Method for optimizing energy in the manner in which a vehicle or train is driven using kinetic energy

Information

  • Patent Grant
  • 6668217
  • Patent Number
    6,668,217
  • Date Filed
    Friday, August 9, 2002
    22 years ago
  • Date Issued
    Tuesday, December 23, 2003
    20 years ago
Abstract
A method for power optimization in a vehicle/train is proposed, using time reserves which are included when planning a schedule, an overall route to be traveled between a starting stop and a destination stop being subdivided into a number of steps. In order to achieve a power-saving travel mode, with the aid of an optimization algorithm, the kinetic energy of the vehicle and the time are used as state variables in a vehicle model. The changes in the state variables are considered with respect to the distance in each step.
Description




BACKGROUND OF THE INVENTION




1. Field of the Invention




The invention relates to a method for power optimization of the travel mode in a vehicle/train according to the preamble of claim


1


.




2. Description of the Related Art




When schedules for rail traffic are drawn up, time reserves for unforeseen events and adverse operating conditions are included in the plans. Since during real journeys the operating conditions are typically. more favorable than assumed in the plan, the time reserves which arise become available for other purposes. A particularly practical use of the time reserves is the saving of power by means of a suitable travel mode of the vehicle/train.




In this connection, DE 30 26 652 A1, DD 255 132 A1 and EP 0 467 377 B1 disclose methods relating to how a vehicle is moved in a power-optimal manner between two stops. In the case of long routes, a subdivision into a number of sections is proposed, an optimum partial solution being determined in each section, and the overall solution resulting from the combination of the partial solutions.




DE 30 26 652 A1 and EP 0 467 377 B1 concern a system structure in which methods for power minimization can be realized, account being taken of an overall route between two stops (stop stations).




The previously known methods are based on a vehicle model which contains the speed of the vehicle as a significant variable. Models for describing the speed change over the distance are, however, disadvantageously very nonlinear. The use of an iterative numerical algorithm to solve the implicit nonlinear equations is critical, in particular in real-time application. No explicit analytical solution is known.




BRIEF SUMMARY OF THE INVENTION




The invention is based on the object of specifying an improved method for power optimization of the travel mode in a vehicle/train having an overall route subdivided into a number of sections.




This object is achieved, in conjunction with the preamble, by the features specified in claim


1


.




The advantages which can be achieved by the invention consist in particular in the fact that by using the equation of motion for the kinetic energy of the vehicle in the vehicle model, the optimization calculation is simplified. The use of an explicit analytical solution of the equation of motion for the kinetic energy of the vehicle permits prior determination of the necessary computing effect, which is important in particular for the use under real-time conditions.




Advantageous refinements of the invention are identified in the subclaims.




Further advantages of the proposed method emerge from the following description.











DESCRIPTION OF ILLUSTRATIVE EMBODIMENTS




The invention will be explained in more detail below.




The nub of the invention is to be seen in the fact that in order to calculate the optimum travel mode in the vehicle model or differential equation model, instead of the speed of the vehicle, the equation of motion for the kinetic energy of the vehicle is considered, that is to say the kinetic energy E


kin


of the vehicle and time t are used as state variables. By this means, the analytical solution of the equation of motion is possible, whereby the optimization method is simplified considerably.




The changes in the state variables with respect to the distance s are considered. The differential equation model has the form:











e
kin




s


=

A
-

B



e
kin



-

C
·

e
kin




,



e
kin



(
0
)


=

e
0


,








t



s


=

D



1

e
kin





,


t


(
0
)


=

t
0


,


with





D

=



2

2

.












The term A includes the tractive force (acceleration and braking) applied by the drive system, the route resistance and constant components of the travel resistance. The terms B and C describe speed-dependent parts of the travel resistance, in particular C describes the air resistance and B the running-gear coefficient for interfering movements. The variable e


kin


describes the specific kinetic energy of the vehicle/train normalized to the vehicle mass m (train mass):








e
kin

=



1

m
·
ρ




E
kin


=


1
2



v
2




,










where ρ is an additional factor for rotating masses and v is the speed of the vehicle.




For the optimization, the route considered is broken down into a plurality of steps, so that in each step the maximum speed and terms A and C can be assumed to be constant. The term B is also included in an approximate manner in the terms C and A, so that B=0. For each step, the following analytical solution of the differential equations indicated is then used to calculate the change in the kinetic energy and the time used Δt:









e
kin



(
s
)


=


A
C

+


(



e
kin



(
0
)


-

A
C


)

·

exp


(


-
C

·
s

)





,






t


(
s
)


=


t


(
0
)


+

Δ






t


(
s
)





,










where for A>0 and C|A·e


kin


(0)=1 (constant speed), it is true that:








Δ






t


(
s
)



=


D
·
s




e
kin



(
0
)





,










for A>0 and C|A·e


kin


(0)≠1, it is true that:








Δ






t


(
s
)



=



2

D



A
·
C




ar






tanh


(


x
-
y


1
-

x
·
y



)




,





x
=





1
+


(



C
A




e
kin



(
0
)



-
1

)



exp


(


-
C

·
s

)




,







y

=



C
A




e
kin



(
0
)






,










for









-
C

·


e
kin



(
0
)




[


exp


(

C
·
s

)


-
1

]


<
A
<
0










it is true that:








Δ






t


(
s
)



=



2

D




-
A

·
C





arctan


(


x
-
y


1
+

x
·
y



)




,





x
=





-

(

1
+


(



C
A




e
kin



(
0
)



-
1

)



exp


(


-
C

·
s

)




)


,







y

=



-

C
A





e
kin



(
0
)






,










for A=0, it is true that:







Δ






t


(
s
)



=



2

D


C




e
kin



(
0
)







[


exp


(


C
2


s

)


-
1

]












The optimization problem is accordingly formulated as a multi-step problem and solved with a suitable optimization algorithm. Suitable optimization algorithms are, for example, “dynamic programming” by Bellman, or a transfer into and solution as a nonlinear optimization problem. The algorithms are known, for example, from Papageorgiou: Optimization, Chapter 10, 19 and in particular 20, Oldenbourg Verlag, 1996.




List of Designations




A Tractive force (acceleration and braking) applied by the drive system, route resistance and constant components of the travel resistance




B Speed-dependent part of the travel resistance (running-gear coefficient for interfering movements)




C Speed-dependent part of the travel resistance (air resistance)




D 2/2




E


kin


kinetic energy of the vehicle/train




e


kin


specific kinetic energy of the vehicle/train normalized to the vehicle mass




e


0


initial value of e


kin






m Vehicle mass




s Distance




t Time




t


0


Initial value of the time t




Δt Time used




v Speed of the vehicle/train




ρ Additional factor for rotating masses



Claims
  • 1. A method for power optimization in a vehicle traveling over a route, the vehicle having a drive system and a travel resistance, the route having a route resistance, the method comprising:planning a schedule for the vehicle to travel over the route, the schedule including a time reserve; and determining a power-saving travel mode for the vehicle using an optimization algorithm which takes account of the time reserve and a vehicle model, wherein kinetic energy of the vehicle and time are used as state variables in the vehicle model, and changes in the state variables with respect to distance travelled over the route are determined based on the following differential equations: ⅆekinⅆs=A-B⁢ekin-C·ekin,and⁢ ⁢ⅆtⅆs=D⁢1ekin,with D=22,where ekin=1m·ρ⁢Ekin=12⁢v2,and where:Ekin is kinetic energy of the vehicle, ekin is specific kinetic energy of the vehicle normalised to the vehicle mass, A is tractive force (acceleration and braking) applied by a drive system of the vehicle, route resistance and constant components of the travel resistance, B is a speed-dependent part of the travel resistance (running-gear coefficient for interfering movements), C is a speed-dependent part of the travel resistance (air resistance), m is mass of the vehicle, s is distance traveled over the route, t is time elapsed, v is speed of the vehicle, and ρ is an additional factor for rotating masses.
  • 2. The method as claimed in claim 1, wherein the route is divided into a plurality of steps, for each step a maximum speed being assumed and the terms A and C of the vehicle model are assumed to be constant, and wherein the step of determining a power-saving travel mode for the vehicle further comprises using the following analytical solution: ekin⁡(s)=AC+(ekin⁡(0)-AC)·exp⁡(-C·s), t(s)=t(0)+Δt(s),where for A>0 and C/A·ekin(0)=1 it is true that: Δ⁢ ⁢t⁡(s)=Dse⁡(0),for A>0 and C/A·ekin(0)≠1 it is true that: Δ⁢ ⁢t⁡(s)=2⁢DA⁢ ⁢C⁢ ⁢or⁢ ⁢tanh⁢ ⁢(x-y1-xy),⁢x=1+(CA⁢ekin⁡(0)-1)⁢exp⁡(-Cs),⁢ ⁢y=CA⁢ekin⁡(0),for -C·ekin⁡(0)[exp⁡(C·s)-1]<A<0it is true that: Δ⁢ ⁢t⁡(s)=2⁢D-A⁢ ⁢C⁢ ⁢or⁢ ⁢tanh⁢ ⁢(y-x1-xy),⁢x=-(1+(CA⁢ekin⁡(0)-1)⁢exp⁡(-Cs)),⁢ ⁢y=-CA⁢ekin⁡(0),and for A=0 it is true that: Δ⁢ ⁢t⁡(s)=2⁢DC⁢e⁡(o)⁡[exp⁡(C2⁢s)-1],where Δt is time elapsed.
Priority Claims (1)
Number Date Country Kind
199 35 349 Jul 1999 DE
PCT Information
Filing Document Filing Date Country Kind
PCT/EP00/07147 WO 00
Publishing Document Publishing Date Country Kind
WO01/08955 2/8/2001 WO A
US Referenced Citations (6)
Number Name Date Kind
4959786 Glowczewski et al. Sep 1990 A
4965728 Leising et al. Oct 1990 A
4998200 Glowczewski et al. Mar 1991 A
5002020 Kos Mar 1991 A
5239472 Long et al. Aug 1993 A
5630449 Ammann et al. May 1997 A
Foreign Referenced Citations (8)
Number Date Country
255 132 Mar 1986 CH
129 761 Feb 1978 DE
30 26 652 Nov 1982 DE
208 324 May 1984 DE
236 705 Jun 1986 DE
262 836 Dec 1988 DE
266 539 Apr 1989 DE
467 377 Jan 1992 EP