
| ANPP | aboveground net primary productivity |
| MAP | mean annual precipitation |
| MAT | mean annual temperature |
| CC | cloud cover |
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| SI (%) | INSI (%) | SD (%) | INSD (%) | |
|---|---|---|---|---|
| 1982–2015 | 32.3 | 29.9 | 12.6 | 25.2 |
| 1982–1994 | 39.7 | 48.8 | 0.7 | 10.8 |
| 1994–2008 | 6.1 | 31.9 | 17.9 | 44.2 |
| 2008–2015 | 14.9 | 53.5 | 3.4 | 28.2 |
| 1982–2015 | 1982–1994 | 1994–2008 | 2008–2015 | ||
|---|---|---|---|---|---|
| MAP | positive correlation | 90.43 (56.93) | 84.67 (30.85) | 83.26 (29.84) | 76.4 (4.02) |
| negative correlation | 9.57 (0.84) | 15.33 (0.38) | 16.74 (0.62) | 23.6 (0.18) | |
| MAT | positive correlation | 57.77 (12.28) | 50.6 (3.55) | 45.82 (1.75) | 52.55 (0.89) |
| negative correlation | 42.23 (6.71) | 49.40 (3.28) | 54.17 (5.31) | 47.44 (0.47) | |
| CC | positive correlation | 54.16 (9.28) | 40.84 (1.87) | 48.71 (2.60) | 42.23 (0.50) |
| negative correlation | 45.84 (5.99) | 59.16 (5.55) | 51.29 (2.88) | 57.77 (0.86) |
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Jiao, C.; Zou, S.; Xu, D.; Yi, X.; Li, Q. Changing Climate–Productivity Relationships: Nonlinear Trends and State-Dependent Sensitivities in Eurasian Grasslands. Diversity 2026, 18, 77. https://doi.org/10.3390/d18020077
Jiao C, Zou S, Xu D, Yi X, Li Q. Changing Climate–Productivity Relationships: Nonlinear Trends and State-Dependent Sensitivities in Eurasian Grasslands. Diversity. 2026; 18(2):77. https://doi.org/10.3390/d18020077
Chicago/Turabian StyleJiao, Cuicui, Shenqi Zou, Dongbao Xu, Xiaobo Yi, and Qingxiang Li. 2026. "Changing Climate–Productivity Relationships: Nonlinear Trends and State-Dependent Sensitivities in Eurasian Grasslands" Diversity 18, no. 2: 77. https://doi.org/10.3390/d18020077
APA StyleJiao, C., Zou, S., Xu, D., Yi, X., & Li, Q. (2026). Changing Climate–Productivity Relationships: Nonlinear Trends and State-Dependent Sensitivities in Eurasian Grasslands. Diversity, 18(2), 77. https://doi.org/10.3390/d18020077
