Evolvement of Spatio-Temporal Pattern and Driving Forces Analysis of Ancient Trees Based on the Geographically Weighted Regression Model in Guangzhou and Foshan, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Sites
2.2. Data Sources
2.3. Research Methodology
2.3.1. Species Diversity Index
2.3.2. Kernel Density Estimation
2.3.3. Spatial Correlation Analysis
2.3.4. Ordinary Least Squares
2.3.5. Geographically Weighted Regression Models
3. Results
3.1. Composition and Spatial Distribution of Ancient Trees in Guangzhou and Foshan
3.1.1. Family and Species Composition of Ancient Trees
3.1.2. Age Distribution of Ancient Trees
3.1.3. Changes in the Increase or Decrease of Ancient Trees
3.1.4. Species Diversity of Ancient Trees
3.2. Evolution of Spatial Characteristics of Ancient Trees
3.2.1. Patterns of Spatial Agglomeration
3.2.2. Spatial Autocorrelation Analysis
3.3. Analysis of Differences in the Spatial Distribution of Ancient Trees
3.3.1. Driver Selection
3.3.2. Driving Factor Analysis Based on the GWR Model
3.3.3. Analysis of Factors Influencing the Spatial Differentiation of Ancient Trees
4. Discussion and Conclusions
4.1. Discussion
4.2. Conclusions
- (1)
- Ancient trees in Guangzhou and Foshan were mainly represented by broad-leaved species of evergreen dicotyledonous plants. The dominant families were Sapindaceae, Moraceae, Burseraceae, and Malvaceae. The dominant species were Litchi chinensis, Ficus microcarpa, Canarium pimela, Ficus virens, Dimocarpus longan, Castanopsis hystrix, Camphora officinarum, Schima superba, and Liquidambar formosana, belonging to the subtropical broad-leaved evergreen forests, which were representative of the vegetation of this community. They preserved the rare germplasm resources of the plant species in the wild to a certain extent, reflecting the fact that the study area is located in a biodiversity hotspot dominated by subtropical broad-leaved evergreen forests.
- (2)
- The species diversity of ancient trees in Guangzhou and Foshan increased in 2023. However, the number of ancient trees in Guangzhou showed negative growth, while Foshan experienced a significant increase. The Shannon diversity index of ancient trees in Guangzhou and Foshan showed the spatial distribution characteristics of high in the northeast, higher in the south-central part, and lower in the west and northwest. The distribution of different species in vegetation communities in Sanshui, Chancheng, and Shunde Districts of Foshan tended to be unbalanced, while the conservation status of ancient trees in Nanhai District tended to be better. Conghua District in Guangzhou preserves a large number of subtropical evergreen broad-leaved forest vegetation communities, relying on mountain ranges and hills, and is the area with the richest species diversity of ancient trees in Guangzhou and Foshan.
- (3)
- The kernel density of ancient tree distribution in Guangzhou and Foshan varied significantly, presenting a spatial distribution pattern of multiple clusters. The local clustering characteristics of ancient trees in Guangzhou and Foshan were remarkable, and the 56 existing ancient tree groups in Guangzhou presented a relatively clustered spatial distribution characteristic, which is closely related to the long history and culture of the region. With more than 700 ancient tree reserves in Nanhai District of Foshan being included in the third level of ancient trees due to their age, the concentration of ancient trees in the western part of Nanhai District has increased. Therefore, human-led land-use changes during rapid urbanization will affect habitat quality and spatial differentiation, contributing to changes in the spatial distribution pattern of ancient trees.
- (4)
- The GWR model effectively explained the influence of different driving factors on the heterogeneity of the spatial distribution of ancient trees in a region with highly coordinated natural, cultural, and social conditions. Artificial disturbance was a key factor affecting the spatial distribution of ancient trees in Guangzhou and Foshan. The distribution of ancient trees in Guangzhou was mainly influenced by both social and natural factors, while the distribution in Foshan was mainly driven by a combination of social and historical factors.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data Categories | Data Sources and Description |
---|---|
Ancient trees data | Information Management System for Ancient and Valuable Trees in Guangdong Province (http://gsmm.lyj.gd.gov.cn, accessed on 18 April 2018, and 5 April 2023.) |
Land-use data | Center for Resource and Environmental Sciences and Data, Chinese Academy of Sciences, 30 m resolution |
DEM data | Geospatial data cloud, 30 m resolution |
Point of interest data | Gaode Map Navigation |
Cultural heritage data | Plan for the Protection of Famous Historical and Cultural Cities (2020–2035) |
Nature reserve data | Planning of Nature Reserves in Guangdong Province (2021–2035) |
Demographic data | LandScan population dataset |
Water system and road data | Open Street Map |
City | Moran’s I Index | Z-Value | p-Value | |||
---|---|---|---|---|---|---|
2018 | 2023 | 2018 | 2023 | 2018 | 2023 | |
Guangzhou | 0.3468 | 0.3449 | 37.5950 | 33.5120 | <0.01 | <0.01 |
Foshan | 0.4234 | 0.1701 | 40.7015 | 7.0351 | <0.01 | <0.01 |
Category | Driving Factor (Units) | Meaning |
---|---|---|
Natural factor | Elevation (m) | Average elevation |
Slope (°) | Average slope | |
Attenuation (°) | Average attenuation | |
Distance to a water source (m) | Average minimum distance of ancient trees from rivers, canals, impoundments, and wetlands | |
Soil texture | Higher average topographic moisture index indicates higher soil moisture, which is categorized into clayey, loamy, and sandy soils according to the level of the index | |
Soil permeability | Soil permeability scores (scores of 9, 7, 5, 3, and 1 were assigned to the loosest, looser, medium, tighter, and most compact soils, respectively, and scores were tallied for each region) | |
Geologic environment | Geohazard risk score (scores of 5, 3, and 1 were assigned to low, medium, and high susceptibility to geohazards, respectively, counting risk scores for each region) | |
Growing environment | Growing environment score (5, 3, and 1 were assigned to good, medium, and poor growing environments, respectively, tallying the score for each region) | |
Nature reserves (%) | Percentage of the region covered by nature reserves | |
Wetlands (%) | Percentage of the region covered by wetlands | |
Woodlands (%) | Percentage of the region covered by woodlands | |
Croplands (%) | Percentage of the region covered by croplands | |
Orchard (%) | Percentage of the region covered by orchards | |
Human factor | Travel sight (pcs) | Number of tourist attractions |
Religious culture (pcs) | Number of shrines, temples, palaces, and churches | |
Unmovable cultural heritage (pcs) | Number of stone carvings, ancient tombs, ancient sites, ancient buildings, historical buildings, and important historical heritage and representative buildings of modern times | |
Historical and cultural blocks (pcs) | Number of historical and cultural blocks | |
Ancient village (pcs) | Number of ancient villages at the national and provincial levels | |
Social factor | Distance from roads (pcs) | Average minimum distance of ancient trees from urban roads |
Artificial disturbance (pcs) | Number of ancient trees for which aboveground protection or conservation and rehabilitation measures have been implemented | |
City parks (pcs) | Number of city parks | |
Funeral land (pcs) | Number of cemeteries, mausoleums, and funeral parlors | |
Economic intensity (pcs) | Number of hotels, transportation, shopping malls, homes, and businesses | |
Educational resources (pcs) | Number of kindergartens, elementary schools, secondary schools, vocational and technical education centers, and higher education and adult education centers | |
Population density (people/km2) | Average population density |
City | AICc | R2 | Calibration R2 |
---|---|---|---|
Guangzhou | 6936.626 | 0.874 | 0.755 |
Foshan | 798.757 | 0.873 | 0.841 |
Driving Factor | Guangzhou | Foshan | ||||||
---|---|---|---|---|---|---|---|---|
Min. | Median | Max. | Mean | Min. | Median | Max. | Mean | |
Elevation | −39.048 | 16.617 | 246.103 | 37.592 | — | — | — | — |
Geological environment | −107.610 | −5.685 | 10.445 | −30.890 | — | — | — | — |
Growing environment | — | — | — | — | −1.930 | −0.028 | 2.231 | 0.122 |
Nature reserves | −45.534 | −1.444 | 8.083 | −9.602 | −6.016 | −0.199 | 5.449 | 0.637 |
Wetlands | — | — | — | — | −1.985 | −0.231 | 1.230 | −0.364 |
Woodlands | −281.299 | 9.734 | 107.902 | 6.758 | — | — | — | — |
Immovable cultural heritage | — | — | — | — | 0.000 | 0.469 | 1.240 | 0.540 |
Historical and cultural blocks | — | — | — | — | −1.257 | 4.727 | 10.007 | 5.052 |
Distance from roads | — | — | — | — | −1.362 | 3.400 | 8.227 | 3.294 |
Artificial disturbance | 0.000 | 42.407 | 173.512 | 59.236 | 0.000 | 4.826 | 7.760 | 5.081 |
Economic intensity | −19.479 | 11.584 | 83.296 | 7.886 | — | — | — | — |
Educational resources | −4.202 | 10.838 | 53.532 | 18.741 | — | — | — | — |
Driving Factor | Guangzhou | Foshan |
---|---|---|
Elevation | The regression coefficient was high in the center and low in the surrounding region, and the high-value region was mainly distributed in Huangpu District. The southern part of the region is dominated by hilly terraces, and the complex topographic conditions limited the disorderly expansion of towns and reduced the intensity of human activities, which is conducive to protecting ancient trees. | Failed 95% significance test |
Geologic environment | The regression coefficient was low in the center and high in the surrounding area. Negative areas were concentrated in the south-central part of Huangpu District. In total, 88 soil collapses accumulated in Huangpu District from 2016 to 2020 [56], the geological environment was poor, and the risk to ancient trees was high. The district government set up inspection teams and used sensors and monitoring probes to understand the growth of ancient trees in real-time. Therefore, although geological disasters occur frequently, ancient tree resources are still retained. | Failed 95% significance test |
Growing environment | Failed 95% significance test | The regression coefficient was high in the east and low in the west, and the high-value regions were mainly distributed in Sanshui and Shunde Districts. This region has less external intervention in the growth of ancient trees and a good growth environment, providing stable growth space for ancient tree resources. |
Nature reserves | The regression coefficient was low in the west and high in the east, and the negative regions were located in Liwan and Huangpu Districts. Only 4.7% of the ancient trees were distributed within the scope of nature reserves, while most of the ancient tree resources in Huangpu and Liwan Districts were not assigned to the scope of nature reserves for the time being. There were vacancies in nature reserves, resulting in a negative correlation between the spatial distribution of ancient trees and nature reserves. | The regression coefficient was high in the center and low in the surrounding region, and the high-value regions were located in Nanhai and Sanshui Districts. Ancient trees distributed within the scope of nature reserves accounted for 6.2%. Nature reserves broadened the scope of protection of ancient trees, which helps with their growth and development and maintenance and rejuvenation. |
Wetland | Failed 95% significance test | The regression coefficient was low in the center and high in the surrounding region, and the high-value region was located in Sanshui District. There are 9981.56 hm2 of wetlands existing in this region, distributing water- and moisture-tolerant ancient tree resources, mainly Ficus microcarpa. |
Woodlands | The regression coefficient was high in the center and low around, and the high-value region was distributed in Huangpu District. Woodlands are the best original land type for the survival of ancient trees, and there are more than 10,000 mu of ancient Litchi chinensis over 100 years old in the region, mostly in the top successional communities, which have a certain buffering power against external disturbances. | Failed 95% significance test |
Immovable cultural heritage and historical and cultural blocks | Failed 95% significance test | The regression coefficient was high in the south and low in the north, with high-value regions distributed in Gaoming and Shunde Districts and negative value regions distributed in Sanshui District. As an important element of the historical and cultural blocks in Gaoming and Shunde Districts, ancient trees are better protected and utilized under the drive of holistic and original conservation. |
Distance from roads | Failed 95% significance test | The regression coefficient was high in the north and south and low in the center, with the high-value regions located in Shunde, Sanshui, and Chancheng Districts. Major urban roads continuously reduce the growth space of ancient trees, resulting in the weakening or even death of roadside ancient trees. The existing ancient trees in this region are far from the main urban roads, and 66.76% of them further than 20 m away from the urban roads. |
Artificial disturbance | The regression coefficients were high in the southeast and low in the northwest, and the high-value regions were distributed in the east of Huangpu and Zengcheng Districts. There are a large number of ancient Litchi chinensis groups and ancient Canarium pimela groups in this region. As ancient tribute orchards, most of the ancient trees have aboveground protection measures, such as tree pools and supports, which provide a more stable growing environment. | The regression coefficient was high in the north and low in the south, with the high-value region distributed in Sanshui District. Its ancient trees are mainly distributed in villages, schools, and residential compounds due to the fact that the ancient tree resources represented by Ficus microcarpa are worshipped as tree gods and are strictly protected. |
Economic intensity | The regression coefficient was high in the center-west and low in the east. The high-value areas were distributed in Liwan and Huangpu Districts, and the negative-value areas were distributed in Zengcheng District. It indicated that the governments of economically developed areas pay more attention to the protection of ancient trees and make the protection stronger through policy measures. The residents have a higher awareness of protection [57], and the probability of being subjected to human damage, pests, and lightning strikes is lower. | Failed 95% significance test |
Educational resources | The regression coefficient was high in the center and low around, and the high-value region was distributed in Huangpu District. It indicated that the quality of personnel is higher in regions with rich educational resources, and the protection of ancient trees is better when combined with greening and architectural design. | Failed 95% significance test |
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Xu, Z.; Xu, Q.; Liu, K.; Liu, Y.; Du, J.; Yi, K.; Zhou, X.; Lin, W.; Li, H. Evolvement of Spatio-Temporal Pattern and Driving Forces Analysis of Ancient Trees Based on the Geographically Weighted Regression Model in Guangzhou and Foshan, China. Forests 2024, 15, 1353. https://doi.org/10.3390/f15081353
Xu Z, Xu Q, Liu K, Liu Y, Du J, Yi K, Zhou X, Lin W, Li H. Evolvement of Spatio-Temporal Pattern and Driving Forces Analysis of Ancient Trees Based on the Geographically Weighted Regression Model in Guangzhou and Foshan, China. Forests. 2024; 15(8):1353. https://doi.org/10.3390/f15081353
Chicago/Turabian StyleXu, Zhenzhou, Qing Xu, Kaiyan Liu, Yan Liu, Jiaheng Du, Kexin Yi, Xiaokang Zhou, Wei Lin, and Hui Li. 2024. "Evolvement of Spatio-Temporal Pattern and Driving Forces Analysis of Ancient Trees Based on the Geographically Weighted Regression Model in Guangzhou and Foshan, China" Forests 15, no. 8: 1353. https://doi.org/10.3390/f15081353