Landscape Sensitivity Assessment of Historic Districts Using a GIS-Based Method: A Case Study of Beishan Street in Hangzhou, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources and Data Preparation
2.3. Methods and Steps
2.3.1. Methods
- Thiessen polygons
- 2.
- Criteria importance through intercriteria correlation (CRITIC)
- 3.
- Shannon–Wiener index (SHDI)
- 4.
- Kernel density analysis
2.3.2. Steps
- Create landscape sensitivity assessment model: The assessment framework for landscape sensitivity is not fixed, and different assessment factors can be identified depending on the characteristics of the study area. Beishan Street Historic District has a characteristic landscape. First, Beishan Street is bordered by mountains on the north side and water on the south side, with a complex ecological environment. Second, Beishan Street belongs to the famous West Lake scenic area and attracts many tourists, so management needs to focus on the visual perception of tourists. Finally, there are many conservation buildings with high historical value located on Beishan Street, and they are important carriers of the city’s cultural memory. In summary, the assessment factors of this study were determined based on the urban elements and landscape characteristics of the Beishan Street Historic District. The primary assessment factors were identified as ecological, visual, and cultural sensitivity, and 12 secondary assessment factors were further identified (Figure 6).
- 2.
- Draw sensitivity maps: Sensitivity maps of the study area for each secondary assessment factor were drawn in ArcGIS. The weights were determined by the CRITIC method, which can reflect the variability of indicators and the conflict between indicators [36]. The weighted overlay was used on all sensitivity maps of single assessment factors to draw a total sensitivity map.
- 3.
- Provide a basis for preservation decisions: The sensitivity maps are used to analyze the current state of landscape sensitivity and predict landscape changes that may be caused by conservation decisions. At the same time, the correlations between assessment factors are analyzed by statistical methods in order to find the assessment factors with greater impact. The above two analyses show what needs to be focused on in future conservation decisions.
3. Results
3.1. Landscape Sensitivity Analysis
3.1.1. Landscape Ecological Sensitivity Analysis
- Elevation: The higher the elevation, the weaker the renewal capacity of nature, the higher the number of vulnerable species, and the higher the level of sensitivity [42]. DEM data directly display the elevation. Considering the topographic and climatic characteristics of the study location, the reference standard was taken from other studies that covered areas near the subject location in Hangzhou, China [40]. In this way, the assessment criteria for the sensitivity levels could be determined, and an elevation sensitivity map was drawn (Figure 7a).
- Land use type: Land use types were classified using ESA WorldCover data. There is a wide variety of land use types in the study area, eight in total. The land use types in the southern, northwestern, and eastern areas of Beishan Street are mainly permanent water bodies, tree-covered areas, and built-up areas, respectively. Meanwhile, these tree-covered hills, building complexes, and the lake are the most attractive scenery in the West Lake Scenic Spot where Beishan Street is located (Figure 8). In addition, the study area is scattered with small areas of shrubland, grassland, cropland, bare/sparse vegetation, and herbaceous wetland. Sensitivity levels were determined by referring to the assessment criteria of Hangzhou, China [40], Bayburt, Turkey [42], and Denizli, Turkey [41]. In this way, a sensitivity map of land use types was drawn (Figure 7b).
- Slope: As the slope increases, the probability of natural hazards increases and the level of ecological sensitivity is higher [40]. Slope analysis was performed using DEM data. Sensitivity levels were determined by referring to the assessment criteria of Hangzhou, China [40], and Bayburt, Turkey [42]. In this way, a slope sensitivity map was drawn (Figure 7c).
- Aspect: The study area is located in a temperate zone of the Northern Hemisphere, so the south-facing position is more favorable for plant growth and is less sensitive. Aspect analysis was performed using DEM data. The sensitivity level was determined by referring to the assessment criteria of Denizli, Turkey [41]. In this way, an aspect sensitivity map was drawn (Figure 7d).
- Distance from water: The closer to water, the richer the biological species, the more complex the ecological environment, and the higher the level of ecological sensitivity. Flow direction and Euclidean distance analyses were performed sequentially using the DEM data. The sensitivity level was determined by referring to the assessment criteria of Denizli and Bayburt, Turkey [42]. In this way, a sensitivity map of distance from water was drawn (Figure 7e).
- NDVI: NDVI is used to quantify vegetation greenness and is useful for showing vegetation density and assessing changes in plant health. NDVI is calculated as a ratio between the red (R) and near-infrared (NIR) values in traditional fashion: (NIR − R) / (NIR + R) [43].
3.1.2. Landscape Visual Sensitivity Analysis
- Traffic accessibility: The traffic network of a city affects the visual environment [45]. According to the “highway” attribute of OSM data, streets are classified into four types: primary, secondary, tertiary, and others. We created a new element dataset named “traffic network” in ArcGIS. The transport network was built in ArcMap. The speed of primary streets was set to 60 km/h, secondary streets to 40 km/h, tertiary streets to 20 km/h, other streets to 10 km/h, and the walking speed of all streets to 1.5 m/s. The speed of the subway was set to 40 km/h, and the subway cannot be connected to the roads. The straight-through intersection time was set to 20 s, reverse time to 20 s, right turn time to 10 s, and left turn time to 30 s. The average travel time for each location in the study area was calculated using the transport network. The reference standard of traffic accessibility is 5 min average walking time, 15 min comfortable walking time, and 30 min extreme walking time [46]. In this way, the assessment criteria for the sensitivity levels were determined, and a sensitivity map of traffic accessibility was drawn (Figure 10a).
- Street view: Urban visibility is calculated by UDEM [47]. The greater the exposure to the landscape, the more likely it is to be affected by human activities, and the higher the sensitivity will be [48]. Streets are locations of intense human activity in cities and are used as observation points for visual field analysis. After selecting the streets from the OSM data, 300 observation points were set up on the road for visual field analysis. The number of observation points was determined by the equidistant method. In this way, a sensitivity map of street view was drawn (Figure 10b).
- Random point view: To calculate the probability of a landscape being seen, people randomly situated in other locations should be considered in addition to densely populated streets. A view analysis was conducted by generating 300 random points in the study area as observation points. The results show that all locations could be seen from up to 180 of the 300 observation points. The number of observations was determined by the equidistant method to draw a sensitivity map of a random point of view (Figure 10c).
3.1.3. Landscape Cultural Sensitivity Analysis
- SHDI: Areas rich in points of interest in the city have better urban facilities. These areas are more prone to urban problems [49] and are more sensitive than areas with a single function. The study area was separated into 50 m × 50 m grid data. The number of POI types near each grid was calculated by using “Generate Near Table”, setting the search radius to 100 m. The SHDI value of each grid was calculated by the SHDI formula [38]. SHDI values were graded by the Jenks natural breaks classification method to draw an SHDI sensitivity map (Figure 12a).
- The density of heritage buildings: Historical buildings are important carriers of urban history and culture, so the historical–cultural quality of the landscape is influenced by immovable cultural heritage such as buildings [8]. The higher the heritage building density, the higher the cultural sensitivity of the landscape. In this study, 1077 heritage buildings at all levels in Hangzhou were considered, as described in Section 2.1. Heritage buildings were analyzed by kernel density. Density was determined by the equidistant method to draw a sensitivity map of heritage building density (Figure 12b).
- The density of tourist attractions: The higher the tourist attraction density, the greater the attractiveness to tourists and the higher the cultural sensitivity of the landscape. Points classified as tourist attractions were selected from the POI data, and the points of tourist attractions were exported. Tourist attractions were analyzed by kernel density. Density was determined by the equidistant method to draw a sensitivity map of tourist attraction density (Figure 12c).
3.2. Total Landscape Sensitivity
4. Discussion
4.1. Sensitivity Map Analysis
4.1.1. Suggestions for Conservation of Beishan Street Historic District
- Higher landscape sensitivity of Beishan Street Historic District
- 2.
- Protected heritage and historical buildings in Beishan Street Historic District
- 3.
- Key buildings that need attention in Beishan Street Historic District
4.1.2. Study Area Conservation Recommendations
4.2. Correlation of Landscape Sensitivity Assessment Factors
4.2.1. Relevance of Primary Assessment Factors
4.2.2. Correlation of Secondary Assessment Factors
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Protection Level | Number of Historic Buildings | ||
---|---|---|---|
In Hangzhou | In Beishan Street Historic District | ||
National-level Key Cultural Relics Protection Unit | Highest level | 46 | 4 |
Provincial-level Cultural Relics Protection Unit | Second highest level | 29 | 1 |
City-level Cultural Relics Protection Unit | Third highest level | 362 | 5 |
City-level Cultural Relics Protection Site | Fourth highest level | 241 | 14 |
City-level Historical Building | Lowest level | 399 | 20 |
Total | 1077 | 44 |
Assessment Factor | Evaluation Standard | Level | Score | Weight |
---|---|---|---|---|
Elevation (m) | (300, +∞) | Very high | 4 | 3.17% |
(100, 300] | High | 3 | ||
(50, 100] | Moderate | 2 | ||
[0, 50] | Low | 1 | ||
Land use type | Permanent water bodies, herbaceous wetland, tree cover | Very high | 4 | 26.70% |
Grassland, shrubland | High | 3 | ||
Cropland, bare/sparse vegetation | Moderate | 2 | ||
Build-up | Low | 1 | ||
Slope (°) | (25°, 90°] | Very high | 4 | 9.75% |
(15°, 25°] | High | 3 | ||
(5°, 15°] | Moderate | 2 | ||
[0°, 5°] | Low | 1 | ||
Aspect (°) | North [0°, 22.5°] and [337.5°, 360°] | Very high | 4 | 26.66% |
Northeast (22.5°, 67.5°), northwest (292.5°, 337.5°) | High | 3 | ||
East [67.5°, 112.5°], west [247.5°, 292.5°], southeast (112.5°, 157.5°), southwest (202.5°, 247.5°) | Moderate | 2 | ||
Flat (= −1), South [157.5°, 202.5°] | Low | 1 | ||
Distance from water (m) | = 0 | Very high | 4 | 25.45% |
(0, 30] | High | 3 | ||
(30, 100] | Moderate | 2 | ||
(100, +∞) | Low | 1 | ||
NDVI | (0.5, +∞) | Very high | 4 | 8.28% |
[−1, 0] | High | 3 | ||
(0.3, 0.5] | Moderate | 2 | ||
(0, 0.3] | Low | 1 |
Assessment Factor | Evaluation Standard | Level | Score | Weight |
---|---|---|---|---|
Traffic accessibility (minutes) | (0, 5] | Very high | 4 | 58.40% |
(5, 15] | High | 3 | ||
(15, 30] | Moderate | 2 | ||
(30, +∞] | Low | 1 | ||
Street view (points/300 points) | (200, 300] | Very high | 4 | 19.83% |
(100, 200] | High | 3 | ||
(0, 100] | Moderate | 2 | ||
= 0 | Low | 1 | ||
Random point view (points/300 points) | (120, 180] | Very high | 4 | 21.77% |
(60, 120] | High | 3 | ||
(0, 60] | Moderate | 2 | ||
= 0 | Low | 1 |
Assessment Factor | Evaluation Standard | Level | Score | Weight |
---|---|---|---|---|
SHDI | (1.45, 2.35] | Very high | 4 | 47.97% |
(0.93, 1.45] | High | 3 | ||
(0.32, 0.93] | Moderate | 2 | ||
(0, 0.32] | Low | 1 | ||
= 0 | No | 0 | ||
Density of heritage buildings (/square kilometers) | (0.000017199, 0.000022932] | Very high | 4 | 23.30% |
(0.000011466, 0.000017199] | High | 3 | ||
(0.000005733, 0.000011466] | Moderate | 2 | ||
[0, 0.000005733] | Low | 1 | ||
Density of tourist attractions (/square kilometers) | (0.000099353, 0.000132471] | Very high | 4 | 28.72% |
(0.000066236, 0.000099353] | High | 3 | ||
(0.000033118, 0.000066236] | Moderate | 2 | ||
[0, 0.000033118] | Low | 1 |
Protection Level * | Name | Time | Type |
---|---|---|---|
National-level Key Cultural Relics Protection Unit | Yue Fei Temple | Southern Song Dynasty (1127–1279) | Celebrity cemetery |
Former site of the May Fourth Constitution drafted | 1930s | Celebrity home | |
City-level Cultural Relics Protection Site | JOBS Temple | Tang Dynasty (831) | Religious building |
Qiushui Villa | 1925s | Celebrity home | |
City-level Historical Building | Bodhi Essence Temple | 1926 | Religious building |
Huang Binhong’s former residence | 1948 | Celebrity home | |
Others | Baopu Taoist Temple | Eastern Jin Dynasty (317–420) | Religious building |
Curved Yard and Lotus Pool in Summer | Qing Dynasty (1636–1912) | Stele | |
Chang Home | 1930s | Celebrity home | |
No name Home | 1931 | Celebrity home | |
Ziyun Alley | 1920s | Residential | |
Totsun Tower Courtyard | 1912–1949 | Residential |
Protection Level * | Name | Time | Type |
---|---|---|---|
City-level Cultural Relics Protection Site | Zhejiang-Jiangxi Railway Bureau | 1948 | Government office |
City-level Historical Building | Sui Cottage | 1922 | Celebrity home |
Villa No. 95, Beishan Street (Jiang Manfeng’s former residence) | 1934 | Celebrity home | |
Jiyi Building | 1930s | Celebrity home | |
Pan Home | 1930s | Celebrity home | |
Others | Yue Cottage | 1920s | Celebrity home |
Hangzhou Hotel | 1955 | Featured restaurant |
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Yang, X.; Shen, J. Landscape Sensitivity Assessment of Historic Districts Using a GIS-Based Method: A Case Study of Beishan Street in Hangzhou, China. ISPRS Int. J. Geo-Inf. 2023, 12, 462. https://doi.org/10.3390/ijgi12110462
Yang X, Shen J. Landscape Sensitivity Assessment of Historic Districts Using a GIS-Based Method: A Case Study of Beishan Street in Hangzhou, China. ISPRS International Journal of Geo-Information. 2023; 12(11):462. https://doi.org/10.3390/ijgi12110462
Chicago/Turabian StyleYang, Xueyan, and Jie Shen. 2023. "Landscape Sensitivity Assessment of Historic Districts Using a GIS-Based Method: A Case Study of Beishan Street in Hangzhou, China" ISPRS International Journal of Geo-Information 12, no. 11: 462. https://doi.org/10.3390/ijgi12110462
APA StyleYang, X., & Shen, J. (2023). Landscape Sensitivity Assessment of Historic Districts Using a GIS-Based Method: A Case Study of Beishan Street in Hangzhou, China. ISPRS International Journal of Geo-Information, 12(11), 462. https://doi.org/10.3390/ijgi12110462