Sustainable Streetscape and Built Environment Designs around BRT Stations: A Stated Choice Experiment Using 3D Visualizations
Abstract
:1. Introduction
2. Materials and Methods
2.1. Attributes
2.2. Experimental Design
2.3. Questionnaire Design Case Study Areas
2.4. Sample Characteristics
2.5. Data Analysis
2.5.1. Basic Analytical Model
2.5.2. Data Coding
3. Model Results and Discussion
3.1. Interpretation of Attribute Levels (Location Group 1 and Location Group 2)
3.1.1. Residents
3.1.2. Commercial Building Users
3.1.3. BRT Users
4. Conclusions and Policy Implications
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Attribute | Related Literature | Explanation | Levels |
---|---|---|---|
Spatial Preferences | |||
Building heights/average number of building floors on street sides | [40] [44] | The average height of the buildings on the sides of streets | Level 1 = 1–3 floors Level 2 = 4–6 floors Level 3 = More than 6 floors |
Width of the sidewalk | [39] [41] [45] | The real width of the pedestrian space as discussed with local stakeholders | Level 1 = 1 m Level 2 = 1.5 m Level 3 = 2 m Level 4 = No provision |
Street greenery | [46] [47] [48] [49] [50] [51] | The trees and plants along the street including green hedges | Level 1 = High (horizontal + vertical green)/grass +large trees on both sides of the street and plants/light trees along the metro line Level 2 = Medium (horizontal + vertical green)/grass + light trees on both sides of the street Level 3 = Low (horizontal green)/grass on both sides of the street Level 4 = No greenery |
Parking | [52] [53] | Provision of adequate parking spaces for smoother traffic flows | Level 1 = Marked parking places on the street Level 2 = Parking at the multistory parking plazas Level 3 = Parking plazas + on-street parking |
Crossing facilities | [54] [55] [56] | Mass transit infrastructures like BRT has fragmented the city. Crossing facilities are very important | Level 1 = Pedestrian crossing bridge every 200 m Level 2 = Pedestrian crossing bridge every 400 m Level 3 = Pedestrian crossing Bridge every 600 m |
Bicycle path width | - | Infrastructure for active modes of transport has a vital role in fostering sustainable TOD | Level 1 = Bicycle path width: 1.5 m Level 2 = Bicycle path width: 2 m Level 3 = Bicycle path width: 2.5 m Level 4 = Bicycle path: no provision |
Spaces for informal sellers | - | There is demand for informal sellers around most of the transit stations | Level 1 = Clearly marked spaces on the street for informal sellers Level 2 = No spaces |
Non-Spatial Preferences | |||
Building type | [10] [57] | The type of land use revitalization users wants to see in the area | Level 1 = Apartment building Level 2 = Commercial building Level 3= Mixed-use building |
Preferred housing | [58] [59] | The type of housing projects that could be developed for sustainable Transit-Oriented Development | Level 1 = Social housing provided by government (subsidized rents) Level 2 = Provision of affordable houses on installments Level 3 = Houses/apartments developed by the private sector |
Preferred commercial use | [60] | The type of commercial use locals want to see in the area | Level 1 = Street shops Level 2 = Shopping centers Level 3 = Offices |
Category | Number | Percentage | |
---|---|---|---|
Gender | Male | 551 | 73.27% |
Female | 201 | 26.73% | |
Age | Under 25 | 157 | 20.8% |
26–35 | 186 | 24.73% | |
36–45 | 326 | 43.35% | |
46 or above | 83 | 11.03% | |
Education | High School/Technical School or below | 589 | 78.32% |
University/College | 141 | 18.75% | |
Master’s degree or higher | 22 | 2.92% | |
Place of Residence | City | 468 | 62.23% |
Suburb | 171 | 22.73% | |
Rural area | 113 | 15.02% | |
Current Status around BRT Station | Property owner (commercial building user) | 111 | 14.7% |
Tenant (commercial building user) | 141 | 18.75% | |
Resident (residential building user) | 252 | 33.51% | |
Only BRT user visitor/customer | 248 | 32.97% |
ICHRA and Chungi Amar Sidhu Station | Kalma Chowk and Muslim Town Station | |||||
---|---|---|---|---|---|---|
Residents | Commercial Building Users | Only BRT Users | Commercial Building Users | Residents | Only BRT Users | |
Parameter (Robust t-Value) | Parameter (Robust t-Value) | |||||
Building Height: 1–3 floors | 2.61 ** (3.4) | 0.84 ** (2.68) | 1.38 * (2.29) | −0.967 (−1.61) | −1.13 * (−2.05) | −1.58 ** (−2.67) |
Building Height: 4–6 floors | 1.11 * (2.52) | 3.93 ** (3.21) | 1.97 ** (4.2) | −2.513 ** (−3.06) | 1.56 ** (3.45) | −1.36 ** (−2.42) |
Building Height: More than 6 floors | (−3.72) | (−4.77) | (−3.35) | (3.12) | (−0.43) | (2.94) |
Sidewalk Width = 2 m | 2.28 ** (3.12) | 1.97 ** (2.78) | 2.05 ** (3.45) | 2.02 ** (3.07) | 2.17 ** (3.93) | 2.52 ** (3.09) |
Sidewalk Width = 1.5 m | 1.64 ** (3.15) | 1.47 ** (2.76) | 1.22 ** (3.43) | 1.28 * (1.97) | 1.41 ** (2.53) | 1.67 (1.17) |
Sidewalk Width: 1 m | 1.73 * (2.15) | 1.55 * (2.41) | −0.034 (0.32) | 0.415 (0.186) | 0.0381 (0.187) | −0.0509 (0.277) |
Sidewalk = No provision | (−5.65) | (−4.99) | (−3.27) | (−3.715) | −(3.618) | (−4.18) |
Street Greenery: High (horizontal + vertical green)/grass + large trees on both sides of the street and plants/light trees along the metro line | 1.69 ** (2.92) | 1.53 ** (2.70) | 1.12 ** (2.53) | 1.25 ** (2.60) | 1.31 ** (3.28) | 1.54 ** (4.38) |
Street Greenery: Medium (horizontal + vertical green)/grass + light trees on both sides of the street | 1.46 * (2.19) | 1.33 * (1.96) | 0.971 (1.64) | 0.813 * (2.07) | 0.895 ** (2.58) | 1.03 * (2.27) |
Street Greenery = Low (horizontal green)/grass on both sides of the street | 0.74 ** (1.97) | 0.744 (1.69) | 0.045 (0.254) | 0.348 (0.201) | 0.035 (0.184) | 0.0486 (0.291) |
Level 4 = No greenery | (−3.89) | (−3.66) | −2.136 | (−2.411) | (−2.24) | (−2.61) |
Parking: Marked parking places on the street | 1.31 (1.74) | −1.18 (−1.58) | 0.128 (0.604) | −1.16 (0.373) | 0.109 ** (2.75) | −0.15 (−0.683) |
Parking: Parking at the multistory parking plazas | 1.72 ** (3.3) | 1.54 * (2.54) | 0.937 * (2.06) | −1.42 (0.64) | 0.857 (1.64) | −0.984 (−5.78) |
Parking: Parking plazas + on-street parking | (−4.03) | (0.36) | (−1.065) | (2.58) | (−0.966) | (1.134) |
Crossings = Pedestrian crossing bridge every 200 m | 2.42 * (2.13) | 1.11 (1.87) | 1.03 ** (3.95) | 0.846 ** (2.75) | 0.929 ** (3.26) | 1.08 ** (4.74) |
Crossings = Pedestrian crossing bridge every 400 m | −1.24 * (−1.67) | 1.18 ** (3.14) | 0.034 (0.321) | 0.041 (0.186) | 0.0381 (0.187) | 0.0509 (0.277) |
Crossings = Pedestrian crossing bridge every 600 m | (−3.66) | (−3.49) | (−1.064) | −0.887 | (−0.967) | (−1.130) |
Level 1 = Clearly marked spaces on the street for informal sellers | 2.81 * (2.97) | 2.58 * (2.48) | 2.32 * (2.57) | −2.59 * (−2.75) | 2.79 ** (3.82) | −0.705 * (−2.10) |
Level 2 = No spaces | −2.81 | (−2.58) | (−2.32) | (2.59) | (−2.79) | (0.705) |
Bicycle Path Width: 1.5 m | 1.71 ** (2.13) | 1.54 ** (2.82) | 1.22 ** (2.91) | 1.28 ** (2.60) | 1.41 ** (3.48) | 1.67 * (2.43) |
Bicycle Path Width: 2 m | 2.01 ** (2.88) | 1.82 ** (2.24) | 0.0798 (1.11) | 0.076 (0.625) | 0.0738 (0.272) | 0.995 (0.396) |
Bicycle Path Width: 2.5 m | 0.941 (1.33) | 0.912 (1.32) | 0.937 (0.59) | 0.771 (1.64) | 0.857 (1.84) | 0.984 (1.78) |
Bicycle Path: No provision | (−4.661) | (−4.272) | (−2.236) | (−2.127) | (−2.34) | (−3.649) |
Building Type = Apartment building | 0.97 (1.08) | 0.874 (0.784) | 1.16 ** (2.48) | −2.04 * (−2.44) | 1.34 ** (3.04) | −1.59 ** (−3.84) |
Building Type = Mixed-use building | 1.34 ** (3.35) | 1.26 * (1.98) | −1.06 (−2.51) | −1.32 * (−2.06) | 1.45 ** (2.68) | −1.72 ** (−3.71) |
Building Type = Commercial building | (-2.31) | (-2.13) | (-0.10) | (3.36) | (-2.79) | (3.31) |
Housing Provision = Social housing provided by government (subsidized rents) | 3.22 ** (2.62) | 2.97 ** (2.71) | 3.15 ** (2.78) | 3.18 * (2.16) | 3.39 ** (2.79) | 3.97 ** (3.35) |
Housing Provision = Provision of affordable houses on installments | 0.96 (0.831) | 1.865 * (2.57) | -0.329 (-0.159) | 0.177 (1.36) | 0.247 (0.196) | 0.295 (0.242) |
Housing Provision = Houses/apartments developed by the private sector | (−4.18) | (−3.83) | (0.014) | (−3.35) | (−3.637) | (−4.265) |
Preferred Commercial Use = Street shops | 2.45 ** (3.34) | 1.12 (0.991) | 0.346 (0.903) | −0.057 (0.0519) | 0.394 (0.657) | 0.496 (1.16) |
Preferred Commercial Use = Shopping centers | 1.23 (1.17) | 2.23 ** (2.991 | 2.70 ** (7.56) | 3.28 ** (4.03) | 2.68 ** (6.43) | 3.46 ** (8.34) |
Preferred Commercial Use = Offices | (−3.68) | (−3.35) | −3.046 | (−3.233) | (−3.074) | −3.95 |
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Adeel, A.; Notteboom, B.; Yasar, A.; Scheerlinck, K.; Stevens, J. Sustainable Streetscape and Built Environment Designs around BRT Stations: A Stated Choice Experiment Using 3D Visualizations. Sustainability 2021, 13, 6594. https://doi.org/10.3390/su13126594
Adeel A, Notteboom B, Yasar A, Scheerlinck K, Stevens J. Sustainable Streetscape and Built Environment Designs around BRT Stations: A Stated Choice Experiment Using 3D Visualizations. Sustainability. 2021; 13(12):6594. https://doi.org/10.3390/su13126594
Chicago/Turabian StyleAdeel, Ahmad, Bruno Notteboom, Ansar Yasar, Kris Scheerlinck, and Jeroen Stevens. 2021. "Sustainable Streetscape and Built Environment Designs around BRT Stations: A Stated Choice Experiment Using 3D Visualizations" Sustainability 13, no. 12: 6594. https://doi.org/10.3390/su13126594
APA StyleAdeel, A., Notteboom, B., Yasar, A., Scheerlinck, K., & Stevens, J. (2021). Sustainable Streetscape and Built Environment Designs around BRT Stations: A Stated Choice Experiment Using 3D Visualizations. Sustainability, 13(12), 6594. https://doi.org/10.3390/su13126594