Sustainable Traffic Management in an Urban Area: An Integrated Framework for Real-Time Traffic Control and Route Guidance Design
Abstract
:1. Introduction and Motivation
- The design of decision/control variables for network control and link control;
- The day-to-day updating behavior of users under the route guidance information system;
- The development of the whole framework based on combinations of TC and RG.
2. State of Play and Research Goals
- The route choice, the learning process modeling, and the traveler reactions to information;
- The anticipatory route guidance problem, which affects the consistency between the experienced travel times and the provided information, as well as accurate information design;
- How traveler behaviors affect network convergence and the stability of the achieved solution.
3. Solution Approach and Implementation
3.1. General Overview
- (1)
- A within-day module for TC;
- (2)
- A choice model which implicitly simulates the RG effect in terms of compliance within the RG module;
- (3)
- An iterative procedure for anticipatory route guidance which is able to model the consistency between user behavior and traffic signal decision variables, the consistency between information (EsTTt) and user behavior (ETTt − 1), and focus on information reliability (ERt − 1);
- (4)
- A microscopic traffic flow model able to jointly simulate the effect of users’ preferences and decision variable optimizations.
3.2. Traffic Control
3.3. Day-to-Day Behavioral Modelling
- AtLeastOneUnrel: A binary variable that equals 1 if the information system has not been reliable in the previous three days, otherwise zero;
- SuggRouteIncr: The difference between the suggested route actual travel time at day t − 1 and the average value of the actual travel times of all routes suggested during the previous five days;
- Consec: An attribute synthesizing the consistency between the most chosen route by the traveler during the previous 5 days and the route suggested during day t (the current day);
- NotPreferredSugg: A performance measure over the last five days of the suggested route if different (then not preferred) from the route chosen by the traveler during the previous day;
- FreqChosen: An attribute summarizing the consistency between the frequency of choice of the suggested route with respect to the previous five days;
- FreqConc: An attribute representing the consistency between choices made by a traveler and the suggested information with respect to the previous five days.
3.4. Day-to-Day Behavioral Modelling
4. Application
5. Numerical Results and Discussion
- Do nothing (DN), which is the current scenario, in which travelers are not provided with information;
- Forced rerouting (FR), where the whole system simulates a forced rerouting strategy (to alternative route 2) and this is implemented when the length of the queue observed directly in the tunnel is higher than a specific value. This scenario refers to the case in which users are provided with prescriptive information, but the alternative route is temporarily closed off to drivers;
- Modeled compliance (MC), where the proposed TC-RG framework is implemented and a disaggregate compliance model is applied in order to reproduce the users’ outcomes coherently with their reaction to the information. It must be clarified that the most relevant users are considered systematic. The resulting compliance of this scenario is evaluated though the provided analyses;
- Parametric high compliance (PC-H), in which the value of compliance is equal to 60%. This scenario is intended to act as a sensitivity analysis, in the case of a high rate of compliance. This scenario corresponds to the case of highly accurate information, and, therefore, high rates of compliant users are expected.
5.1. DN Scenario versus MC Scenario: Benefits of the Modeled Compliance Scenario
- The do nothing [DN] scenario;
- The modeled compliance [MC] scenario;
5.2. Further Analyses: FR and PC-H Scenarios
- forced rerouting [FR];
- parametric high compliance [PC-H].
5.3. Environmental Impact Analysis: Emissions and Fuel Consumption Evaluation
6. Conclusions and Future Perspectives
- (i)
- The whole framework proposed is able to provide more effective results then other frameworks, as observed through the values of the considered performance indicators;
- (ii)
- The TC-RG approach is able to guarantee system convergence and the stability of the achieved solution;
- (iii)
- In accordance with the literature (e.g., [13]), the analysis of the compliance evolution over the analyzed days clearly shows a consistent value of compliance in the case of system stabilization.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References and Note
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Holding Model | ||
---|---|---|
Pseudo-ρ2 | 0.387 | |
Final log-likelihood | −1088.787 | |
(Var[])1 | 1.55 (7.75) | |
Compliant | Not-Compliant | |
ASA | +1.07 (+4.17) | |
AtLeastOneUnrel | +0.87 (+1.50) | |
SuggRouteIncr | +0.80 (+1.16) | |
NotPreferredSugg | +1.48 (+4.78) | |
FreqConc | +1.47 (+4.88) | |
Consec | +2.64 (+5.42) |
Path | f [veh/h] |
---|---|
1375 [→] | |
650 [→] | |
970 [←] | |
285 [←] |
Path 1 | Path 2 |
---|---|
−23.15% | −16.53% |
day | TT path 1 [min] | St.dev. | TTpath 2 [min] | St.dev. |
---|---|---|---|---|
20 | 26.86 | 2.91 | 22.42 | 2.03 |
21 | 25.27 | 2.20 | 21.65 | 1.83 |
22 | 23.48 | 2.24 | 23.24 | 1.92 |
23 | 22.28 | 2.16 | 24.43 | 1.84 |
24 | 23.03 | 2.21 | 25.12 | 2.02 |
25 | 23.63 | 2.48 | 24.03 | 1.70 |
26 | 24.31 | 2.18 | 24.89 | 1.84 |
27 | 25.61 | 2.44 | 23.18 | 1.65 |
28 | 26.70 | 1.92 | 21.28 | 1.78 |
29 | 25.57 | 1.75 | 22.09 | 1.65 |
30 | 24.01 | 1.40 | 22.45 | 1.29 |
31 | 23.48 | 1.41 | 22.90 | 1.30 |
32 | 23.56 | 1.39 | 22.19 | 1.28 |
33 | 23.54 | 1.38 | 22.21 | 1.29 |
34 | 23.51 | 1.37 | 22.14 | 1.26 |
35 | 23.54 | 1.39 | 22.18 | 1.30 |
36 | 23.59 | 1.36 | 22.25 | 1.32 |
37 | 23.39 | 1.40 | 22.29 | 1.29 |
38 | 23.49 | 1.41 | 22.30 | 1.34 |
39 | 23.60 | 1.37 | 22.40 | 1.27 |
40 | 23.50 | 1.39 | 22.29 | 1.31 |
ID SCENARIO | Path 1 | Path 2 |
---|---|---|
MC | −23.15% | −16.53% |
PC-H | −15.26% | 0.82% |
[PC-H] | [MC] | ||
---|---|---|---|
Emissions | CO | −30.3% | −50.0% |
CO2 | −39.8% | −59.9% | |
NOX | −28.3% | −59.8% | |
HC | −44.4% | −50.0% | |
PMx | −25.0% | −50.0% | |
Mean | −33.6% | −53.9% | |
Fuel consumed | −40.0% | −50.0% |
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de Luca, S.; Di Pace, R.; Memoli, S.; Pariota, L. Sustainable Traffic Management in an Urban Area: An Integrated Framework for Real-Time Traffic Control and Route Guidance Design. Sustainability 2020, 12, 726. https://doi.org/10.3390/su12020726
de Luca S, Di Pace R, Memoli S, Pariota L. Sustainable Traffic Management in an Urban Area: An Integrated Framework for Real-Time Traffic Control and Route Guidance Design. Sustainability. 2020; 12(2):726. https://doi.org/10.3390/su12020726
Chicago/Turabian Stylede Luca, Stefano, Roberta Di Pace, Silvio Memoli, and Luigi Pariota. 2020. "Sustainable Traffic Management in an Urban Area: An Integrated Framework for Real-Time Traffic Control and Route Guidance Design" Sustainability 12, no. 2: 726. https://doi.org/10.3390/su12020726
APA Stylede Luca, S., Di Pace, R., Memoli, S., & Pariota, L. (2020). Sustainable Traffic Management in an Urban Area: An Integrated Framework for Real-Time Traffic Control and Route Guidance Design. Sustainability, 12(2), 726. https://doi.org/10.3390/su12020726