NDVI Characteristics and Influencing Factors of Typical Ecosystems in the Semi-Arid Region of Northern China: A Case Study of the Hulunbuir Grassland
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data and Preprocessing
2.2.1. Spatial Data
2.2.2. Environmental Data
2.3. Research Method
- 1.
- Normalized Difference Vegetation Index
- 2.
- Correlation analysis
- 3.
- Redundancy analysis
3. Results
3.1. Statistical Characteristics of NDVI in Each Typical Ecosystem
3.2. Spatial Distribution of NDVI in Each Typical Ecosystem
3.3. Dominant Driving Factors of NDVI
3.3.1. Correlation Analysis of Driving Factors
3.3.2. RDA for Driving Factors
3.4. The Influence of the Dominant Driving Factors on Each Typical Ecosystem’s NDVI
4. Discussion
4.1. Differences among Three Ecosystems
4.2. Influence of Dominant Driving Factors
5. Conclusions
- There were significant differences in NDVI among the three ecosystems, showing wetland plain NDVI > meadow NDVI > sand ribbon NDVI. The data distribution of floodplain wetland conformed to the normal distribution, indicating that vegetation was in a state of natural growth, while meadow and sand ribbon were greatly affected by external interference, presenting a skewed distribution. The multi-year maximum value composite showed a spatial differentiation in that most NDVI values were greater than 0.5 in the floodplain wetland, 0.3–0.5 in the meadow, and less than 0.3 in the sand ribbon ecosystems. The spatial distribution of NDVI was similar to that of altitude.
- The synergistic dominant driving factors of NDVI at the significant level were phenological period, mean relative humidity, average temperature, accumulated precipitation in the first seven days, runoff, and amount of evaporation, which explained 68.8% of the variation of NDVI. The common factors among the three systems were phenological period, precipitation, and humidity. The personalized difference was shown in temperature, runoff, and the response to precipitation aging. The temperature of the floodplain wetland was relatively high, the recharge effect of runoff on the meadow was more remarkable, and the sand ribbon had a significant immediate response to precipitation.
- Among the six dominant factors, phenological period and relative humidity had a significant influence on NDVI and were positively correlated with the three systems. Runoff had little influence, and there was no clear pattern in the data. The responses of temperature, precipitation, and evaporation to the extreme value were strong. The greater the precipitation, the more the NDVI values increased. Temperature and evaporation both increased NDVI within a certain range, but beyond a certain threshold, the opposite effect may occur, influenced by a combination of other factors.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data | Product|Sensor | Track Number | Period | Count |
---|---|---|---|---|
DEM | ASTER GDEMV2 | 118/049 & 119/049 | 2011 | 2 |
Landsat 5 | TM | 123/026 | 1990–2011 | 36 |
Landsat 7 | ETM+ | 123/026 | 1999–2012 | 13 |
Landsat 8 | OLI_TIRS | 123/026 | 2013–2020 | 21 |
Category | Environmental Data | Frequency | Units | Source |
---|---|---|---|---|
Moisture | Accumulated precipitation in the first three days | 3-Day | mm | Hailar meteorological station |
The maximum precipitation in the first three days | ||||
Accumulated precipitation in the first seven days | 7-Day | |||
The maximum precipitation in the first seven days | ||||
Accumulated precipitation in the first fifteen days | 15-Day | |||
The maximum precipitation in the first fifteen days | ||||
Mean relative humidity | Daily | % | ||
Runoff | Daily | m3 | Hailar hydrological station | |
Temperature | Average temperature | Daily | °C | Hailar meteorological station |
Average ground temperature | ||||
Insolation duration | h | |||
Amount of evaporation | mm | |||
Average wind speed | m/s | |||
Time | Phenological period | 10-Day | - | - |
Driving Factors | Floodplain Wetland | Meadow | Sand Ribbon |
---|---|---|---|
Accumulated precipitation in the first three days | 0.239 * | 0.316 ** | 0.348 ** |
The maximum precipitation in the first three days | 0.227 | 0.305 * | 0.328 ** |
Accumulated precipitation in the first seven days | 0.468 ** | 0.478 ** | 0.483 ** |
The maximum precipitation in the first seven days | 0.405 ** | 0.424 ** | 0.432 ** |
Accumulated precipitation in the first fifteen days | 0.452 ** | 0.445 ** | 0.460 ** |
The maximum precipitation in the first fifteen days | 0.324 ** | 0.299 * | 0.322 ** |
Phenological period | 0.758 ** | 0.608 ** | 0.639 ** |
Runoff | 0.122 | 0.246 * | 0.202 |
Average temperature | 0.540 ** | 0.315 ** | 0.295 * |
Insolation duration | 0.249 * | 0.127 | 0.090 |
Average ground temperature | 0.526 ** | 0.294 * | 0.260 * |
Mean relative humidity | 0.409 ** | 0.524 ** | 0.529 ** |
Amount of evaporation | 0.115 | 0.004 | −0.036 |
Average wind speed | −0.260 * | −0.203 | −0.192 |
The Most Important Factor and Its Correlation | The Second Important Factor and Its Correlation | ||||||
---|---|---|---|---|---|---|---|
Factor | Pearson Correlation | p | Factor | Pearson Correlation | p | ||
A Phenophase | Floodplain wetland | Accumulated precipitation in the first 3 days | 0.832 * | 0.010 | Amount of evaporation | 0.535 | 0.172 |
Meadow | 0.953 ** | 0.000 | 0.723 * | 0.043 | |||
Sand ribbon | 0.951 ** | 0.000 | 0.795 * | 0.018 | |||
B Phenophase | Floodplain wetland | Average ground temperature | 0.604 * | 0.017 | Insolation duration | 0.847 ** | 0.000 |
Meadow | 0.533 * | 0.041 | 0.740 ** | 0.002 | |||
Sand ribbon | 0.458 | 0.086 | 0.683 ** | 0.005 | |||
D Phenophase | Floodplain wetland | Accumulated precipitation in the first 7 days | 0.652 ** | 0.008 | Mean relative humidity | 0.434 | 0.106 |
Meadow | 0.623 * | 0.013 | 0.631 * | 0.012 | |||
Sand ribbon | 0.635 * | 0.011 | 0.541 * | 0.037 | |||
E Phenophase | Floodplain wetland | Mean relative humidity | 0.746 ** | 0.000 | Runoff | 0.573 * | 0.010 |
Meadow | 0.792 ** | 0.000 | 0.706 ** | 0.001 | |||
Sand ribbon | 0.802 ** | 0.000 | 0.573 * | 0.010 |
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Zhao, Y.; Hu, C.; Dong, X.; Li, J. NDVI Characteristics and Influencing Factors of Typical Ecosystems in the Semi-Arid Region of Northern China: A Case Study of the Hulunbuir Grassland. Land 2023, 12, 713. https://doi.org/10.3390/land12030713
Zhao Y, Hu C, Dong X, Li J. NDVI Characteristics and Influencing Factors of Typical Ecosystems in the Semi-Arid Region of Northern China: A Case Study of the Hulunbuir Grassland. Land. 2023; 12(3):713. https://doi.org/10.3390/land12030713
Chicago/Turabian StyleZhao, Yating, Chunming Hu, Xi Dong, and Jun Li. 2023. "NDVI Characteristics and Influencing Factors of Typical Ecosystems in the Semi-Arid Region of Northern China: A Case Study of the Hulunbuir Grassland" Land 12, no. 3: 713. https://doi.org/10.3390/land12030713
APA StyleZhao, Y., Hu, C., Dong, X., & Li, J. (2023). NDVI Characteristics and Influencing Factors of Typical Ecosystems in the Semi-Arid Region of Northern China: A Case Study of the Hulunbuir Grassland. Land, 12(3), 713. https://doi.org/10.3390/land12030713