Quantitative Model Construction for Sustainable Security Patterns in Social–Ecological Links Using Remote Sensing and Machine Learning
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources and Processing
2.3. Research Framework
2.4. Research Methods
2.4.1. Resistance Surface Construction Model Based on Sensitivity Evaluation
- (1)
- Establishment of ESA Indicators
Type | Indicator | Research Method |
---|---|---|
NES | Elevation | DEM data |
Aspect | Surface analysis from DEM data | |
RDLS | where R represents relief degree of land surface (RDLS), Hmax is the maximum elevation value within the area, and Hmin is the minimum elevation value within the area | |
River | Euclidean distance from water source | |
NDVI | where NIR and R represent the reflectance values at near-infrared and red bands, respectively [57] | |
SES | Land use | Land-use data of Yangxian from the 2019 Third National Land Survey Database |
Population | where D denotes population density, P is the population quantity in the study area, and S is the study area’s size [58] | |
Residential land | Euclidean distance from residential areas | |
Urban construction | where U represents the modified slope data, and ∫([Elevation], [Slope]) represents the function that relates the elevation, relief and slope values to the modified slope data [59,60] | |
Village construction | where V represents the modified slope data, and the function ∫([Elevation], [Slope]) represents the relationship between elevation and slope that determines the modified slope values [59,60] | |
ESS | Ecological redlines | Euclidean distance from ecological redlines |
Landscape resources | Euclidean distance from landscape resources | |
Geological disaster | where G represents the density of disaster points, N represents the total number of disaster points, and S represents the total area of the study region [61] | |
Soil erosion | Where, W1, W2, W3, W4, and W5 are the corresponding weight of indicators F1, F2, F3, F4, and F5 are the indicators, namely Slope, Profile curvature, and Surface roughness, and Euclidean distance of valley network i represents the index of each indicator value [62] | |
Flood risk | Inundation analysis [63] |
- (2)
- Sensitivity Level Classification and Scoring
- (3)
- Construction of a resistance surface based on sensitivity evaluation
2.4.2. Determining Weights Using ML and AHP–PCA Methods
2.4.3. Constructing ESPs Using the MCR Model
2.4.4. Integrated Urban–Rural Planning Model Based on ESA and ESP
3. Results and Analysis
3.1. Weight Determination Using the Combined AHP–PCA Method Based on ML
3.2. ESA
3.2.1. Single-Factor for ESA
3.2.2. Comprehensive ESA
3.3. Constructing an Ecological Network Based on the MCR model
3.3.1. Ecological Sources Identification
3.3.2. Ecological Corridor Identification
3.3.3. Ecological Node Identification
3.3.4. ESPs Construction
3.4. Coordinated Urban–Rural Development Strategy
3.4.1. Urban–Rural Coordinated Planning Model Based on ESAs and ESPs
3.4.2. Optimization Plan for ESP
4. Discussion
5. Conclusions
- (1)
- Combination of the AHP–PCA weighting method based on ML helps to address uncertainty in weight determination. The research area in Yangxian was subdivided based on current development conditions, and weights were determined using a combination of subjective and objective criteria to ensure accurate results and provide a reference for land spatial planning revisions;
- (2)
- The ESP network in Yangxian of in the Qinling Mountain area was constructed based on ESAs by using RS, GISs, and MCR methods. The ecological node and corridor density in the northern part of Yangxian is significantly higher than in the southern part, indicating a clear imbalance. Therefore, there is an urgent need to optimize the regional space;
- (3)
- The quantitative analysis model of Yangxian, integrating ESAs, ESPs, and ADs, serves as a foundation for planning and management. The ecological advantages of different ADs were investigated by analyzing the relationship between ESAs and ADs. The analysis explored the integrity and stability of different ADs’ ecosystems by examining the relationship between ADs and ESPs. The relationship between ESPs and ESAs was also analyzed to provide comprehensive decision support for ecological conservation and management.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Acronyms | Constituent | Definition/Explanation |
---|---|---|
RS | Remote Sensing | The acquisition and interpretation of information about the Earth’s surface using satellite or airborne sensors. |
ML | Machine Learning | A field of study that focuses on the development of algorithms and statistical models that enable computer systems to learn from and make predictions or decisions based on data. |
GISs | Geographic Information Systems | Technology systems used for capturing, storing, managing, analyzing, and displaying spatial data. |
AHP | Analytic Hierarchy Process | A method used to support decision making and evaluate multiple criteria and factors. It decomposes complex decision problems into a hierarchical structure and uses quantitative and qualitative criteria for comparison and trade-off, ultimately arriving at the optimal choice. |
PCA | Principal Component Analysis | A commonly used statistical technique for dimensionality reduction and revealing major patterns and variations within data. By projecting the original data onto a new co-ordinate system, PCA identifies the most significant principal components, thereby simplifying the dataset and providing clearer interpretation and visualization. |
ESPs | Ecological Security Patterns | Describes the sustainable security patterns in social–ecological linkages. |
ES | Ecological Sensitivity | An indicator used to measure the sensitivity of a specific area to environmental changes. |
NES | Natural Environment Sensitivity | An indicator that measures the sensitivity of a specific area to changes in the natural environment. It involves aspects such as elevation, aspect, relief degree of land surface (RDLS), and the river and normalized difference vegetation index (NDVI). |
SES | Socioeconomic Sensitivity | An indicator that measures the sensitivity of a specific area to socioeconomic changes. It involves aspects such as land use, population, residential land, condition of urban construction, and condition of village construction. |
ESS | Ecological Security Sensitivity | An indicator that measures the sensitivity of a specific area to ecological security issues. It involves aspects such as ecological redlines, landscape resources, geological disaster, soil erosion, and flood risk. |
CES | Comprehensive Ecological Sensitivity | A comprehensive assessment of ecological sensitivity in Yangxian, considering various factors, such as NES, SES, and ESS. |
ADs | Administrative Districts | Administrative regions or units within a specific geographic area, such as Yangxian. |
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Type | Indicator | Grading/Assignment | ||||
---|---|---|---|---|---|---|
Insensitive/1 | Lightly Sensitive/3 | Moderately Sensitive/5 | Highly Sensitive/7 | Extremely Sensitive/9 | ||
NES | Elevation (m) | <703 | 703–1025 | 1025–1389 | 1389–1848 | >3020 |
Aspect (°) | Flat | Shady | Half shady | Half sunny | Sunny | |
RDLS (m) | 0–60 | 60–120 | 120–200 | 200-280 | >280 | |
River (m) | 1500–4252 | 1000–1500 | 500–1000 | 200–500 | 0–200 | |
NDVI | −0.195–0.2752 | 0.2752–0.4447 | 0.4447–0.5435 | 0.5435–0.6235 | 0.6235–0.849 | |
SES | Land use | Construction land, unused land | Farmland, general water | Shrubland, grassland, orchard | Forest- land | Waters, wetland, bare land |
Population (people/km2) | 6.4194–8.4508 | 4.6852–6.4194 | 2.6720–4.6852 | 1.5118–2.6720 | 1.2834–1.5118 | |
Residential land (m) | 0–100 | 100–300 | 300–500 | 500–1000 | >1000 | |
Urban construction | ES | HS | MS | BS | US | |
Village construction | ES | HS | MS | BS | US | |
ESS | Ecological redlines (m) | >2000 | 1500–2000 | 1000–1500 | 500–1000 | 0–500 |
Landscape resource (m) | >2000 | 1000–2000 | 500–1000 | 200–500 | 0–200 | |
Geological disaster (count/km2) | 0.0000–0.0091 | 0.0091–0.0326 | 0.0326–0.0677 | 0.0677–0.1341 | 0.1341–0.2671 | |
Soil erosion | 1–2.02 | 2.02–2.459 | 2.459–2.867 | 2.867–3.322 | 3.322–5 | |
Flood risk (m) | >700 m | 600–700 m | 500–600 m | 400–500 m | <400 m |
Sensitivity Evaluation Score | Ecological Sensitivity Level | Ecological Resistance Coefficient |
---|---|---|
1 | Insensitive | 1 |
3 | Lightly sensitive | 2 |
5 | Moderately sensitive | 3 |
7 | Highly sensitive | 4 |
9 | Extremely sensitive | 5 |
Criterion | WAHP | Indicator | WAHP | WPCA | W* | Final Weight |
---|---|---|---|---|---|---|
NES | 0.3325 | Elevation | 0.0785 | 0.2186 | 0.1123 | 0.0373 |
Aspect | 0.1648 | 0.2749 | 0.2966 | 0.0986 | ||
RDLS | 0.1165 | 0.2056 | 0.1567 | 0.0521 | ||
River | 0.4405 | 0.0260 | 0.0750 | 0.0249 | ||
NDVI | 0.1997 | 0.2749 | 0.3594 | 0.1195 | ||
SES | 0.1397 | Land use | 0.469 | 0.0655 | 0.1802 | 0.0252 |
Population | 0.0927 | 0.3088 | 0.1680 | 0.0235 | ||
Residential land | 0.0525 | 0.0687 | 0.0212 | 0.0030 | ||
Urban construction | 0.158 | 0.2781 | 0.2578 | 0.0360 | ||
Village construction | 0.2278 | 0.2789 | 0.3728 | 0.0521 | ||
ESS | 0.5278 | Ecological redlines | 0.3858 | 0.1489 | 0.3076 | 0.1624 |
Landscape resources | 0.156 | 0.2887 | 0.2413 | 0.1273 | ||
Geological disaster | 0.0894 | 0.1647 | 0.0789 | 0.0416 | ||
Soil erosion | 0.2115 | 0.1278 | 0.1448 | 0.0764 | ||
Flood risk | 0.1573 | 0.2699 | 0.2274 | 0.1200 |
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Liu, L.; Chen, M.; Luo, P.; Duan, W.; Hu, M. Quantitative Model Construction for Sustainable Security Patterns in Social–Ecological Links Using Remote Sensing and Machine Learning. Remote Sens. 2023, 15, 3837. https://doi.org/10.3390/rs15153837
Liu L, Chen M, Luo P, Duan W, Hu M. Quantitative Model Construction for Sustainable Security Patterns in Social–Ecological Links Using Remote Sensing and Machine Learning. Remote Sensing. 2023; 15(15):3837. https://doi.org/10.3390/rs15153837
Chicago/Turabian StyleLiu, Lili, Meng Chen, Pingping Luo, Weili Duan, and Maochuan Hu. 2023. "Quantitative Model Construction for Sustainable Security Patterns in Social–Ecological Links Using Remote Sensing and Machine Learning" Remote Sensing 15, no. 15: 3837. https://doi.org/10.3390/rs15153837
APA StyleLiu, L., Chen, M., Luo, P., Duan, W., & Hu, M. (2023). Quantitative Model Construction for Sustainable Security Patterns in Social–Ecological Links Using Remote Sensing and Machine Learning. Remote Sensing, 15(15), 3837. https://doi.org/10.3390/rs15153837