Bettering the Functionality of the Streets in the Historic Urban Areas: A Quantitative Method of Identification
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25. Sept. 2025
Über diesen Artikel
Online veröffentlicht: 25. Sept. 2025
Eingereicht: 14. Jan. 2025
Akzeptiert: 19. Apr. 2025
DOI: https://doi.org/10.2478/amns-2025-1024
Schlüsselwörter
© 2025 Yao Yifeng et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
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Figure 9.

The histogram of the difference in intensity
| Histogram of calculated values | |
Example of weighted evaluation of protection functions
| 1 | import arcpy | Data enter |
| 2 | ||
| 3 | # Set the workspace | |
| 4 | arcpy.env.workspace = r”D:\your_workspace” | |
| 5 | ||
| 6 | # Input raster layers representing the indicators | |
| 7 | raster_layers = [”Distribution density of historical heritage “, “Protect the coverage of construction control zones “, “Preservation requirements for historic cities “] | |
| 8 | ||
| 9 | # Set the raster weights | Weighting operations |
| 10 | weights = [0.528, 0.332, 0.140] | |
| 11 | ||
| 12 | # Create the output raster | |
| 13 | output_raster = arcpy.sa.WeightedSum(raster_layers, weights) | |
| 14 | ||
| 15 | # Set the workspace | Result output |
| 16 | output_raster.save(“street_ protection function_evaluation.tif”) |
The importance ranking principles for establishing the judgement matrix
| Urgency for the protection | According to the historical value of the protected elements, the size of the protection level, and so on, the distribution density of historical heritage is more important in this study. |
| Efficiency for the accessibility | Use shorter time and routes to arrive at destination, street accessibility is more important in this study. |
| Concentration for Service | The service facilities that more concentrated and continuously distributed in the street are more important. |
A comparison of the multiple functional co-existent streets identified by the method with the Urban Conservation Plan of Shangqiu Ancient City
| The results obtained by the Method | The sectoral schemes of Urban Conservation Plan | The streets coincident with their functional definition in Urban Conservation Plan |
|---|---|---|
| 2 | ||
| 17 | ||
| 8 |
The Indicators and their significance for the Principal Functions
| Function | Indicators | Significances |
|---|---|---|
| The distribution density of historical heritage | The quantity and density of historic buildings and other heritages along the Street. | |
| The coverage ratio of buffer zone area | Area of the street within the buffer zone area of the protection heritage. | |
| The protection requirements for historic city streets | According to the street protection guidelines, it is essential to strictly adhere to the requirements and avoid altering the street cross-section and facades. | |
| The motor vehicle traffic volume | Concentration of motor vehicle traffic volume. | |
| The street accessibility | The ease with which people can reach and navigate urban streets. | |
| The parking facility density | Density of facilities such as parking lots and parking spaces around the street. | |
| The accessibility to public transportation hubs on the periphery of the historic urban area | Accessibility to public transportation facilities such as nearby bus stops and metro stations from the historical urban area. | |
| The distribution of active population | Density of active population in the street. | |
| The density of living service facilities | The density of commercial, educational, medical, sports and other life service facilities along the street. | |
| The density of tourist service facilities | The number and density of tourist attractions, visitor centers, cultural and entertainment and other tourism service facilities around the street. |
Dominant functional street types and identification
| 1 | # Prompt the user to input the evaluation scores | Data enter |
| 2 | protection_score = float(input(“Enter the protection function evaluation score: “)) | |
| 3 | accessibility_score = float(input(“Enter the accessibility function evaluation score: “)) | |
| 4 | service_score = float(input(“Enter the service function evaluation score: “)) | |
| 5 | ||
| 6 | # Determine the dominant functional type | Functional analysis |
| 7 | if protection_score >= accessibility_score and protection_score >= service_score: | |
| 8 | dominant_function = “Protection-Oriented” | |
| 9 | elif accessibility_score >= protection_score and accessibility_score >= service_score: | |
| 10 | dominant_function = “Accessibility-Oriented” | |
| 11 | else: | |
| 12 | dominant_function = “Service-Oriented” | |
| 13 | ||
| 14 | # Print the result | Result output |
| 15 | print(f”The dominant functional type of the street is: {dominant_function}”) |
The judgment matrix of the identification indicators of the street functions in historic urban areas
| Protection | Distribution density of historical heritage | Coverage ratio of the buffer zone areas | Protection requirements for historic city streets |
|---|---|---|---|
| Distribution density of historical heritage | 1 | 3 | 3 |
| Coverage Ratio of buffer zone areas | 1/3 | 1 | 2 |
| Protection requirements for historic city streets | 1/3 | 1/2 | 1 |
Weight values of the functional indicators for the streets in historic urban areas
| The principal functions | Importance ranking principle | The indicators | Weight value |
|---|---|---|---|
| urgency | Distribution density of historical heritage | 0.528 | |
| Coverage Ratio of the Protection and Construction Control Zone | 0.332 | ||
| Protection requirements for historic city streets | 0.140 | ||
| efficiency | Motor vehicle traffic volume | 0.091 | |
| Street accessibility | 0.508 | ||
| Parking facility density | 0.135 | ||
| Accessibility to public transportation hubs on the periphery of the historic urban area | 0.266 | ||
| centralization | Distribution of active population | 0.143 | |
| Density of living service facilities | 0.286 | ||
| Density of tourist service facilities | 0.571 |
Description of quantifying indicators data
| Indicator | Data type | Analytical tools | Description |
|---|---|---|---|
| Distribution of historical heritage .shp | Kernel density analysis | Calculate the density of historical heritage. The denser the streets, the more historical heritage there is, and the stronger the responsibility for conservation. | |
| Protection of construction control zones .shp | Buffer analysis | Conduct a buffer zone analysis for historical heritage that needs strict protection, and calculate the proportion of adjacent streets covered by the protected construction control zone. The larger the proportion of streets, the stronger the responsibility to protect. | |
| Historic City Street Preservation Plan.jpg | Statistics | According to the requirements for the protection of streets in historic cities, 5, 4, 3, 2, and 1 are assigned to the protected historic streets, general historic streets, traditional streets, general streets, and other streets, so as to distinguish the importance of street protection. | |
| Statistical table of field surveys | Site surveys | According to the survey data of motor vehicle traffic flow in road sections, the larger the traffic of the street, the stronger the traffic responsibility. | |
| Streets in historic urban areas .shp | Network analyst | Through the network analysis tool, the accessibility analysis method based on least impedance proposed is used to calculate the overall accessibility of streets in historic urban areas without considering the purpose of travel. | |
| Entrance and exit of the parking lot .shp | Kernel density analysis | Calculate the density of parking facilities, and in areas with higher density, the more vehicles travel and the stronger the traffic responsibilities. | |
| Bus transit facilities .shp | Network analyst | Collect public transit facilities and road vector data. Calculate the accessibility of public transport hubs such as bus stops and subway stations at any point in the historic city area through network analysis tools. | |
| Daytime population distribution .shp | Kernel density analysis | Calculate the density of the distribution of people during the day, and the higher the density area, the more concentrated the crowd activity. | |
| Living service facilities .shp | Kernel density analysis | Calculate the density of service facilities such as commerce, education, healthcare, sports, and more. In areas with higher density, the more concentrated the living service facilities. | |
| Tourist service facilities.shp | Kernel density analysis | Calculate the density of tourist service facilities such as scenic spots and visitor centers. In areas with higher density, the more concentrated tourism service facilities are. |
The proportion scales commonly used in Analytic Hierarchy Process (AHP)
| Conventional Scales | Definition | Explanation |
|---|---|---|
| 1 | Equally important | Two factors have the same importance |
| 3 | Moderately important | One factor is slightly more important than the other |
| 5 | Strongly important | One factor is obviously more important than the other |
| 7 | Very strongly important | One factor is strongly more important than the other |
| 9 | Extremely important | One factor is extremely more important than the other |
| 2, 4, 6, 8 | Intermediate values | Intermediate values of above adjacent comparisons |
The identified streets of a single dominant function
| The streets identified by the Method | The streets coincident with their functional definition in the Urban Conservation Plan | The new identified Streets differentiated with their functional definition in the Urban Conservation Plan | |
|---|---|---|---|
| Name | The Total Amount | ||
| The conservation dominant | 25 | 12 | 13 |
| The accessibility dominant | 52 | 36 | 16 |
| The service dominant | 18 | 9 | 9 |
The sources of data used in this research
| Data | Source | Collection time | Data types | Instruction |
|---|---|---|---|---|
| Guihuayun sharing platform, the website: |
2024.04 | Vector | A coordinate system for georeferencing and unifying spatial data. | |
| OSM open-source map platform, the website: |
2024.04 | Vector | It is used to calculate street traffic indicators and accessibility indicators. | |
| Field observation and survey collection | 2023.10 | Vector | It is used to analyze motor vehicle traffic volume indicators. | |
| Shuweiguancha platform, the website: |
2024.04 | Vector | Used to calculate density indicators. | |
| Shuweiguancha platform, the website: |
2024.04 | Vector | It is used to calculate the distribution index of human density. | |
| Field observation and survey collection | 2022 | Tiff | It is used to calculate the index of the density of historical heritage and the control zone of protection and construction. | |
| Field observation and survey collection | 2022 | Tiff | Used to calculate street protection indicators. |
A comparison of the single functional dominant streets identified by the method with the Urban Conservation Plan of Shangqiu Ancient City
| The results obtained by the Method | The sectoral schemes of Urban Conservation Plan | Comparison by overlaying the results and the sectoral schemes |
|---|---|---|
