A Framework for Dynamic Advanced Traveler Information Systems
Abstract
:1. Introduction
2. Background
3. Logical Architecture of the Dynamic Advanced Traveler Information System (ATIS)
- USER CHARACTERISTICS (top left of the framework). The user defines the personal portfolio of holdings (box PORTFOLIO in the framework); here, the parameter n, which represents the number of available resources, is defined.
- INPUT OF THE PROCEDURE (bottom right of the framework). User’s query (box QUERY in the framework) enables two distinct procedures:
- 2a. In the simpler case of a single O/D pair, the system provides the mode alternative with the shortest travel time. Next, the portfolio is updated on the basis of the actual choice made by the user (dashed thick arrow from CHOICE to PORTFOLIO in the framework).
- 2b. In the more complex case of a set of activities, the set Ai is decomposed as previously indicated, and the most critical activity is identified. Through a simulation procedure, like in the case of single O/D pair, the optimal solution for the critical activity is identified. The choice of this alternative for the critical trip could binds the mode choice for the first trip of the chain (MODE COSTRAIN ON s1 in the framework).
- In this case, not only is the portfolio (as in the case of a single O/D pair) updated on the basis of the choice made, but also the set of activities (dashed thick arrow from CHOICE to Ai).
- 3.
- UPDATE (dashed thick arrow in the framework). Based on the choice made by the user i (box CHOICE in the framework) the update procedure occurs: portfolio update for the case 2a; portfolio and the set of activities for the case 2b.
4. Results from a Pilot Test in Rome (Italy)
- User portfolio acquisition from the survey;
- Evaluation of the critical trip according to user resources availability (portfolio);
- Evaluation of the best mode choice for the critical trip (constrain on the mode choice at the activity chain level);
- Calculation of the overall travel time spent for the activity chain proposed in the survey.
5. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Age | 18–25 | 26–35 | 36–45 | 46–55 | 56–65 | |
% | 3% | 53% | 17% | 3% | 23% | |
Household size | 1 | 2 | 3 | 4 | 5 | |
% | 7% | 20% | 23% | 47% | 3% | |
Driving licenses | ||||||
Household size | 1 | 2 | 3 | 4 | 5 | |
1 | 100% | - | - | - | - | |
2 | 17% | 83% | - | - | - | |
3 | - | 43% | 57% | - | - | |
4 | - | 36% | 43% | 21% | - | |
5 | - | - | - | - | 100% |
i | sj* | USER Choice (j*) | tj* USER (Min) | ATIS Choice (j*) | tj* ATIS (Min) | Tchain USER (Min) | Tchain ATIS (Min) | ∆Tchain |
---|---|---|---|---|---|---|---|---|
1 | L–H | Private Car | 30 | Private Car | 30 | 112 | 112 | 0.0% |
2 | L–H | Public Transport | 45 | Private Car | 35 | 142 | 110 | −22.5% |
3 | W–L–W | Private Car | 27 | Private Car | 27 | 130 | 130 | 0.0% |
4 | H–W | Private Car | 36 | Private Car | 36 | 123 | 123 | 0.0% |
5 | H–W | Private Car | 45 | Private Car | 45 | 137 | 137 | 0.0% |
6 | W–L | Private Car | 40 | Public Transport | 30 | 150 | 110 | −26.7% |
7 | W–L | Private Car | 40 | Public Transport | 35 | 170 | 120 | −29.4% |
8 | L–H | Public Transport | 80 | Private Car | 45 | 180 | 165 | −8.3% |
9 | W–L | Private Car | 40 | Public Transport | 35 | 150 | 120 | −20.0% |
10 | H–W | Private Car | 50 | Private Car | 50 | 158 | 158 | 0.0% |
11 | L–H | Private Car | 48 | Private Car | 48 | 166 | 166 | 0.0% |
12 | H–W | Private Car | 45 | Private Car | 45 | 153 | 153 | 0.0% |
13 | H–W | Private Car | 60 | Private Car | 60 | 160 | 160 | 0.0% |
14 | W–L | Private Car | 40 | Public Transport | 38 | 145 | 118 | −18.6% |
15 | L–H | Private Car | 40 | Private Car | 40 | 155 | 155 | 0.0% |
16 | W–L | Private Car | 40 | Public Transport | 38 | 145 | 128 | −11.7% |
17 | W–L | Private Car | 40 | Public Transport | 38 | 145 | 141 | −2.8% |
18 | W–L | Private Car | 40 | Public Transport | 38 | 140 | 131 | −6.4% |
19 | W–L | Public Transport | 38 | Public Transport | 38 | 128 | 128 | 0.0% |
20 | W–H | Public Transport | 38 | Public Transport | 38 | 118 | 118 | 0.0% |
21 | H–W | Private Car | 55 | Private Car | 55 | 170 | 170 | 0.0% |
22 | L–H | Private Car | 55 | Private Car | 55 | 163 | 163 | 0.0% |
23 | H–W | Private Car | 65 | Private Car | 65 | 190 | 190 | 0.0% |
24 | H–W | Private Car | 65 | Private Car | 65 | 175 | 175 | 0.0% |
25 | H–W | Public Transport | 57 | Private Car | 53 | 180 | 171 | −5.0% |
26 | W–L–W | Private Car | 45 | Public Transport | 40 | 172 | 144 | −16.3% |
27 | W–L–W | Public Transport | 40 | Private Car | 37 | 163 | 122 | −25.2% |
28 | W–L–W | Public Transport | 40 | Private Car | 37 | 167 | 127 | −24.0% |
29 | H–W | Public Transport | 45 | Private Car | 42 | 151 | 141 | −6.6% |
30 | H–W | Public Transport | 38 | Public Transport | 38 | 141 | 141 | 0.0% |
TOTAL | 4579 | 4227 | −7.7% |
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Carrese, F.; Carrese, S.; Patella, S.M.; Petrelli, M.; Sportiello, S. A Framework for Dynamic Advanced Traveler Information Systems. Future Transp. 2021, 1, 590-600. https://doi.org/10.3390/futuretransp1030031
Carrese F, Carrese S, Patella SM, Petrelli M, Sportiello S. A Framework for Dynamic Advanced Traveler Information Systems. Future Transportation. 2021; 1(3):590-600. https://doi.org/10.3390/futuretransp1030031
Chicago/Turabian StyleCarrese, Filippo, Stefano Carrese, Sergio Maria Patella, Marco Petrelli, and Simone Sportiello. 2021. "A Framework for Dynamic Advanced Traveler Information Systems" Future Transportation 1, no. 3: 590-600. https://doi.org/10.3390/futuretransp1030031
APA StyleCarrese, F., Carrese, S., Patella, S. M., Petrelli, M., & Sportiello, S. (2021). A Framework for Dynamic Advanced Traveler Information Systems. Future Transportation, 1(3), 590-600. https://doi.org/10.3390/futuretransp1030031