Supporting Resilient Urban Planning through Walkability Assessment
Abstract
:1. Introduction
Let’s think about how our cognitive ability and our experience will diminish, for example looking at the use of Google Maps: well, people have no idea where it is interesting to walk because they are glued to the phone to get in the most efficient way from A to B. More an experience is smooth, without clutches, more we stop learning[1] (p. 36).
2. The Case Study Research Method
The Case Study: Main Campus of the Politecnico di Torino
3. Research Design and Data Analysis
- (1)
- Able to consider objective and subjective elements of walkability;
- (2)
- Able to quantify and measure subjective elements;
- (3)
- Mathematically robust and sensible;
- (4)
- Flexible and adaptable. e.g., usable at different territorial scales;
- (5)
- Able to support the urban planning design decision-making processes.
- (a)
- Choice phase, where indexes and indicators were preliminary chosen through an in-depth analysis of the literature. First, we selected three keywords to compose the string search viz., walkability + walkability measure + walkability indicators. Second, the string has been inserted in both Scopus and Google Scholar databases to identify scientific papers in the timespan 2000–2019 (Figure 4). This research has given rise to numerous papers. Third, basing on abstract and keywords, we selected only the papers that appeared in both databases and simultaneously related to the 3 subject areas of interest: urban planning, urban planning measure and qualitative/and quantitative assessment methods). This systematic literature review provided 16 (Table 2).
- (1)
- Weighting indexes and indicators to produce a global index. Indexes and indicators are chosen by researchers on the basis of the literature or empirical analyses. The method is very flexible and can be applied at several territorial scales [39];
- (2)
- Statistical analyses, which provide a robust evaluation by using highly objective analytical attributes such as averages, maximum and minimum values, correlation, and agreement coefficients and standard deviation [49];
- (b)
- Analysis phase, consisting of an empirical investigation of the case study area and a survey administered to the main categories of PoliTO campus users. In order to verify the reliability of the survey, a preliminary test was made on a sample of 40 students. Subsequently, survey data were analyzed using different statistical techniques. Through the survey, the results of the Choice phase were tested, making changes and enriching it with data, thus making the model more robust and objective;
- (c)
- Evaluation phase, where the current status of the PoliTO campus was assessed. This phase employed a GIS software application called Quantum-Geographic Information System (QGIS) [53] to assess potential associations between a number of built environment characteristics and walking [54] and to have a visual representation of the evaluation problem [55]. Among the many available visualization tools [39,50,56], we decided to use QGIS [53] since it is an open-source software system that does not require a license, uses readily consulted open data, and georeferences objects to be assessed on any geographic scale (city, neighborhood, or single street), providing easy-to-read output. Moreover, it is widely used, making the method presented here easily replicable.
4. Findings
4.1. Choice Phase
4.2. Analysis Phase
4.3. Evaluation Phase: QGIS Measure
5. Discussion
6. Conclusions and Future Developments
- The Masterplan addresses the issue of walkability indirectly, namely it is not explicitly mentioned in the documents;
- Among the 10 critical indicators identified by our framework, the Masterplan projects address 4 of them (“non-sliding paths,” “slopes,” “covered routes,” and “spaces where crowding is created in PoliTO campus”), showing particular attention to the morphology of the pedestrian streets, an attitude quite consistent with the training of the experts who drafted the Masterplan;
- The PoliTO Masterplan Team is determining whether the Masterplan’s scope can be broadened to reflect the findings that emerged from applying the multi-methodological assessment framework presented here. The idea is to be able to include roads and sidewalks around the PoliTO campus since they have a significant impact on its accessibility and walkability.
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Phases | Steps | Activities | Results |
---|---|---|---|
Choice | Literature review | Definition of the keywords/search parameters | Selection of 16 papers containing qualitative/quantitative assessment methods to measure walkability |
Definition of the time span | |||
Database search | |||
Analysis of the 16 papers selected | Identification of the most used indexes and indicators (4 indexes and 18 indicators) | ||
Analysis | Empirical investigation | Validation of the results of the Choice phase | Elaboration of a survey test |
Selection of a preliminary sample to deliver the survey test | 40 students of the PoliTO campus + PoliTO masterplan | ||
Validation of the reliability of the survey on the preliminary sample | Changing the indexes and the indicators selected in the Choice phase 4 indexes and 28 indicators) | ||
Choice of a final sample to deliver the survey | 100 PoliTO users | ||
Delivery of the survey to the final sample | Definition of the weights to be attributed to the indexes and the indicators | ||
Statistical analysis | |||
Evaluation | Spatial evaluation | Use of Geographic Information Systems (GIS) measures to spatialize the indexes and indicators | Spatialization of the indexes and the indicators |
Identification of the problem areas from a walkability perspective in the study area | Suggestions for improvement in terms of walkability to support the PoliTO Masterplan |
Papers | Quantitative Methods | Qualitative Methods | |||
---|---|---|---|---|---|
Weighting of Indexes and Indicators | Statistical Analysis | Empirical Investigation | Assessment Survey | Visualization through GIS and CAD (Computer-Aided Drafting) Tools | |
Ewing and Handy, 2009 | ✔ | ✔ | |||
Cerin et al., 2011 | ✔ | ✔ | |||
Galanis and Eliou, 2011 | ✔ | ✔ | |||
Cambra, 2012 | ✔ | ✔ | |||
Ford, 2013 | ✔ | ||||
Moayedi et al., 2013 | ✔ | ||||
Domokos, Wiitala and Tier, 2014 | ✔ | ✔ | |||
Lee and Talen, 2014 | ✔ | ✔ | ✔ | ||
Blečić et al., 2014 | ✔ | ✔ | |||
D’Alessandro, Apolloni and Capasso, 2016 | ✔ | ||||
Keat, Yaacob and Hashim, 2016 | ✔ | ✔ | |||
Yin, 2017 | ✔ | ✔ | |||
Chiantera et al., 2018 | ✔ | ✔ | |||
Shatu and Yigitcanlar, 2018 | ✔ | ✔ | |||
Wibowo and Nurhalima, 2018 | ✔ | ||||
Ussery et al., 2019 | ✔ |
Indexes | Indicators | References |
---|---|---|
Security | Presence of intersections | [33,39,52,63,64,65,66] |
Drivable speed | ||
Existence of conflict area between pedestrian and vehicular traffic | ||
Types of roads | ||
Quality of routes | Sidewalk’s length | [21,28,29,31,33,34,39,52,63,64,65,66] |
Condition of the pavement | ||
Non-sliding paths (with obstacles) | ||
Well connected | ||
Slope | ||
Intermodality | Presence and coverage of public transport stops | [31,63] |
Cycling | ||
Comfort | Presence of trees/meadows | [21,29,31,33,37,39,49,50,52,63,64,65,66] |
Adequate lighting | ||
Possibility of stopping due to benches | ||
Architectural variety | ||
Buildings with monotonous colors | ||
Possibility to see the continuity of the route | ||
Presence of commercial activity |
Indexes | Indicators | |
---|---|---|
Security | Presence of busy roads | |
Traffic light pedestrian crossings with sufficient time | ||
Non-lighted pedestrian crossings in neighborhood streets | ||
Separation of pedestrian/cycling/cable/accessible routes | ||
Quality of routes | Internal | Tightening of sidewalk |
Condition of the pavement | ||
Non-sliding paths (with obstacles) | ||
Well connected with the outside | ||
Slope | ||
External | Tightening of sidewalk | |
Condition of the pavement | ||
Non-sliding paths (with obstacles) | ||
Intermodality | Parking spaces for own bike | |
Easy accessibility by public transport | ||
Own car parks | ||
Bike sharing stations | ||
Car sharing stations | ||
Comfort | Acoustic pollution | |
Covered routes | ||
Presence of trees/meadows | ||
Presence of baskets | ||
Adequate lighting during night/evening hours | ||
Possibility of stopping due to the presence of benches | ||
Presence of water points | ||
Presence of tall buildings | ||
Buildings with monotonous colors | ||
Possibility to see the continuity of the route | ||
Refreshment points of the PoliTO campus | ||
Study points in the PoliTO campus | ||
Spaces where crowding is created in PoliTO campus | ||
Spaces where crowding is created outside PoliTO campus |
There are many busy roads in the area inside the PoliTO campus with heavy vehicular traffic. | ||||||
---|---|---|---|---|---|---|
Strongly Disagree | 1 | 2 | 3 | 4 | 5 | Strongly Agree |
Indexes | Weights of Indexes | Indicators | Weights of Indicators | ||
---|---|---|---|---|---|
Security | 29% | Presence of busy roads | 31% | Minimize | |
Traffic light pedestrian crossings with sufficient time | 23% | Maximize | |||
Non-lighted pedestrian crossings in neighborhood streets | 19% | Minimize | |||
Separation of pedestrian/cycling/cable/accessible routes | 26% | Maximize | |||
Quality of routes | 28% | Internal | Tightening of sidewalk | 12% | Minimize |
Condition of the pavement | 13% | Maximize | |||
Non-sliding paths (with obstacles) | 15% | Minimize | |||
Well connected with the outside | 12% | Maximize | |||
Slope | 11% | Minimize | |||
External | Tightening of sidewalk | 13% | Minimize | ||
Condition of the pavement | 12% | Maximize | |||
Non-sliding paths (with obstacles) | 12% | Maximize | |||
Intermodality | 22% | Parking spaces for own bike | 20% | Maximize | |
Easy accessibility by public transport | 23% | Maximize | |||
Own car parks | 17% | Maximize | |||
Bike sharing stations | 21% | Maximize | |||
Car sharing stations | 19% | Maximize | |||
Comfort | 21% | Acoustic pollution | 8% | Minimize | |
Covered routes | 5% | Maximize | |||
Presence of trees/meadows | 6% | Maximize | |||
Presence of baskets | 7% | Maximize | |||
Adequate lighting during night/evening hours | 7% | Maximize | |||
Possibility of stopping due to the presence of benches | 6% | Maximize | |||
Presence of water points | 6% | Maximize | |||
Presence of tall buildings | 8% | Maximize | |||
Buildings with monotonous colors | 8% | Minimize | |||
Possibility to see the continuity of the route | 7% | Maximize | |||
Refreshment points of the PoliTO campus | 8% | Maximize | |||
Study points in the PoliTO campus | 7% | Maximize | |||
Spaces where crowding is created in PoliTO campus | 10% | Minimize | |||
Spaces where crowding is created outside PoliTO campus | 8% | Minimize |
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Abastante, F.; Lami, I.M.; La Riccia, L.; Gaballo, M. Supporting Resilient Urban Planning through Walkability Assessment. Sustainability 2020, 12, 8131. https://doi.org/10.3390/su12198131
Abastante F, Lami IM, La Riccia L, Gaballo M. Supporting Resilient Urban Planning through Walkability Assessment. Sustainability. 2020; 12(19):8131. https://doi.org/10.3390/su12198131
Chicago/Turabian StyleAbastante, Francesca, Isabella M. Lami, Luigi La Riccia, and Marika Gaballo. 2020. "Supporting Resilient Urban Planning through Walkability Assessment" Sustainability 12, no. 19: 8131. https://doi.org/10.3390/su12198131
APA StyleAbastante, F., Lami, I. M., La Riccia, L., & Gaballo, M. (2020). Supporting Resilient Urban Planning through Walkability Assessment. Sustainability, 12(19), 8131. https://doi.org/10.3390/su12198131