Approach Methodology for Comprehensive Assessing the Public Passenger Transport Timetable Performances at a Regional Scale
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods Used to Compile Final Methodology
4. Developing Methodology for Assessing Network Connectivity
4.1. Determining a Transport Network
4.2. Identifying a Set of Transport Connections
4.3. Defining the Relevant Tariff Points on the Defined Transport Network
- average travel speed;
- average speed until the final stop; and
- average waiting time.
4.4. Selecting Search Engines for Transport Connections
4.5. Specifying the Assessment Qualitative Indicators
- Number of connectionsNs for the assessed day includes both direct lines and transfer lines. This indicates the number of alternatives divided over time that passengers have to travel from point A to B. The higher the number of transport connections between the selected locations (tariff points) A and B exist, the better the choice by the customer arises, and thus the greater potential of meeting the customer’s expectations occurs. As a rule, the need of a passenger to move from point A to point B arises at different time sequences throughout the day, however it is the most numerous in the early, as well as late afternoon rush hours. The necessary number of peak-to-peak (rush hour) connections must meet transportation requirements of passengers and, in particular, take into account the transport travel frequency for passengers.
- Average waiting timeWi refers to the amount of time spent by passengers waiting for a particular connection at the place of departure, or starting point. In regard to average waiting time of a passenger, there are two cases. First, a case when a passenger arrives at the point of departure just after the vehicle (train) departure, so he misses the transport connection, and thus is forced to wait for the next connection. The opposite case is when a passenger arrives at the point of departure just before the vehicle (train) departure, and is not forced to wait for the next connection. It is defined as half the time between the departure of two sequential connections:
- Connection distanceLi refers to the distance traveled in kilometers (mostly tariff) by the mode of transport used for a particular connection. This does not always mean that the shortest possible route for the connection is used. As a result, this criterion, together with that of transport time, is classified as less important.
- Kind and number of modes of transport that comprise a connection. This factor defines the quality of transport service connectivity.
- Transport timeTpi is calculated from the moment a passenger departs from their first starting point on the route to the moment of arrival at the final destination (tariff point). It is calculated as follows:
- Number of transfersNpi refers to the total number of transfers until the passenger reaches their final destination. This is the main criterion taken into account by passengers. Under ideal circumstances, the connection should be directly provided.
- Transfer timeTwi refers to the aggregate time that passengers spend waiting for the i-th connection at transfer points while traveling on a particular connection.
- Start-stop achieving timeTDi is calculated from the moment a passenger’s arrives at the stop at the tariff starting point from which they are due to begin their journey to the moment of arrival of the last taken connection at the final stop at the output tariff point. This amounts to the sum of the average waiting time and transport time.
- Travel speedVPi is calculated as the ratio of the traveled distance to the transport time.
- Start-stop achieving speedVDi is calculated as the ratio of the traveled distance to the start-stop achieving time.
5. Assessment of Individual Connections
- Option 1—Number of transfers;
- Option 2—Start-stop achieving time;
- Option 3—Travel speed; and
- Option 4—Start-stop achieving speed.
6. Assessment of Average Indicators within a Specific Route
7. Comprehensive Assessment of a Particular Indicator Within a Transport Network
- ØNps average number of transfers in the whole transport network;
- ∑∅Np total of average transfers of i-th route on the examined route; and
- n number of examined routes in the network.
- ØTds average start-stop achieving time for the whole transport network;
- ∑∅Tp sum of average transport time of i-th route on the examined route; and
- n number of examined routes in the network.
- ∅ VPs average travel speed across the whole transport network;
- ∑∅VP total of average speeds of i-th route during the test period; and
- n number of examined routes in the network.
- ∅VDs average start-stop achieving speed across the whole transport network;
- ∑∅Vp total of average speeds of i-th route within the examined period; and
- n number of examined routes in the network.
- ∅VD1 average start-stop achieving speed for the 1st examined route;
- nos1 number of transported passengers on the 1st route during the examined period;
- ∅VD2 average start-stop achieving speed for the 2nd examined route;
- nos2 number of transported passengers on the 2nd route during the examined period;
- ∅VDn average start-stop achieving speed for the i-th examined route;
- nosn number of transported passengers on the i-th route during the examined period; and
- nos total of number of transported passengers.
8. Obtained Results: Application of a Case Study
9. Discussion
- average number of transfers øNp = 1.9;
- average transfer time øTw = 46 min;
- average start-stop achieving time øTd = 6:20 h;
- travel speed øVP = 58.70 km.h−1; and
- start-stop achieving speed øVD = 47.83 km.h−1.
- average number of transfers across the whole transport network øNp = 2.10 transfers;
- average transfer time across the whole transport network øTw = 6.72 h;
- average start-stop achieving time across the whole transport network øTd = 45.30 km.h−1;
- start-stop achieving speed across the whole transport network øVD = 35.22 km.h−1; and
- start-stop achieving speed across the whole network weighed by number of passengers øVDos = 38.93 km.h−1.
10. Conclusions
- average number of transfers øNp;
- average transfer time øTw;
- average start-stop achieving time øTd;
- travel speed øVP;
- start-stop achieving speed øVD; and
- start-stop achieving speed weighed by number of passengers øVDos.
Availability of data and material
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Serial connection Number | Departure [hh:min] | Arrival [hh:min] | Average Waiting Time Wi [h] | Connection Distance Li [km] | Transport Means (types) | Transport Time Tp [h] | Number of Transfers Np | Transfer Time Tw [h] | Start-Stop Achieving Time Td [h] | Travel Speed VP [km.h−1] | Start-Stop Achieving Speed VD [km.h−1] |
---|---|---|---|---|---|---|---|---|---|---|---|
1 | 0:26 | 5:32 | 0.00 | 288 | EC, Os, Os | 5.10 | 2 | 1.03 | 5.10 | 56.47 | 56.47 |
2 | 0:26 | 7:10 | 2.08 | 288 | EC, Os | 6.73 | 1 | 2.65 | 8.81 | 42.77 | 32.70 |
3 | 4:35 | 9:31 | 1.08 | 288 | EN, R, Os | 4.93 | 2 | 0.80 | 6.02 | 58.38 | 47.87 |
4 | 6:45 | 11:31 | 1.00 | 288 | R, Os, Os | 4.77 | 2 | 0.40 | 5.77 | 60.42 | 49.94 |
5 | 8:45 | 13:31 | 1.29 | 288 | R, Os, Os | 4.77 | 2 | 0.40 | 6.06 | 60.42 | 47.54 |
6 | 11:20 | 15:31 | 0.71 | 288 | SC, Os, Os | 4.18 | 2 | 1.17 | 4.89 | 68.84 | 58.88 |
7 | 12:45 | 17:31 | 1.00 | 288 | R, Os, Os | 4.77 | 2 | 0.40 | 5.77 | 60.42 | 49.94 |
8 | 14:45 | 19:31 | 1.00 | 288 | R, Os, Os | 4.77 | 2 | 0.40 | 5.77 | 60.42 | 49.94 |
9 | 16:45 | 21:55 | 1.36 | 288 | R, Os, Os, Os | 5.17 | 3 | 0.88 | 6.53 | 55.74 | 44.14 |
10 | 19:28 | 0:02 | 2.48 | 288 | EC, Os | 4.57 | 1 | 0.58 | 7.05 | 63.07 | 40.85 |
Average route values | 1.9 | 0.77 | 6.18 | 58.70 | 47.83 |
Product of Number of Passengers and VD | Bánovce nad Bebravou | Banská Bystrica | Banská Štiavnica | Bardejov | … | Zvolen | Želiezovce | Žiar nad Hronom | Žilina |
---|---|---|---|---|---|---|---|---|---|
Bánovce nad Bebravou | 0.0 | 3867.8 | 933.7 | 0.0 | … | 1043.8 | 0.0 | 0.0 | 1524.5 |
Banská Bystrica | 2741.2 | 0.0 | 1256.8 | 0.0 | … | 24928.3 | 0.0 | 3909.5 | 8846.3 |
Banská Štiavnica | 0.0 | 345.9 | 0.0 | 0.0 | … | 3846.4 | 199.2 | 5864.2 | 1008.6 |
Bardejov | 0.0 | 0.0 | 0.0 | 0.0 | … | 2651.1 | 0.0 | 0.0 | 3337.1 |
… | … | … | … | … | … | … | … | … | … |
Zvolen | 0.0 | 34816.6 | 1007.7 | 0.0 | … | 0.0 | 0.0 | 6550.3 | 3753.2 |
Želiezovce | 2476.0 | 0.0 | 0.0 | 0.0 | … | 1008.6 | 0.0 | 0.0 | 4140.1 |
Žiar nad Hronom | 0.0 | 1023.0 | 0.0 | 0.0 | … | 12463.7 | 0.0 | 0.0 | 2149.8 |
Žilina | 3369.4 | 0.0 | 2260.2 | 0.0 | … | 33915.7 | 0.0 | 5579.5 | 0.0 |
Sum of VD across the whole network | 6118426.93 | ||||||||
Start-stop achieving speed across the whole network weighed by number of passengers. | 38.93 km.h−1 |
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Ľupták, V.; Droździel, P.; Stopka, O.; Stopková, M.; Rybicka, I. Approach Methodology for Comprehensive Assessing the Public Passenger Transport Timetable Performances at a Regional Scale. Sustainability 2019, 11, 3532. https://doi.org/10.3390/su11133532
Ľupták V, Droździel P, Stopka O, Stopková M, Rybicka I. Approach Methodology for Comprehensive Assessing the Public Passenger Transport Timetable Performances at a Regional Scale. Sustainability. 2019; 11(13):3532. https://doi.org/10.3390/su11133532
Chicago/Turabian StyleĽupták, Vladimír, Paweł Droździel, Ondrej Stopka, Mária Stopková, and Iwona Rybicka. 2019. "Approach Methodology for Comprehensive Assessing the Public Passenger Transport Timetable Performances at a Regional Scale" Sustainability 11, no. 13: 3532. https://doi.org/10.3390/su11133532
APA StyleĽupták, V., Droździel, P., Stopka, O., Stopková, M., & Rybicka, I. (2019). Approach Methodology for Comprehensive Assessing the Public Passenger Transport Timetable Performances at a Regional Scale. Sustainability, 11(13), 3532. https://doi.org/10.3390/su11133532