Title: A Brief COURSE on
1Francisco G. Benitez
A Brief COURSE on DEMAND MODELLING in RAILWAY
MODE
2Contents
- Demand Modelling on rail Lines, Stations and
Trains - Motivation for modelling of passengers demand
- Determining passengers demand
3Demand Modelling on rail Lines, Stations and
Trains
Motivation
- The main goal in Rail Network Design is
- To satisfy the transport needs of people.
4Demand Modelling on rail Lines, Stations and
Trains
Motivation
- The main goal in Rail Network Design is
- To satisfy the transport needs of people.
- To satisfy the transport needs of people,
efficiently.
5Demand Modelling on rail Lines, Stations and
Trains
Motivation
- The main goal in Rail Network Design is
- To satisfy the transport needs of people.
- To satisfy the transport needs of people,
efficiently. - To satisfy the transport needs of people,
efficiently, - complying with economical constraints.
6Demand Modelling on rail Lines, Stations and
Trains
Motivation
- The main goal in Rail Network Design is
- To satisfy the transport needs of people.
- To satisfy the transport needs of people,
efficiently. - To satisfy the transport needs of people,
efficiently, - complying with economical constraints.
FUNCTIONAL Rail Network
FUNCTIONAL Rail services
7Demand Modelling on rail Lines, Stations and
Trains
Motivation
- In order to reach a Functional design of Rail
(transport) Services the following tasks are
needed - Determining passenger demand (travellers demand)
- actual (by measuring, by estimating)
- prospective (by estimating)
- Planning lines in function of demand and
available budget (optimizing lines layout). - Designing services in function of demand, lines
and available budget (trains, vehicles).
8Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
- Determining actual passengers demand by
measuring - Indirect measures
- Ticketing (aggregated values, passes,
travelcards). - Direct measures
- travellers counting by manual survey
- (reduced sample, expensive, distorting)
- travellers counting by automatic counters
- (some are aggregated)
9Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
10Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
(by measuring)
(by estimating)
11Demand Modelling on rail Lines, Stations and
Trains
Practical Case Metropolitan rail lines
VALENCIA
BARCELONA
MADRID
BILBAO
12Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Methodology
To estimate a variable, statistics is used,
through data corresponding to
- same Station
- same Line
- same day Type (labor day, holiday, saturday,
holiday eve, friday,) - same time Period
13Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
To estimate a variable, statistics is used,
through data corresponding to
- same Station
- same Line
- same day Type (labor day, holiday, saturday,
holiday eve, friday,) - same time Period
Direct estimate
n measures
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
Service time
h
14Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
To estimate a variable, statistics is used,
through data corresponding to
- same Station
- same Line
- same day Type (labor day, holiday, saturday,
holiday eve, friday,) - same time Period adjacent time Period
Direct estimate
n measures
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
Service time
h
15Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
To estimate a variable, statistics is used,
through data corresponding to
- same Station
- same Line
- same day Type (labor day, holiday, saturday,
holiday eve, friday,) - same time Period adjacent time Period
16Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
To estimate a variable, statistics is used,
through data corresponding to
- same Station
- same Line
- same day Type (labor day, holiday, saturday,
holiday eve, friday,) - same time Period adjacent time Period
x
x
Curve fitting
x
x
x
x
x
x
x
x
x
x
x
x
x
x
x
?
?
?
?
?
?
Service time
h
17Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
- same Station, same Line (Madrid, C1, path 0),
same day Type (L)
Polynomial O(5)
Polynomial O(4)
- same Station, same Line (Madrid, C1, path 0),
same day Type (L)
Polynomial O(5)
Polynomial O(4)
18Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Curve fitting with variable time interval
length Variable Getting-off -polynomial O(5)-
passengers
Curve fitting with variable time interval
length Variable Getting-off -polynomial O(10)-
passengers
19Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Other curve fitting
- R. Kelly (2007). The generation of profiles by
formulae. Traffic Engineering Control, Vol.
48, No.8, 368-371, 2007.
20Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Independent Variable Estimates
- Variable estimates
- By Station
- Getting-on
- Getting-off
- Remaining
- By Service
- Occupancy
- Variables are estimated independently,
- with different methodologies and error level.
21Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
22Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
- The approach does not complete the estimates for
all time period. - Some mismatching might arise in the independent
estimating of variables getting-on,
getting-off and remains.
23Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Station variables
24Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Balance equilibrium for stations
Balance for stations
NE equations
25Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Balance equilibrium for train-service
2 equations
26Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Objective function to minimize
- A weighting function is applied to each variable
attending to its reliability (error level) - We look for the minimum deviation w.r.t.
estimates, in particular for most reliable
variables.
27Mathematical scheme of the optimization problem
Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
28Demand Modelling on rail Lines, Stations and
Trains
Determining passengers demand
Trains monitorized Estimate scheme ON OFF Rem. Occ.
20 VOID 0 0 0 0
20 /- 1 time interval 429 429 429 52
20 Chebyshev 0 0 0 0
20 Direct 1181 1181 1181 178
15 VOID 3 4 0 0
15 /- 1 time interval 705 705 705 71
15 Chebyshev 12 11 15 3
15 Direct 883 883 883 156
10 VOID 44 15 0 0
10 /- 1 time interval 1023 1023 1023 0
10 Chebyshev 83 112 127 100
10 Direct 453 453 453 130
5 VOID 160 183 0 0
5 /- 1 time interval 736 736 736 111
5 Chebyshev 646 623 806 53
5 Direct 61 61 61 66
29Demand Modelling on rail Lines, Stations and
Trains
Conclusions
- Optimum prediction with a 20 of train-services
monitorized. - Maximum explotation of the available data.
- An error minimazing scheme (Quadratic
optimization) consistent among independent
variable w.r.t the variable reliability.
30Demand Modelling on rail Lines, Stations and
Trains
Thats over !
Thanks for your attention