1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

28
1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001

Transcript of 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

Page 1: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

11

1-to-1 Distribution

John H. Vande Vate

Spring, 2001

Page 2: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

22

When Demand Varies Predictably

• D(t) = cumulative demand to time t

• D’(t) = rate of demand at time t.

• Two cases:– Only Rent Costs matter– Only Inventory Costs matter

Page 3: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

33

To Minimize the Maximum...

• Make them all the same size

• If we have n shipments in time t, make them all size D(t)/n

• Question reduces to n– Trade off shipment cost (smaller n) vs– Inventory cost (larger n)

Page 4: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

44

That’s just an EOQ problem

• Total cost with n shipments is– Transportation cost (ignore variable portion)

• fixed*n

– Inventory Cost• Rent Cost is $/unit/year• Rent * (D(T)/n)*T

– Average Cost per unit• Rent*T/n + fixed*n/D(T)

– So n is Rent*T*D(T)/fixed

Page 5: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

55

More realistic - Ignore Rent

• Wagner-Whitin Dynamic programming approach.

• Computationally intensive

• How accurate is the forecast of demand?

• How sensitive is the cost to the answer?

Page 6: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

66

Wagner-Whitin

• Discuss Later

Page 7: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

77

The Continuous Approximation Approach

t0t1 t2 t3

Fixed shipment cost + ci*area

t’

Area (t3-t2)height/2

There is some t’ where Area = (t3-t2)2D’(t’)/2

height (t3-t2)D’(t’)

Page 8: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

88

Step Function

• H(t) = (ti - ti-1) if ti-1 t < ti

• So total

cost = (Fixed + c*areai)

= (Fixed + c*(ti - ti-1)2D’(ti’)/2)

= (Fixed + c*H(ti’)2D’(ti’)/2)

= (Fixed /H(t) + c*H(t)D’(t’)/2)dt

An abuse of notation

Page 9: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

99

Equivalence= (Fixed + c*H(ti’)2D’(ti’)/2)

= (Fixed /H(t) + c*H(t)D’(t’)/2)dt

Why?

Fixed /H(t)dt = ti ti-1

Fixed /H(t)dt

• = ti ti-1

Fixed /(ti - ti-1)dt

• = Fixed

c*H(t)D’(t’)/2dt = ti ti-1

c*H(t)D’(ti’)/2dt

• = ti ti-1

c*(ti - ti-1) D’(ti’)/2dt

• = c*(ti - ti-1)2 D’(ti’)/2

• = c*H(t’i)2 D’(ti’)/2

Page 10: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1010

Approximation

Total cost

= (Fixed + c*H(ti’)2D’(ti’)/2)

= (Fixed /H(t) + c*H(t)D’(t’)/2)dt

(Fixed /H(t) + c*H(t)D’(t)/2)dt

• Find a smooth function H(t) that minimizes the cost (an EOQ formula)

• H(t) = (2Fixed/cD’(t))

Page 11: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1111

H(t) and Headways

0

1

2

3

4

5

6

7

1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20

H(t)

h

Page 12: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1212

What is H(t)?

• If Demand is constant with rate D’

• We dispatch every t time units

• Cost per time = Fixed/t + ctD’/2

• Best headway is• t = (2Fixed/cD’)

• Compare with H(t)

• H(t) = (2Fixed/cD’(t))

Page 13: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1313

Back to the Discrete World

• We have a continuous approximation H(t) to the discrete (step function) headways.

• How do we recover implementable headways from H(t)?

Page 14: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1414

Consistent Headways

• Finding Headways consistent with H(t)

• Headway = Avg of H(t) in [0, Headway]• Avg = Integral of H(t) over the Headway/Headway• Headway2 = Integral of H(t) over the Headway

• Find Headways so that the squares approximate the area under H(t)

Page 15: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1515

Example

0

0.2

0.4

0.6

0.8

1

1.2

1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20

0

10

20

30

40

50

60

D'(t)

D(t)

Page 16: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1616

H(t) and Headways

0

1

2

3

4

5

6

7

1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20

H(t)

h

Page 17: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1717

Example Cont’dt D'(t) D(t) H(t) Integral of H(t) t*t h Integral of H(t) t*t h

1 0.12 0.60 4.09 4.09 1 52 0.12 1.20 4.09 8.18 4 53 0.12 1.79 4.09 12.27 9 54 0.05 2.07 6.04 18.31 16 55 0.05 2.34 6.04 24.35 25 56 0.05 2.62 6.04 30.40 36 6.04 1 37 0.38 4.53 2.29 32.68 49 8.33 4 38 0.38 6.44 2.29 34.97 64 10.62 9 39 0.38 8.35 2.29 37.26 81 12.91 16

10 0.95 13.08 1.45 38.71 100 14.36 2511 0.95 17.81 1.45 40.17 121 15.81 3612 0.95 22.55 1.45 41.62 144 17.27 4913 0.98 27.42 1.43 43.05 169 18.70 6414 0.98 32.30 1.43 44.48 196 20.13 8115 0.98 37.18 1.43 45.92 225 21.56 10016 0.75 40.94 1.63 47.55 256 23.19 12117 0.75 44.71 1.63 49.18 289 24.82 14418 0.75 48.47 1.63 50.80 324 26.45 16919 0.73 52.11 1.66 52.46 361 28.11 19620 0.73 55.75 1.66 54.12 400 29.77 225

Page 18: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1818

How’d we do?

• Inventory Cost 25.34

• Shipment Cost 10

• Total Cost 35.34

• Is that any good?

Page 19: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

1919

Optimum Answerset Periods;

param Demand{Periods};

table DemandTable IN "ODBC""DSN=Wagner""Demand":Periods<-[Period], Demand;

read table DemandTable;

param FixedTransp := 1;param VarTransp := 1;param Holding := 1; /* $/unit/period */

var Inv{Periods} >= 0; /* Shipment quantity */var Ship{Periods} binary; /* Whether or not we ship */var Q{Periods} >= 0; /* Shipment size */

Page 20: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2020

One Model

minimize TotalCost:

sum{t in Periods} FixedTransp*Ship[t] +

sum{t in Periods} VarTransp*Q[t] +

sum{t in Periods} Holding*Inv[t];

s.t. InitialInventory:

Q[1] - Inv[1] = Demand[1];

s.t. DefineInventory{t in Periods: t > 1}:

Inv[t-1] + Q[t] - Inv[t] = Demand[t];

s.t. SetupOrNot{t in Periods}:

Q[t] <= Ship[t]*sum{k in Periods: k >= t} Demand[k];

Page 21: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2121

Comparison

• Optimum Solution 25.5

• Answer from CA Method 35.3

Page 22: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2222

Why so Bad?

• D’(t) changes pretty wildly

t D'(t)1.00 0.12 2.00 0.12 3.00 0.12 4.00 0.05 5.00 0.05 6.00 0.05 7.00 0.38 8.00 0.38 9.00 0.38

10.00 0.95 11.00 0.95 12.00 0.95 13.00 0.98 14.00 0.98 15.00 0.98 16.00 0.75 17.00 0.75 18.00 0.75 19.00 0.73 20.00 0.73

0

0.2

0.4

0.6

0.8

1

1.2

1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20

0

10

20

30

40

50

60

D'(t)

D(t)

Page 23: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2323

More on the Optimization Modelset Periods;

param Demand{Periods};

table DemandTable IN "ODBC"

"DSN=Wagner"

"Demand":

Periods<-[Period], Demand;

read table DemandTable;

param FixedTransp := 1;

param VarTransp := 1;

param Holding := 1; /* $/unit/period */

var Ship{Periods} binary;

/* Amount we ship in period s that meets demand in period t */

var Q{s in Periods, t in Periods: t >= s} >= 0;

Page 24: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2424

A Better Model

minimize TotalCost:

sum{t in Periods} FixedTransp*Ship[t] +

sum{s in Periods, t in Periods: t >= s} VarTransp*Q[s,t] +

sum{s in Periods, t in Periods: t >= s} (t-s)*Q[s,t];

s.t. MeetDemand{t in Periods}:

sum{s in Periods: s <= t} Q[s,t] = Demand[t];

s.t. ShipOrNot{s in Periods, t in Periods: t >=s}:

Q[s,t] <= Ship[s]*Demand[t];

Page 25: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2525

Why’s it Better• Solves faster

• LP relaxation closer to MIP solutions

• Didn’t aggregate constraints

Q[s,t] <= Ship[s]*Demand[t]

• Implies

sum{t in Periods: t >= s} Q[s,t]

<= Ship[s]*sum{t in Periods: t>= s} Demand[t];

Q[s] <= Ship[s]*sum{t in Periods: t >= s} Demand[t];

Page 26: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2626

Back To Wagner - Whitin

• A Computationally intensive Dynamic Programming Procedure for solving

• Why?

• Advantage/Disadvantage of CA over MIP

Page 27: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2727

Aside on Importing Data

• ODBC = Open Data Base Connectivity

• ODBC Administrator : Control Panel

• DSN = Data Source Name

• Driver = Method for reading the DSN, e.g., Excel 97

• Security and other features

Page 28: 1 1 1-to-1 Distribution John H. Vande Vate Spring, 2001.

2828

With AMPL

• Table <<tablename>> IN “ODBC”

• “DSN=<<dsnname>>”

• “tablename”:

• definedset <- [index], parametername~columnname, …;

• IN, OUT, INOUT

• SQL= sql statement