Impact of Neighborhood Urban Morphologies on Walkability Using Spatial Multi-Criteria Analysis
Abstract
:1. Introduction
2. Literature Review
2.1. Walkability as a Concept
2.2. Urban Morphology
2.3. Factors Impacting Urban Morphology
2.4. Intertwining Factors between Walkability and Urban Morphology
3. Materials and Methods
3.1. Methodology and Data Sources
- First, the research used qualitative analysis to identify the criteria and indicators that are important to assess walkability and would also be attained for the selected case study. Considering the data availability, the authors must drop some indicators from the analysis. Table 3 summarizes the criteria and indicators that were finally adopted for this study.
- Second, using the study area boundaries for the selected neighborhoods, land-use data were reclassified into 23 classes. Moreover, to extract the service layer, 12 types of services are also reclassified to be used for calculations of the densities and distance concept to compare the urban morphology for the four selected areas.
- Third, as given in Table 3, 12 indicators were calculated spatially in ArcGIS to measure the walkability index across the four study areas using spatial multi-criteria analysis (SMCA). The following sub-sections show details of the calculations and formulas for each indicator.
- At the final stage, the results were aggregated and mapped, revealing the final walkability index values for the four study areas. After the initial mapping and spatial analysis were completed, direct observations were carried out by the authors to better understand the final outcome.
3.2. Data Preparation and Pre-Processing Procedures
3.2.1. Reclassification of Services and Land-Use Classes
- Infrastructure and Utilities
- Commercial (i.e., banks, shops, stores, supermarkets, restaurants, shopping centers)
- Healthcare (i.e., hospitals, clinics, healthcare centers, etc.)
- Educational (i.e., schools, universities, faculties, educational centers, kinder gardens, etc.)
- Religious (i.e., Churches, Mosques, Islamic complexes, Christian centers, etc.)
- Cultural (i.e., cultural theatres, museums, cultural centers, libraries, etc.)
- Governmental and administrative (i.e., postal office, Police stations, etc.)
- Sports services (i.e., stadiums, sports clubs, gyms, etc.)
- Recreational (i.e., clubs, cinemas, recreational centers, etc.)
- Industrial (i.e., factories, clothes factories, workshops, etc.)
- Social (i.e., orphanage centers, social services, social halls, etc.)
- Touristic (i.e., hotels, motels, touristic compounds, etc.)
3.2.2. The Spatial Unit for Calculations
3.3. SMCA and Geoprocessing Model
3.3.1. Computing the Individual Indicators
- LUd (i) is the land-use diversity in the area of analysis i,
- Lui = the land use class (1, 2, 3, 4, …, n) in the area of analysis i,
- QLui = the ratio of the area within the area of analysis i,
- n = the total number of the different land uses in the area of analysis i,
- SLui = total area of land use j within the area of analysis i,
- Si = total area of the area of analysis i.
- MI is the mixedness index for the area of analysis i,
- Sc shows the sum of the total area of other land uses within the area of analysis i
- Sr is the sum of the total land area under residential land use within the area of analysis i.
3.3.2. Standardization of Indicators
3.3.3. Assign Weights to Indicators
3.3.4. Computing the Composite Walkability Index
- Wi is the multiplication result of the weights of all indicators or criteria,
- Ri the standardized values of each pixel in the map of the indicator or criterion,
- n is the total number of the indicator or criterion.
4. The Study Area
5. Results
6. Discussion
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Morphology Type | Description |
---|---|
Gridiron | A generic grid composed of streets and blocks; buildings are arranged in a linear pattern. |
Radial | A radial point from which streets radiate outwards. |
Organic | Irregular curvilinear lines often flowing with the natural landscape and topography of the area. |
Linear | Long and narrow, mostly along coastlines and historic cities. |
Clustered | A central point around which buildings are arranged in clusters. |
Satellite | A group of satellite communities arranged around a central city and connected through transportation routes. |
Megastructure | Characterized by large, self-contained structures that contain multiple functions, such as housing, commerce, and transportation. |
Criteria | Indicators |
---|---|
Density | Land-use mix |
Job/Housing Balance | |
Distance to amenities | |
Presence of Appropriate mixed uses | |
Diversity of services | |
Distance to Transit | |
Distance to nearest Amenity | |
Density of Terminals | |
City transit connectivity | |
Diversity | |
Street Design | Presence of resting spots |
Streets density | |
Sidewalk Coverage | |
Sidewalk Design | Presence of sidewalk |
Appropriate width of sidewalk to walk with a friend | |
Material used for sidewalk | |
Abrupt stoppages | |
Presence of a curb | |
Height of a curb (ease of climbing up or down) | |
Pathway congestion with obstacles | |
Presence of adequate ramps and slopes | |
Appropriate and adequate maintenance | |
Presence or absence of resting spots | |
Adequate lighting | |
Street Connectivity | Intersection density |
Roads and intersections | |
Presence of adequate traffic lights to facilitate crossing | |
Congestion points and traffic junctures | |
Pedestrian Safety | Destination Accessibility |
Absence of adequate pedestrian spaces | |
High-speed traffic without appropriate pedestrian crossings or control | |
Visual and acoustic pollution | |
Green Space | Presence of shade |
Presence of trees and landscaping | |
Adequate space around trees to walk curbs | |
Environmental Factors | Climate |
Time of Day | |
Noise Levels | |
Level of pollutants (PM.2.5, PM 10) |
Criteria | Indicators | Adopted or Dropped | Type of Measure |
---|---|---|---|
Density | Residential density * | √ | Built environment |
Household/population density * | √ | ||
Employment density * | × | ||
Density of services * | √ | ||
Density of streets * | √ | ||
Density of terminals * | √ | ||
Commercial and services density * | √ | ||
Floor area ratio (FAR) * | √ | ||
Building coverage ratio (BCR) * | √ | ||
Diversity | Land-use diversity (level of mixed use) * | √ | |
Job/housing balance | × | ||
Design | Land-use mixedness * | √ | |
Sidewalk coverage | × | ||
Presence of sidewalk | × | ||
Appropriate width of sidewalk to walk with a friend | × | ||
Material used for sidewalk | × | ||
Presence of a curb | × | ||
Height of a curb (ease of climbing up or down) | × | ||
Pathway congestion with obstacles | × | ||
Presence of adequate ramps and slopes | × | ||
The density of signaled intersections/street crossings * | × | ||
Presence of adequate traffic lights to facilitate crossing | × | ||
Congestion points and traffic junctures | × | ||
Pedestrian safety | × | ||
Green space | × | ||
Presence of shade | × | ||
Presence of trees and landscaping | × | ||
Trees Density | √ | ||
Adequate space around trees to walk curbs | × | ||
Presence of resting spots | × | ||
Destination Accessibility | Distance to services * | √ | |
Distance to Transit | Transit connectivity * | × |
Neighborhood Name | Area (m2) | District Name | Morphology Type | Characteristics/Main Features |
---|---|---|---|---|
Latin Quarter Neighborhood | 89,000 | Wasat (Middle) | Gridiron |
|
Smouha Neighborhood | 90,000 | Sharq (East) | Radial |
|
Kafr–Abdo Neighborhood | 90,000 | Sharq (East) | Organic |
|
Roushdy Neighborhood | 88,000 | Sharq (East) | Linear |
|
Indicator | Minimum | Maximum | Mean | Standard Deviation |
---|---|---|---|---|
Walkability Index | 0.142 | 0.655 | 0.264 | 0.091 |
BCR | 0.001 | 85.744 | 61.356 | 14.614 |
FAR | 0.007 | 873.516 | 389.061 | 131.363 |
Level of Mixed Use | 0.037 | 0.176 | 0.068 | 0.020 |
Land-Use Mixedness | 0.307 | 1.000 | 0.684 | 0.169 |
Service Density | 60.125 | 735.650 | 372.137 | 124.642 |
Commercial Density | 3.6 | 325.38 | 76.25 | 68.4 |
Residential Density | 3.537 | 381.972 | 233.926 | 90.340 |
Population Density | 25029 | 48730.2 | 34910.2 | 5562.7 |
Intersection Density | 21.221 | 537.590 | 187.161 | 84.106 |
Street Density | 9.159 | 37.253 | 26.722 | 4.475 |
Transit Density | 0.000 | 21.221 | 3.359 | 3.893 |
Transit Distance | 0.000 | 724.614 | 287.605 | 153.887 |
Trees Density | 7.074 | 760.407 | 334.042 | 206.563 |
Green Spaces Density | 6239.913 | 6850.813 | 6550.631 | 6518.649 |
Indicators | BCR | FAR | Level of Mixed Use | Land-Use Mixedness | Service Density | Commercial Density | Residential Density | Population Density | Intersection Density | Street Density | Transit Density | Transit Distance | Trees Density | Green Spaces Density |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Walkability index | 0.45 | −0.01 | −0.22 | 0.11 | 0.82 | 1.0 | 0.43 | 0.08 | 0.83 | 0.53 | 0.07 | −0.28 | −0.35 | −0.39 |
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Ibrahim, S.; Younes, A.; Abdel-Razek, S.A. Impact of Neighborhood Urban Morphologies on Walkability Using Spatial Multi-Criteria Analysis. Urban Sci. 2024, 8, 70. https://doi.org/10.3390/urbansci8020070
Ibrahim S, Younes A, Abdel-Razek SA. Impact of Neighborhood Urban Morphologies on Walkability Using Spatial Multi-Criteria Analysis. Urban Science. 2024; 8(2):70. https://doi.org/10.3390/urbansci8020070
Chicago/Turabian StyleIbrahim, Sara, Ahmed Younes, and Shahira Assem Abdel-Razek. 2024. "Impact of Neighborhood Urban Morphologies on Walkability Using Spatial Multi-Criteria Analysis" Urban Science 8, no. 2: 70. https://doi.org/10.3390/urbansci8020070