Evaluation of the Effectiveness of Traffic Calming Measures by SPEIR Methodology: Framework and Case Studies
Abstract
:1. Introduction
2. Framework of SPEIR Methodology
- (1)
- determination of speed profiles for the survey site;
- (2)
- estimation of effectiveness indicators;
- (3)
- analysis and interpretation of results.
2.1. Determination of Speed Profiles for the Survey Site
- Pneumatic tubes with automatic traffic counting systems: They are used for long surveys of vehicle speeds and annual average daily traffic counts. They are sufficiently accurate and inexpensive but lack flexibility in practice.
- Inductive loop detectors: Generally inexpensive and adaptable systems. However, they are not very flexible because they are permanently installed.
- Fixed RADAR stations: They can be installed on existing poles or on specially designed roadside structures. They are moderately expensive and can simultaneously measure the speeds of different vehicles in both directions of travel.
- Mobile RADAR stations and LiDAR guns: they have high versatility, precision and immediate correspondence between vehicles and measured speeds. However, they are very expensive.
- On-board diagnostic (OBD) black boxes: they allow knowing the exact location and speed of the vehicle through GPS systems. They are characterized by sufficient accuracy if the device is able to receive data from a sufficient number of satellites. However, a large number of devices may be required to obtain statistically significant samples.
2.2. Estimation of Effectiveness Indicators
- Ea: accumulated speeding (m/s);
- ∑Asi: sum of areas bounder between the speed profile and the speed limit where speed in higher than speed limit (m2/s);
- L: road section length (m).
- Ra: accumulated speed uniformity (m/s);
- ∑Ari: sum of areas in absolute values bound between the speed profile and the average speed (m2/s);
- L: road section length (m).
2.3. Analysis and Interpretation of Results
3. Case Studies and Results
3.1. Selection of Zones 30
3.2. Speed Data Collection
3.3. Determination of Speed Profiles
- In Zone 1, there are significant deviations of the speed from the average value. The latter coincides with the speed limit of 30 km/h. In particular, it can be observed how the speed peaks reached by the users are significantly reduced when the distances between the speed tables are reduced (e.g., between ST3 and ST4).
- In Zone 2, the speed profiles of the test drivers are quite homogeneous and there are no significant variations. However, it is obvious that the average speed values are higher than those prescribed in this Zone 30.
- In Zone 3, the speed profiles show little variation compared to the average, which is just above the 30 km/h speed limit. It is particularly noticeable that the speed profiles at the chicane fall much more below the average speed of the zone than on the central island.
3.4. Estimation of Effectiveness Indicators
3.5. Results
4. Discussion
- No outliers were found in any of the three Zones. So, in any case, the TCMs do not lead to significant anomalies in the test drivers who participated in the experiment in terms of too high or too low speeds of the imposed limit.
- All three Zones have levels of effectiveness that exceed the threshold labeled as “good”. However, it should be noted that Zone 1, characterized by a median value of of 0.75, performs largely acceptably and ensures that the values between the second and third quartiles, representing 50% of the total, are kept within a narrow range (dispersion of 0.53) and between the thresholds for “good” and “acceptable”. Only in a few cases, as shown by the final value of the upper whisker of 1.04, does it border on what is considered a “poor” performance.
- Zone 3 provides an overall acceptable level of performance. The box is essentially bounded by the two threshold values (lower limit equal to 0.69 and upper limit equal to 1.014). However, the value at the end of the upper whisker of 1.40 shows how drivers can be misled into adopting speeds well above the limit imposed by the traffic signs.
- Zone 2 is the least successful in getting road users to obey the 30 km/h speed limit in effect on that section of road. The median value of , which is 1.11, represents a “poor” level of performance. Moreover, the box is almost entirely above the line that establishes the worst performance of the Zone in question in terms of compliance with the speed limit. If we also consider that (a) the end of the upper whisker shows how the values of the fourth quartile of increase to a value above 1.60, (b) the first quartile is almost entirely contained in the part of the graph bounded below by the acceptance threshold; it becomes clear that the sequence of speed tables in Zone 2 is not an effective measure to ensure the dynamics “legally” required by a Zone 30.
- For all three Zones, there were no outliers for any test driver. This means that in no case do the traffic calming measures lead to very anomalous behavior in terms of uniformity of speed.
- The medians for Zones 2 and 3 take similar values (0.62 and 0.72). Thus, in both Zones, users are induced to equalize their speed very close to the average value. It is also interesting to note that 50% of the Ra values are in an overall range between 0.48 and 0.83. This confirms the excellent response of the traffic calming measures in the two Zones to ensure a uniform speed. Instead, looking at the whiskers of the two boxplots, it can be seen that Zone 3 guarantees even more than Zone 2 a narrower dispersion of Ra values, actually containing all values between the minimum value of 0.36 and the maximum value of 1.03 (dispersion range 0.67). Zone 2, on the other hand, has a much wider dispersion of Ra values, equal to 1.03, although the end of the upper whisker, corresponding to Ra = 1.27, indicates in any case a “good” performance of the considered Zone.
- Zone 1 influences user behavior, but to a lesser extent than the other two Zones. The median of Ra, which is 1.15, is below the threshold of 1.5 and, thus, representative of a “good” condition, but is significantly higher than the values for the other two Zones. Additionally, in this case, 50% of the Ra values (height of the box) are distributed in a range with reduced amplitude (equal to 0.37) between the extreme values of 0.93 and 1.3. However, the analysis of the whiskers of the boxplot shows how the fourth quartile of the distribution, bounded above by the value 1.66, indicates that the area in question induces a certain number of users to reach speeds well above the average value; in these cases, the Zone actually presents an “acceptable” operating condition, even if it is far from the one considered “poor”.
- Zone 2, although not able to guarantee the basic requirement of a Zone 30, i.e., the respect of the speed limit, is characterized by the presence of TCMs suitable to influence the behavior of road users, who are induced to travel through the Zone without particular variations compared to the average speed, which is always below 40 km/h. This means that this design solution could be suitable to be installed in a context where it is necessary to respect a speed limit higher than 30 km/h (e.g., a 40 zone).
- The TCMs in Zone 2 are of the same type (vertical misalignments) as in Zone 1 and differ in that the height of the speed boards is 4 cm in Zone 2 and 8 cm in Zone 1. This difference in height speaks in favor of the effectiveness of Zone 1, which is largely acceptable in terms of compliance with the speed limit and can also ensure good uniformity of speed.
- Zone 3, similar to Zone 1, guarantees compliance with the 30 km/h speed limit, although at a lower level of acceptance. On the other hand, Zone 3 offers the best performance in terms of uniformity of speed (100% of Ra indicator values are well below the “Good” threshold).
5. Conclusions
- (1)
- It is possible to compare different design solutions and better understand their effectiveness, also in terms of reproducibility within the same site or in terms of implementation in urban contexts that one wants to adapt, for example, by establishing a Zone 30;
- (2)
- If the proposed methodology is applied internationally to evaluate the effectiveness of TCMs in different urban contexts and the results are made publicly available, an important database could be created within a reasonable period of time. Thanks to this database, the values of and Ra corresponding to the different design configurations would be clearly known. In this way, the values of the two effectiveness indicators would be available for the different types of traffic calming measures (e.g., chicanes, speed tables, speed bumps, chokers, etc.) and their installation criteria (e.g., distance between bumps, characteristic length of the chicane, extent of narrowing). These indicators could, thus, be used as reference parameters in new designs or in functional adaptation measures;
- (3)
- Achieving the objectives mentioned in the previous two points (comparison of different design solutions and creation of a reference database) can also be carried out using design scenarios created in simulated environments. The SPEIR methodology could be tested in virtual environments and, once validated, used to characterize different simulated configurations in which traffic calming measures are present through the proposed effectiveness indicators.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Effectiveness Indicators | Good | Acceptable | Poor |
---|---|---|---|
Accumulated speeding (m/s) | ≤ 0.7 | 0.7 < < 1.0 | ≥ 1.0 |
Accumulated speed uniformity Ra (m/s) | Ra ≤ 1.0 | 1.0 < Ra < 2.0 | Ra ≥ 2.0 |
Site | Speed Limit [km/h] | Length [m] | N. of Speed Profiles | Save [km/h] | Ra(min) [m/s] | Ra(max) [m/s] | Ra(85) [m/s] | [m/s] | [m/s] | [m/s] |
---|---|---|---|---|---|---|---|---|---|---|
ZONE 1 | 30 | 447 | 20 | 30.00 | 0.78 | 1.66 | 1.32 | 0.51 | 1.04 | 0.91 |
ZONE 2 | 30 | 196 | 20 | 34.89 | 0.25 | 1.28 | 0.88 | 0.66 | 1.61 | 1.39 |
ZONE 3 | 30 | 280 | 20 | 32.84 | 0.36 | 1.03 | 0.87 | 0.55 | 1.41 | 1.06 |
Distribution (ZONE 1) | Statistic | Std. Error |
Mean | 0.769990 | 0.0312493 |
Median | 0.749350 | |
Variance | 0.020 | |
Std. Deviation | 0.1397513 | |
Minimum | 0.5154 | |
Maximum | 1.0438 | |
Range | 0.5284 | |
Distribution (ZONE 2) | Statistic | Std. Error |
Mean | 1.138506 | 0.0547420 |
Median | 1.113268 | |
Variance | 0.060 | |
Std. Deviation | 0.2448137 | |
Minimum | 0.6640 | |
Maximum | 1.6167 | |
Range | 0.9527 | |
Distribution (ZONE 3) | Statistic | Std. Error |
Mean | 0.894378 | 0.0483706 |
Median | 0.923961 | |
Variance | 0.047 | |
Std. Deviation | 0.2163197 | |
Minimum | 0.5567 | |
Maximum | 1.4184 | |
Range | 0.8617 |
Ra Distribution (ZONE 1) | Statistic | Std. Error |
Mean | 1.129056 | 0.0527978 |
Median | 1.155217 | |
Variance | 0.056 | |
Std. Deviation | 0.2361188 | |
Minimum | 0.7866 | |
Maximum | 1.6668 | |
Range | 0.8801 | |
Ra Distribution (ZONE 2) | Statistic | Std. Error |
Mean | 0.656615 | 0.0607425 |
Median | 0.620068 | |
Variance | 0.074 | |
Std. Deviation | 0.2716487 | |
Minimum | 0.2557 | |
Maximum | 1.2856 | |
Range | 1.0300 | |
Ra Distribution (ZONE 3) | Statistic | Std. Error |
Mean | 0.692028 | 0.0414654 |
Median | 0.720154 | |
Variance | 0.034 | |
Std. Deviation | 0.1854391 | |
Minimum | 0.3681 | |
Maximum | 1.0318 | |
Range | 0.6637 |
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Distefano, N.; Leonardi, S. Evaluation of the Effectiveness of Traffic Calming Measures by SPEIR Methodology: Framework and Case Studies. Sustainability 2022, 14, 7325. https://doi.org/10.3390/su14127325
Distefano N, Leonardi S. Evaluation of the Effectiveness of Traffic Calming Measures by SPEIR Methodology: Framework and Case Studies. Sustainability. 2022; 14(12):7325. https://doi.org/10.3390/su14127325
Chicago/Turabian StyleDistefano, Natalia, and Salvatore Leonardi. 2022. "Evaluation of the Effectiveness of Traffic Calming Measures by SPEIR Methodology: Framework and Case Studies" Sustainability 14, no. 12: 7325. https://doi.org/10.3390/su14127325