Multi-Scale Remote Sensing Assessment of Ecological Environment Quality and Its Driving Factors in Watersheds: A Case Study of Huashan Creek Watershed in China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Collection and Processing
2.2.1. Options for Different Scales
2.2.2. RSEI
2.2.3. Characterization of RSEI
2.2.4. Spatial Autocorrelation Analyses
- (1)
- Global spatial autocorrelation (Global Moran’s I: MI)
- (2)
- Local spatial autocorrelation (Local Moran’s I: LI)
2.2.5. Driver Analysis
- (1)
- Driver selection
- (2)
- GWR
3. Result
3.1. Patterns of Spatial Differentiation in Ecosystem Quality at Multiple Scales
3.2. Spatially Dependent Characterization of Ecosystem Quality at Multiple Scales
3.2.1. Global Spatial Correlation Multi-Scale Spatial Response Characteristics of Remotely Sensed Ecological Quality
3.2.2. Local Spatial Correlation Multi-Scale Spatial Response Characteristics of Remotely Sensed Ecological Quality
3.3. Response and Difference Analysis of Multiscale Drivers of Remotely Sensed Ecological Quality
3.3.1. Local Spatial Correlation: Multi-Scale Spatial Response Characteristics of Remotely Sensed Ecological Quality
3.3.2. Analysis of Spatial Differences in Multi-Scale Remote Sensing Ecosystem Quality Drivers Based on GWR
4. Discussion
4.1. RSEI Response to Spatial Scales
4.2. Response of RSEI Drivers to Spatial Scales
4.2.1. Key Drivers of RSEI
4.2.2. Driven Response of RSEI at Different Scales
4.3. Selection of Scale
4.4. Policy Implications
4.5. Limitations and Prospects
5. Conclusions
- (1)
- Global autocorrelation revealed that the size and area information associated with the RSEI gradually transitioned from a complex-detailed to a more intuitive and clearer pattern as the scale resolution decreased. The fusion analysis of 240 m unit, rural, and watershed scales can not only encompass the rich information on RSEI spatial differences but can also provide data support and a more intuitive scientific assessment of the impacts of land use and water quality changes;
- (2)
- Local autocorrelation showed that RSEI exhibits relatively apparent spatial aggregation characteristics at different scales. The RSEI of the Huashan Creek watershed in 2020 was generally moderate. Areas with poor RSEI were concentrated in the built-up areas and riparian zones of the towns and cities in the central plain area. In contrast, areas with higher RSEI were concentrated in the western mountains with greater vegetation cover;
- (3)
- Using PCA, we identified five key factors affecting RSEI: DEM, POP, DisRoad, DisWater, and PD. Moreover, using GWR and controlling for confounding geographic factors, we found that human activities had a significant effect on environmental quality. The population was found to have a significant effect at all three scales. Elevation was significant at the administrative village level, while the patch landscape index significantly affected the grid and catchment scales. Complex interactions between natural features, land use, and socio-economic factors exacerbate the fragmentation of landscape patches, amplifying their effects on ecosystem quality in a non-linear manner. These complex interactions highlight the critical role of elevation, population, proximity to roads, and proximity to water bodies in shaping the ecological integrity of the region.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data Name | Data Source | Website | Date | Resolution |
---|---|---|---|---|
Landsat8 OLI | United States Geological Survey | https://earthexplorer.usgs.gov/ | Accessed on 1 May 2020. | 30 m |
Landcover data | GlobeLand30 Dataset | https://www.globallandcover.com/ | Accessed on 1 May 2020. | 30 m |
Population density data | Socio-economic Data and Applications Center | https://sedac.ciesin.columbia.edu/ | Accessed on 1 May 2020. | 1 km |
DEM | Geospatial Data Cloud | https://www.gscloud.cn/sources/ | Accessed on 1 May 2020. | 30 m |
Scope of Huashan Creek Watchment | Resource and Environment Science and Data Center | https://www.resdc.cn | Accessed on 1 May 2020. | - |
Index | Formula | Explanation |
---|---|---|
WET | β1Bblue + β2Bgreen + β3Bred + β4Bnir + β5Bswir1 + β6Bswir2 | Bblue, Bgreen, Bred, Bnir, Bswir1, Bswir2represent the blue (0.45–0.51 µm), green (0.53–0.59 µm), red (0.64–0.67 µm), near-infrared (0.85–0.88 µm), short-wave infrared 1 (1.57–1.65 µm) and short-wave infrared 2 (2.11–2.29 µm) bands of Landsat 5 TM and Landsat 8 OLI/TIRS, respectively. βi is the corresponding band parameter [35,36]; |
NDVI | (Bnir − Bred)/(Bnir + Bred) | |
NDSI | (SI + IBI)/2 | SI and IBI represent soil index and building index respectively [37]; |
LST | K1/ln(K1/D(t) + 1) | K1 and D(t) represent Planck’s constant and the radiative luminosity of a blackbody [38]; |
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Liao, Y.; Wu, G.; Zhang, Z. Multi-Scale Remote Sensing Assessment of Ecological Environment Quality and Its Driving Factors in Watersheds: A Case Study of Huashan Creek Watershed in China. Remote Sens. 2023, 15, 5633. https://doi.org/10.3390/rs15245633
Liao Y, Wu G, Zhang Z. Multi-Scale Remote Sensing Assessment of Ecological Environment Quality and Its Driving Factors in Watersheds: A Case Study of Huashan Creek Watershed in China. Remote Sensing. 2023; 15(24):5633. https://doi.org/10.3390/rs15245633
Chicago/Turabian StyleLiao, Yajing, Guirong Wu, and Zhenyu Zhang. 2023. "Multi-Scale Remote Sensing Assessment of Ecological Environment Quality and Its Driving Factors in Watersheds: A Case Study of Huashan Creek Watershed in China" Remote Sensing 15, no. 24: 5633. https://doi.org/10.3390/rs15245633
APA StyleLiao, Y., Wu, G., & Zhang, Z. (2023). Multi-Scale Remote Sensing Assessment of Ecological Environment Quality and Its Driving Factors in Watersheds: A Case Study of Huashan Creek Watershed in China. Remote Sensing, 15(24), 5633. https://doi.org/10.3390/rs15245633