How to Optimize High-Value GEP Areas to Identify Key Areas for Protection and Restoration: The Integration of Ecology and Complex Networks
Abstract
:1. Introduction
2. Study Area and Data Sources
2.1. Study Area
2.2. Data Sources
3. Methods
3.1. Ecological Network (EN) Construction
3.1.1. Selection of Ecological Source
3.1.2. Resistance Surface Construction
3.1.3. Identification of Ecological Corridor
3.2. Optimization of Ecological Network
3.3. Analysis of Complex Networks
3.3.1. Analysis of Network Topological Attributes
3.3.2. Calculation of Connectivity within Modules () and Connectivity between Modules ()
3.3.3. Network Robustness Evaluation
4. Results
4.1. Ecological Network Construction
4.1.1. Initial Ecological Source
4.1.2. Construction of Resistance Surface
4.1.3. Initial Ecological Corridor
4.2. Enhancement and Optimization of the Ecological Network
4.2.1. Optimization Strategy
4.2.2. Comparison of GEP before and after Optimization
4.3. Priority Areas for Protection and Restoration
4.3.1. Module Connectivity Calculation
4.3.2. Priority Areas for Protection and Restoration
4.4. Complex Network Analysis
4.4.1. Analysis of Network Topology before and after Optimization
4.4.2. Comparison of Network Anti-Attack Ability before and after Optimization
5. Discussion
5.1. Designing Biodiversity Protection Measures in Combination with an Ecological Network
5.2. Identification of Protection Priority Areas and Key Corridors
5.3. Using the Insight of Protection Strategies in Future Planning
5.4. Optimization Strategy
5.5. Research on Existing Uncertainties and Problems
6. Conclusions
- (1)
- There are 456 original ecological sources in Guangxi, based on GEP extraction, with a total area of 51,860.55 km2, which represents 41.93% of the GEP in Guangxi. The northeast and the mountainous regions of the southwest are where the majority of the sources are found. There are 1219 ecological corridors, 168 ecological barriers, 83 ecological pinch points, and 71 stepping stones connecting patches in ecological source areas.
- (2)
- There are 778 ecological sources after optimization, and the attached GEP value reaches USD 163.78 billion, an increase of 13.33% compared with that before optimization. The area was increased by 22,090 km2. After optimization, there are 2078 ecological corridors with a combined length of 23,922.07 km, which improves the distribution of the corridors’ complexity and increases the network’s overall density.
- (3)
- The priority areas for protection are distributed throughout a large area, with a total area of 50,869.97 km2 and a GEP of USD 118 billion. The priority areas for restoration are scattered throughout small patches, with a total area of 22,090 km2 and a GEP of USD 19.27 billion. In addition, 1018 key ecological corridors were identified, with a total length of 12,537.91 km.
- (4)
- Taking patches of ecological sources as nodes and corridors as edges, the complex network analysis shows that the optimized network connectivity and information transmission ability are improved, and the robustness of edge recovery, node recovery, and connection are improved. Among them, the improvement in robustness under random attack is the most remarkable.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Item | Describe | Biophysical Quantities | Method | Value Quantity | Method | Note |
---|---|---|---|---|---|---|
Water Conservation Service (WCS) | , annual evapotranspiration ()). | Water Balance Equation | Shadow engineering method | The ratio of the annual fixed investment in water conservancy in Guangxi to the reservoir construction capacity is taken as the price of the reservoir construction project. | ||
Soil Conservation Service (SCS) | ) of vegetation by the quantitative model of soil loss | Universal Soil Loss Equation (USLE) | Replacement cost method | The ratio of the investment in comprehensive soil erosion control in the small watershed of Guangxi to the area of the soil erosion control is taken as the price of the soil erosion control project. | ||
Carbon Sequestration and Oxygen Release Services (C/O) | ) and oxygen release () are calculated. | Remote sensing inversion, model simulation, and measured data | Market price method | Economic prices are carbon trading price and industrial oxygen price respectively. | ||
Habitat Provision (HP) | Estimation of biological distribution quantity based on habitat quality and habitat scarcity () | Estimation of biological distribution quantity | Shannon–Wiener index grade | The conservation value of species per unit area is taken as the price. |
Resistance Factor | 1 | 2 | 3 | 4 | 5 | Weight |
---|---|---|---|---|---|---|
DEM | −15–200 | 200–400 | 400–800 | 800–1200 | 1200–2113 | 0.056 |
Slope | 0–8 | 8–16 | 16–25 | 25–35 | 35–85 | 0.045 |
LULC | Forest | Grass/shrubs | Water | Cropland | Construction land | 0.320 |
Residential density | 0 | 0–15 | 15–30 | 30–45 | 45–62 | 0.137 |
Road distance (m) | 8000–17,000 | 5000–8000 | 3000–5000 | 0–3000 | 0 | 0.060 |
Water distance (m) | 0 | 0–3000 | 3000–5000 | 5000–8000 | 8000–22,000 | 0.140 |
Road density | 320–600 | 160–320 | 80–160 | 40–80 | 40 | 0.146 |
Water density | 0.05–10 | 10–20 | 20–30 | 30–40 | 40–60 | 0.037 |
NDVI | 0.75–0.9 | 0.6–0.75 | 0.45–0.6 | 0.3–0.45 | 0.05–0.3 | 0.094 |
Topological Attribute | Calculation Method | Describe | Note |
---|---|---|---|
Average degree | The relationship between the number of patches (nodes) and the number of patches (edges) | is the average degree. is the number of patches. is the number of patch edges. | |
Network diameter | ) | is the shortest distance from node to node . | |
Clustering coefficient | The degree of interconnection between adjacent points of a point. | The clustering coefficient is the ratio of the actual number of edges between neighboring nodes of a node to the total number of possible edges. | |
Eigenvector centrality | A measure of the transmission influence and connectivity between patches. | The center vector is the left eigenvector of the adjacency matrix associated with the eigenvalues . as the largest eigenvalue in the absolute value of the matrix . | |
Betweenness centrality | The number of times a node acts as a bridge for the shortest path between the other two nodes. | represents the center of the number of nodes . is the shortest paths from node to node through node , and is the shortest path from node to node . | |
Closeness centrality | Generally speaking, the distance between a transit patch and other patches is the shortest. | is the closeness centrality of node , and is used to calculate the number of direct connections between node () and other nodes. is the sum of the cell values of the corresponding rows or columns of nodes in the network matrix. |
LULC | Unoptimized | Optimized | ||
---|---|---|---|---|
Area (km2) | Proportion (%) | Area (km2) | Proportion (%) | |
Cropland | 1874.93 | 3.63 | 10,779.88 | 14.64 |
Forest | 49,052.03 | 94.91 | 60,485.25 | 82.14 |
Grassland | 571.71 | 1.11 | 1032.55 | 1.40 |
Shrub | 34.94 | 0.07 | 56.21 | 0.08 |
Water | 128.48 | 0.25 | 510.70 | 0.69 |
Construction land | 22.45 | 0.04 | 774.59 | 1.05 |
GEP | WCS | SCS | C/O | HP | ALL |
---|---|---|---|---|---|
Guangxi | 235.36 | 52.38 | 22.53 | 34.37 | 344.64 |
Unoptimized ecological source | 99.05 | 26.60 | 5.34 | 13.51 | 144.50 |
Optimized ecological source | 112.03 | 28.99 | 7.23 | 15.53 | 163.78 |
Add ecological source | 12.98 | 2.39 | 1.89 | 2.02 | 19.27 |
Modularity Index | Number of Nodes | Area (Km2) | WCS | SCS | C/O | HP | GEP (Billion USD) |
---|---|---|---|---|---|---|---|
Connectors | 285 | 8482.36 | 8.65 | 1.83 | 0.85 | 1.27 | 12.59 |
Module hubs | 56 | 16,978.72 | 23.87 | 6.36 | 1.77 | 3.79 | 35.79 |
Network hubs | 4 | 25,408.89 | 48.22 | 12.97 | 2.43 | 6.01 | 69.62 |
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Wang, L.; Wang, S.; Liang, X.; Jiang, X.; Wang, J.; Li, C.; Chang, S.; You, Y.; Su, K. How to Optimize High-Value GEP Areas to Identify Key Areas for Protection and Restoration: The Integration of Ecology and Complex Networks. Remote Sens. 2023, 15, 3420. https://doi.org/10.3390/rs15133420
Wang L, Wang S, Liang X, Jiang X, Wang J, Li C, Chang S, You Y, Su K. How to Optimize High-Value GEP Areas to Identify Key Areas for Protection and Restoration: The Integration of Ecology and Complex Networks. Remote Sensing. 2023; 15(13):3420. https://doi.org/10.3390/rs15133420
Chicago/Turabian StyleWang, Luying, Siyuan Wang, Xiaofei Liang, Xuebing Jiang, Jiping Wang, Chuang Li, Shihui Chang, Yongfa You, and Kai Su. 2023. "How to Optimize High-Value GEP Areas to Identify Key Areas for Protection and Restoration: The Integration of Ecology and Complex Networks" Remote Sensing 15, no. 13: 3420. https://doi.org/10.3390/rs15133420
APA StyleWang, L., Wang, S., Liang, X., Jiang, X., Wang, J., Li, C., Chang, S., You, Y., & Su, K. (2023). How to Optimize High-Value GEP Areas to Identify Key Areas for Protection and Restoration: The Integration of Ecology and Complex Networks. Remote Sensing, 15(13), 3420. https://doi.org/10.3390/rs15133420