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WhenWhenWhenWhen and where are busand where are busand where are busand where are bus
express servicesexpress servicesexpress servicesexpress services justified?justified?justified?justified?
Homero Larrain, Juan Carlos Muñoz
Pontificia Universidad Católica de Chile
:):( :(
What is an express service?
Travel times?
Waiting times?
Transfers?
Operation costs?
:)
:(
:(
:)
source: brtdata.org
39 countries 168 cities 324 corridors
Around the world
Corridor Generation Service Optimization Regression Model
When to provide express services?
Our experiment in three steps:
0%
10%
20%
30%
40%
50%
60%
70%
0% 10% 20% 30% 40% 50% 60% 70%
1. Conceptualization of the experiment.
2. Generation of scenarios.
3. Algorithm for the design of express services.
4. Calibration of the regression model.
5. Analysis of the results and conclusions.
Conceptualization
Which effects do we need to capture in our scenarios?
How will we measure the benefits of express services?
Conceptualization
Previous literature has pointed out some relevant factors when designing
express services:
1. Demand characteristics.
Trip volume, trip lenght, trip concentration.
2. Operation conditions.
Dwell time, vehicle capacity, corridor length.
3. Relative weights of cost components.
Operator costs, value of travel time, value of waiting time.
Conceptualization
For measuring the benefits of the express services on each scenario, we propose
the corrected percentage savings (‫)ܵܲܥ‬ as a performance indicator.
This indicator compares the corrected total cost (‫)ܥܶܥ‬ of the express services
solution and the optimized single all-stop service solution for the scenario.
The corrected total cost subtracts the minimum travel time costs from the total
cost.
‫ܵܲܥ‬ =
‫ܥܶܥ‬∗
− ‫ܥܶܥ‬஺ௌ
‫ܥܶܥ‬஺ௌ
Scenarios
A scenario corresponds to a corridor, defined by its topological characteristics,
demand matrix, operation conditions, and user preferences.
We generated 972 scenarios covering different combinations of attributes.
Parameter Number of options Possible values
Base matrix 4 1, 2, 3 or 4
In-vehicle travel time (ࣂࢀࢀ) 1 15 $/min
Wait time (ࣂࢃࢀ) 3 15, 30 or 45 $/min
Operating cost - distance (ࢉࡸ) 3 250, 500 or 750 $/bus-Km
Operating cost - time (ࢉࢀ) 1* 10c୐ $/bus-min
Demand volume (ࢼ) 3 0.5, 1.0, 2.0
Dwell time (࣎) 3 0.5, 1.0, 1.5 min
Vehicle capacity (࢈) 3 80, 120, 160 pax/bus
Scenarios
The four base matrices are inspired in real data from Santiago.
-10000
-5000
0
5000
10000
15000
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31 33 35 37 39
-10000
-5000
0
5000
10000
15000
pax/h
Bus Stop
Trips generated Trips attracted Passenger Load Profile
Scenarios
The four base matrices are inspired in real data from Santiago.Matrix
No.ofstops
Corridor
Totaltrips
(pax/hr)
Stddev
(pax/hr)
Av.no.of
trips(pax/hr)
Coeff.ofvar.
Av.triplength
(instops)
Criticalload
(pax/hr)
1 10 Grecia 37,728 507.0 419.2 1.2 3.2 13,392
2 10 Pajaritos 20,546 673.7 228.3 3.0 5.1 14,119
3 20 Grecia 38,744 205.9 102.0 2.0 6.3 13,400
4 20 Pajaritos 20,453 176.0 53.8 3.3 10.6 14,101
Design algorithm
Express Service Design for a Corridor
Frequency
Optimization
Service
Generation
Design algorithm
…
…
…
…
…
…
f1
f2
f3
f4
fn
The model determines which services will operate (݂௟ > 0).
min
௙೗,௙೗
ೞ,௏ೞ
ೢ
෍ ܿ௟݂௟
௟∈ℒ
+ ߠௐ் ෍ ܶ௪
ߣ
∑ ݃௟
௪
௟∈ℒ௪∈ࣱ
+ ߠ்் ෍ ܶ௪
∑ ‫ݐ‬௟
௪
݃௟
௪
௟∈ℒ
∑ ݃௟
௪
௟∈ℒ௪∈ࣱ
operation costs + waiting costs + traveling costs
s.t.: non-negativity, frequency continuity.
Frequency optimization:
Design algorithm
Frequency optimization:
• The model minimizes social costs and assigns passengers to their
optimal routes.
• Bus capacity is considered indirectly, using a heuristic to correct the
capacity deficits from an initial solution.
• Transfers are not considered in the modelation in this experiment.
Design algorithm
Service generation:
Name
Capacity
constraints
Shortor
zonal
Existing
services
Description
ࡳࡱࡺ૚ No No No
Generation of initial services: Using a greedy heuristic, chooses an all-stop service and
sequentially eliminate some of them on a local optimality criterion, thus generating an
initial list of express services.
ࡳࡱࡺ૛ No Yes No Generation of short services: Builds a list of short turn services.
ࡳࡱࡺ૜ No Yes No
Generation of zonal services: Builds a list of zonal services that visit a complete set of
stops in the initial and final segments or zones of a route while skipping a large number
of consecutive stops constituting the middle zone.
ࡳࡱࡺ૝ No No Yes
Generation of additional services: Builds a series of new express services for a corridor
from a given solution. The services are created by adding stops to an initial base
service.
ࡳࡱࡺࢉ૚ Yes Yes No
Short service considering capacity: Builds a solution that satisfies the capacity
constraint using a short service and an all-top service in the critical direction of the
corridor.
ࡳࡱࡺࢉ૛ Yes Yes No
Zonal service considering capacity: Builds a solution that satisfies the capacity
constraint using a zonal service and a regular service in the critical direction of the
corridor.
ࡳࡱࡺࢉ૜ Yes Yes No
Zonal service considering capacity: Builds a solution that satisfies the capacity
constraint using a zonal service, a short service and an all-top service in the critical
direction of the corridor.
Regression model
After optimizing the 972 scenarios using our design model, the following
regression model was calibrated to predict the express services benefits:
‫ܵܲܥ‬ = ߙ଴ + ߙଵܲܶܶܵ + ߙଶ‫ܸܥ‬ + ߙଷܱ‫ܫ‬ + ߙସܿ௅ + ߙହ߬
Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic)
ࢻ૙ - Constant -1,41E-01 (-18,67)
ࢻ૚ ܲܶܶܵ Potential Travel Time Savings ܲܶܶܵ = ߠ்்߬ܵ݇ܶ 2,58E-08 (27,15)
ࢻ૛ ‫ܸܥ‬ Coefficient of Variation ‫ܸܥ‬ =
ߪ௪
ܶ௪
8,41E-02 (38,39)
ࢻ૜ ܱ‫ܫ‬ Overcrowding Indicator ܱ‫ܫ‬ =
݂∗
݂஺ௌ
∗ =
ܲ ܾ⁄
ߠௐ்ߣܶ
ܿ஺ௌ
3,24E-02 (19,24)
ࢻ૝ ܿ௅ Operation Cost per unit of Length ܿ௅ -9,35E-06 (-24,48)
ࢻ૞ ߬ Dwell Time ߬ 1,21E-01 (25,56)
ࡾ૛ - 86.90%
Analysis
Potential travel time savings:
Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic)
ࢻ૚ ܲܶܶܵ Potential Travel Time Savings ܲܶܶܵ = ߠ்்߬ܵ݇ܶ 2,58E-08 (27,15)
The benefits from using express services will increase with ܲܶܶܵ, which in turn
increases with:
• Value of travel time.
• The number of stops per trip. This variable is also correlated with the average
trip length and the stop density.
• The total number of trips.
• Dwell time. This factor influences the regression in its own right, and does so
in the same direction in both cases. The greater the dwell time, the greater is
the incentive to use express services.
Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic)
ࢻ૞ ߬ Dwell Time ߬ 1,21E-01 (25,56)
Analysis
Trip concentration:
Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic)
ࢻ૛ ‫ܸܥ‬ Coefficient of Variation ‫ܸܥ‬ =
ߪ௪
ܶ௪
8,41E-02 (38,39)
The benefits from using express services will increase with the coefficient of
variation, which can be understood as an indicator of trip concentration.
Analysis
Overcrowding factor:
Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic)
ࢻ૜ ‫ܫܥ‬ Overcrowding Indicator ܱ‫ܫ‬ =
݂∗
݂஺ௌ
∗ =
ܲ ܾ⁄
ߠௐ்ߣܶ
ܿ஺ௌ
3,24E-02 (19,24)
Express services are more beneficial when ܱ‫ܫ‬ is higher. Assuming that the
critical load is proportional to the total number of trips (i.e. ܲ = ݇ܶ), we can
conclude that express services work better when:
• The critical arc load relative to total trips is higher.
• Vehicle capacity is lower.
• Wait time value is lower.
• Increasing number of total trips. This effect agrees the one found in ܲܶܶܵ.
• Operation costs are higher… maybe.
Analysis
Operation costs:
Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic)
ࢻ૝ ܿ௅ Operation Cost per unit of Length ܿ௅ -9,35E-06 (-24,48)
This effect contradicts the one found in the ܱ‫.ܫ‬ We can analyze the combined
effect:
Since ߙସ < 0, we can’t decide in general what’s the effect of operation costs.
ߜ‫ܵܲܥ‬
ߜܿ஺ௌ
= ߙଷ
ܲ
2ܾ ܿ஺ௌߠௐ்ߣܶ
+ ߙସ
Conclusions
So…
When should we provide express services?
Conclusions
Express services become more attractive in presence of:
Increasing system
demand Increasing Dwell Times
Decreasing vehicle
capacity
sources: emol.cl, latercera.com, cooperativa.cl, biobiochile.cl, radio.uchile.cl, soychile.cl
Conclusions
Express services become more attractive in presence of:
Increasing trip length
sources: emol.cl, latercera.com, cooperativa.cl, biobiochile.cl, radio.uchile.cl, soychile.cl
Increasing trip
concentration
Increasing critical arc
load
Conclusions
Express services become more attractive in presence of:
Increasing value of
travel time
Decreasing value of
waiting time
sources: emol.cl, latercera.com, cooperativa.cl, biobiochile.cl, radio.uchile.cl, soychile.cl
Conclusions
Next steps:
• Including transfers in the design model, in order to measure the impact of
transfer costs in the potential benefit of express services.
• Studying the effect of modelling passenger assingment as a stochastic
process, to give robustness to the results.
• Taking into account other types of capacity limitations, such as number of
bays, station size, or capacity at intersections.
WhenWhenWhenWhen and where are busand where are busand where are busand where are bus
express servicesexpress servicesexpress servicesexpress services justified?justified?justified?justified?
Homero Larrain, Juan Carlos Muñoz
Pontificia Universidad Católica de Chile

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When and where are bus express services justified?

  • 1. WhenWhenWhenWhen and where are busand where are busand where are busand where are bus express servicesexpress servicesexpress servicesexpress services justified?justified?justified?justified? Homero Larrain, Juan Carlos Muñoz Pontificia Universidad Católica de Chile
  • 2. :):( :( What is an express service? Travel times? Waiting times? Transfers? Operation costs? :) :( :( :)
  • 3. source: brtdata.org 39 countries 168 cities 324 corridors Around the world
  • 4. Corridor Generation Service Optimization Regression Model When to provide express services? Our experiment in three steps: 0% 10% 20% 30% 40% 50% 60% 70% 0% 10% 20% 30% 40% 50% 60% 70% 1. Conceptualization of the experiment. 2. Generation of scenarios. 3. Algorithm for the design of express services. 4. Calibration of the regression model. 5. Analysis of the results and conclusions.
  • 5. Conceptualization Which effects do we need to capture in our scenarios? How will we measure the benefits of express services?
  • 6. Conceptualization Previous literature has pointed out some relevant factors when designing express services: 1. Demand characteristics. Trip volume, trip lenght, trip concentration. 2. Operation conditions. Dwell time, vehicle capacity, corridor length. 3. Relative weights of cost components. Operator costs, value of travel time, value of waiting time.
  • 7. Conceptualization For measuring the benefits of the express services on each scenario, we propose the corrected percentage savings (‫)ܵܲܥ‬ as a performance indicator. This indicator compares the corrected total cost (‫)ܥܶܥ‬ of the express services solution and the optimized single all-stop service solution for the scenario. The corrected total cost subtracts the minimum travel time costs from the total cost. ‫ܵܲܥ‬ = ‫ܥܶܥ‬∗ − ‫ܥܶܥ‬஺ௌ ‫ܥܶܥ‬஺ௌ
  • 8. Scenarios A scenario corresponds to a corridor, defined by its topological characteristics, demand matrix, operation conditions, and user preferences. We generated 972 scenarios covering different combinations of attributes. Parameter Number of options Possible values Base matrix 4 1, 2, 3 or 4 In-vehicle travel time (ࣂࢀࢀ) 1 15 $/min Wait time (ࣂࢃࢀ) 3 15, 30 or 45 $/min Operating cost - distance (ࢉࡸ) 3 250, 500 or 750 $/bus-Km Operating cost - time (ࢉࢀ) 1* 10c୐ $/bus-min Demand volume (ࢼ) 3 0.5, 1.0, 2.0 Dwell time (࣎) 3 0.5, 1.0, 1.5 min Vehicle capacity (࢈) 3 80, 120, 160 pax/bus
  • 9. Scenarios The four base matrices are inspired in real data from Santiago. -10000 -5000 0 5000 10000 15000 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31 33 35 37 39 -10000 -5000 0 5000 10000 15000 pax/h Bus Stop Trips generated Trips attracted Passenger Load Profile
  • 10. Scenarios The four base matrices are inspired in real data from Santiago.Matrix No.ofstops Corridor Totaltrips (pax/hr) Stddev (pax/hr) Av.no.of trips(pax/hr) Coeff.ofvar. Av.triplength (instops) Criticalload (pax/hr) 1 10 Grecia 37,728 507.0 419.2 1.2 3.2 13,392 2 10 Pajaritos 20,546 673.7 228.3 3.0 5.1 14,119 3 20 Grecia 38,744 205.9 102.0 2.0 6.3 13,400 4 20 Pajaritos 20,453 176.0 53.8 3.3 10.6 14,101
  • 11. Design algorithm Express Service Design for a Corridor Frequency Optimization Service Generation
  • 12. Design algorithm … … … … … … f1 f2 f3 f4 fn The model determines which services will operate (݂௟ > 0). min ௙೗,௙೗ ೞ,௏ೞ ೢ ෍ ܿ௟݂௟ ௟∈ℒ + ߠௐ் ෍ ܶ௪ ߣ ∑ ݃௟ ௪ ௟∈ℒ௪∈ࣱ + ߠ்் ෍ ܶ௪ ∑ ‫ݐ‬௟ ௪ ݃௟ ௪ ௟∈ℒ ∑ ݃௟ ௪ ௟∈ℒ௪∈ࣱ operation costs + waiting costs + traveling costs s.t.: non-negativity, frequency continuity. Frequency optimization:
  • 13. Design algorithm Frequency optimization: • The model minimizes social costs and assigns passengers to their optimal routes. • Bus capacity is considered indirectly, using a heuristic to correct the capacity deficits from an initial solution. • Transfers are not considered in the modelation in this experiment.
  • 14. Design algorithm Service generation: Name Capacity constraints Shortor zonal Existing services Description ࡳࡱࡺ૚ No No No Generation of initial services: Using a greedy heuristic, chooses an all-stop service and sequentially eliminate some of them on a local optimality criterion, thus generating an initial list of express services. ࡳࡱࡺ૛ No Yes No Generation of short services: Builds a list of short turn services. ࡳࡱࡺ૜ No Yes No Generation of zonal services: Builds a list of zonal services that visit a complete set of stops in the initial and final segments or zones of a route while skipping a large number of consecutive stops constituting the middle zone. ࡳࡱࡺ૝ No No Yes Generation of additional services: Builds a series of new express services for a corridor from a given solution. The services are created by adding stops to an initial base service. ࡳࡱࡺࢉ૚ Yes Yes No Short service considering capacity: Builds a solution that satisfies the capacity constraint using a short service and an all-top service in the critical direction of the corridor. ࡳࡱࡺࢉ૛ Yes Yes No Zonal service considering capacity: Builds a solution that satisfies the capacity constraint using a zonal service and a regular service in the critical direction of the corridor. ࡳࡱࡺࢉ૜ Yes Yes No Zonal service considering capacity: Builds a solution that satisfies the capacity constraint using a zonal service, a short service and an all-top service in the critical direction of the corridor.
  • 15. Regression model After optimizing the 972 scenarios using our design model, the following regression model was calibrated to predict the express services benefits: ‫ܵܲܥ‬ = ߙ଴ + ߙଵܲܶܶܵ + ߙଶ‫ܸܥ‬ + ߙଷܱ‫ܫ‬ + ߙସܿ௅ + ߙହ߬ Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic) ࢻ૙ - Constant -1,41E-01 (-18,67) ࢻ૚ ܲܶܶܵ Potential Travel Time Savings ܲܶܶܵ = ߠ்்߬ܵ݇ܶ 2,58E-08 (27,15) ࢻ૛ ‫ܸܥ‬ Coefficient of Variation ‫ܸܥ‬ = ߪ௪ ܶ௪ 8,41E-02 (38,39) ࢻ૜ ܱ‫ܫ‬ Overcrowding Indicator ܱ‫ܫ‬ = ݂∗ ݂஺ௌ ∗ = ܲ ܾ⁄ ߠௐ்ߣܶ ܿ஺ௌ 3,24E-02 (19,24) ࢻ૝ ܿ௅ Operation Cost per unit of Length ܿ௅ -9,35E-06 (-24,48) ࢻ૞ ߬ Dwell Time ߬ 1,21E-01 (25,56) ࡾ૛ - 86.90%
  • 16. Analysis Potential travel time savings: Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic) ࢻ૚ ܲܶܶܵ Potential Travel Time Savings ܲܶܶܵ = ߠ்்߬ܵ݇ܶ 2,58E-08 (27,15) The benefits from using express services will increase with ܲܶܶܵ, which in turn increases with: • Value of travel time. • The number of stops per trip. This variable is also correlated with the average trip length and the stop density. • The total number of trips. • Dwell time. This factor influences the regression in its own right, and does so in the same direction in both cases. The greater the dwell time, the greater is the incentive to use express services. Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic) ࢻ૞ ߬ Dwell Time ߬ 1,21E-01 (25,56)
  • 17. Analysis Trip concentration: Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic) ࢻ૛ ‫ܸܥ‬ Coefficient of Variation ‫ܸܥ‬ = ߪ௪ ܶ௪ 8,41E-02 (38,39) The benefits from using express services will increase with the coefficient of variation, which can be understood as an indicator of trip concentration.
  • 18. Analysis Overcrowding factor: Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic) ࢻ૜ ‫ܫܥ‬ Overcrowding Indicator ܱ‫ܫ‬ = ݂∗ ݂஺ௌ ∗ = ܲ ܾ⁄ ߠௐ்ߣܶ ܿ஺ௌ 3,24E-02 (19,24) Express services are more beneficial when ܱ‫ܫ‬ is higher. Assuming that the critical load is proportional to the total number of trips (i.e. ܲ = ݇ܶ), we can conclude that express services work better when: • The critical arc load relative to total trips is higher. • Vehicle capacity is lower. • Wait time value is lower. • Increasing number of total trips. This effect agrees the one found in ܲܶܶܵ. • Operation costs are higher… maybe.
  • 19. Analysis Operation costs: Parameter Variable Description Formula ࢻ࢏ value (࢚ statistic) ࢻ૝ ܿ௅ Operation Cost per unit of Length ܿ௅ -9,35E-06 (-24,48) This effect contradicts the one found in the ܱ‫.ܫ‬ We can analyze the combined effect: Since ߙସ < 0, we can’t decide in general what’s the effect of operation costs. ߜ‫ܵܲܥ‬ ߜܿ஺ௌ = ߙଷ ܲ 2ܾ ܿ஺ௌߠௐ்ߣܶ + ߙସ
  • 20. Conclusions So… When should we provide express services?
  • 21. Conclusions Express services become more attractive in presence of: Increasing system demand Increasing Dwell Times Decreasing vehicle capacity sources: emol.cl, latercera.com, cooperativa.cl, biobiochile.cl, radio.uchile.cl, soychile.cl
  • 22. Conclusions Express services become more attractive in presence of: Increasing trip length sources: emol.cl, latercera.com, cooperativa.cl, biobiochile.cl, radio.uchile.cl, soychile.cl Increasing trip concentration Increasing critical arc load
  • 23. Conclusions Express services become more attractive in presence of: Increasing value of travel time Decreasing value of waiting time sources: emol.cl, latercera.com, cooperativa.cl, biobiochile.cl, radio.uchile.cl, soychile.cl
  • 24. Conclusions Next steps: • Including transfers in the design model, in order to measure the impact of transfer costs in the potential benefit of express services. • Studying the effect of modelling passenger assingment as a stochastic process, to give robustness to the results. • Taking into account other types of capacity limitations, such as number of bays, station size, or capacity at intersections.
  • 25. WhenWhenWhenWhen and where are busand where are busand where are busand where are bus express servicesexpress servicesexpress servicesexpress services justified?justified?justified?justified? Homero Larrain, Juan Carlos Muñoz Pontificia Universidad Católica de Chile