A Data-Driven Approach to Analyze Mobility Patterns and the Built Environment: Evidence from Brescia, Catania, and Salerno (Italy)
Abstract
:1. Introduction
2. Methods
- Brescia: 65,720 trips of 3445 vehicles tracked during November 2019;
- Catania: 182,701 trips of 7393 vehicles tracked during November 2019;
- Salerno: 178,545 trips of 7479 vehicles tracked during October 2019.
- N is the total number of the elements of the sample (i.e., zones of the cities);
- Pi = i/N is the rank of the i-th element;
- is the concentration ratio to the i-th element of the variable xk (e.g., in the case of computation of the Gini index for the distribution of population, xk is the population assigned to the zone k).
- i is the origin zone;
- j is the destination zone;
- emplj is the number of employees in zone j;
- is the average travel time between zones i and j as derived by FCD.
3. Results
3.1. Mobility Patterns
3.2. Built Environment Analysis
3.3. Integrating Mobility Patterns and the Built Environment: The Potential Accessibility
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Mobility Patterns | ||
Metrics | Unit | Note |
Origin-Destination matrices | (passenger car equivalent/time period) | FCD Demand Matrices for different time periods (whole month of data; average of weekdays; average of weekend days). |
Generated trips | (passenger car equivalent/time period) | Average number of vehicles generated by each zone for different time periods (average of the whole period; average of weekdays during 7:00 a.m.–2:00 p.m.). |
Attracted trips | (passenger car equivalent/time period) | Average number of vehicles attracted by each zone for different time periods (average of the whole period; average of weekdays during 7:00 a.m.–2:00 p.m.). |
Time matrices | (Minutes) | Average travel times between origin and destination, during the whole period, during weekdays and during weekend days. |
Travelled distance matrices | (km) | Average distances between origin and destination zone, for different time periods (during the whole period, during weekdays and during weekend days). |
Distributions of trips during the day | (Vehicles/h) | Number of vehicles departing in the hour (average of weekdays; average of weekend days). |
Travel times | (Minutes) | Average value, median value, and standard deviation for different time periods (the whole period; weekdays and weekend days). |
Distribution of travel times | (%) | Statistical distribution of travel times during the whole period. |
Distribution of average travel times during the day | (Minutes) | Average travel times of vehicles departing in each hour of the day (weekdays and weekend days). |
Traveled distances | (km) | Average value, median value, and standard deviation for different time periods (the whole period; weekdays and weekend days). |
Distribution of traveled distances | (%) | Statistical distribution of distances traveled during the whole period. |
Distribution of average distances traveled during the day | (km) | The average traveled distances in each hour during weekdays and during weekend days. |
Distributions of classes of dwell times | (%) | Statistical distributions of dwell times (short dwell times and long dwell times) during the whole month. |
Mean speeds | (km/h) | Average value, median value, and standard deviation for different time periods (the whole period; weekdays and weekend days). |
Distribution of mean speeds | (%) | Statistical distribution of mean speeds during the whole period. |
Distribution of average mean speeds during the day | (km/h) | Average mean speeds in each hour during weekdays and during weekend days. |
Built Environment | ||
Metrics | Unit | Note |
Zone Population | (Number) | Number of inhabitants living in zone z. |
Zone Employees | (Number) | Number of employees working in zone z. |
Population distribution | - | Computed adopting the Gini index reported in (1) to Zone Population. |
Employees distribution | - | Computed adopting the Gini index reported in (1) to Zone Employees. |
Total road network of type i | (km) | Total length of road type i in the city. |
Total road network extension | (km) | Total length of all the roads in the city. |
Total road network of type i in zone z | (km) | Total length of road type i in zone z. |
Total road network in zone z | (km) | Total length of all the roads in zone z. |
Percentage of road type i | (%) | The percentage of length of road type i in the city. |
Percentage of road type i in zone z | (%) | The percentage of length of road type i in the zone z. |
Road network distribution of type i | - | Computed adopting the Gini index reported in (1) to Total length of road type i in zone z. |
Road network distribution | - | Computed adopting the Gini index reported in (1) to Total length of all the roads in zone z. |
Interaction between Mobility Patterns and the Built Environment | ||
Metrics | Unit | Note |
Active potential accessibility of zone z | (Employees/second) | Computed according to (2). |
Passive potential accessibility of zone z | (Inhabitants/second) | Computed according to (3). |
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De Vincentis, R.; Karagulian, F.; Liberto, C.; Nigro, M.; Rosati, V.; Valenti, G. A Data-Driven Approach to Analyze Mobility Patterns and the Built Environment: Evidence from Brescia, Catania, and Salerno (Italy). Sustainability 2022, 14, 14378. https://doi.org/10.3390/su142114378
De Vincentis R, Karagulian F, Liberto C, Nigro M, Rosati V, Valenti G. A Data-Driven Approach to Analyze Mobility Patterns and the Built Environment: Evidence from Brescia, Catania, and Salerno (Italy). Sustainability. 2022; 14(21):14378. https://doi.org/10.3390/su142114378
Chicago/Turabian StyleDe Vincentis, Rosita, Federico Karagulian, Carlo Liberto, Marialisa Nigro, Vincenza Rosati, and Gaetano Valenti. 2022. "A Data-Driven Approach to Analyze Mobility Patterns and the Built Environment: Evidence from Brescia, Catania, and Salerno (Italy)" Sustainability 14, no. 21: 14378. https://doi.org/10.3390/su142114378
APA StyleDe Vincentis, R., Karagulian, F., Liberto, C., Nigro, M., Rosati, V., & Valenti, G. (2022). A Data-Driven Approach to Analyze Mobility Patterns and the Built Environment: Evidence from Brescia, Catania, and Salerno (Italy). Sustainability, 14(21), 14378. https://doi.org/10.3390/su142114378