Title: Supply Chain Management
1Supply Chain Management
2Outline
- Today
- Finish Chapter 6 (Decision tree analysis)
- Start chapter 7
- Tomorrow
- Homework 2 due before 500pm
- Next week
- Chapter 7 (Forecasting)
3Example Decision Tree Analysis
- New product with uncertain demand (85
profit/unit) - Annual demand expected to go up by 20 with
probability 0.6 - Annual demand expected to go down by 20 with
probability 0.4 - Use discount factor k 0.1
4Example
- Represent the tree, identifying all states as
well as all transition probabilities
Period 2
P 12085(0.6122400.48160)/1.1 19844
P 12240
Period 1
D144
0.6
Period 0
D120
0.6
0.4
P 8160
D100
D96
0.6
0.4
P 10085(0.6198440.413229)/1.1 24135
D80
0.4
P 5440
D64
P 8085(0.681600.45440)/1.1 13229
5Example
- Represent the tree, identifying all states as
well as all transition probabilities
Period 2
Period 1
D144
0.6
Period 0
D120
0.6
0.4
D100
D96
0.6
0.4
D80
0.4
D64
Calculate the NPV of each possible scenario
separately
6Example
- Represent the tree, identifying all states as
well as all transition probabilities
Calculate the NPV of each possible scenario
separately
7Decision Trees (Summary)
- A decision tree is a graphic device used to
evaluate decisions under uncertainty - Identify the duration of each period and the
number of time periods T to be evaluated - Identify the factors associated with the
uncertainty - Identify the representation of uncertainty
- Identify the periodic discount rate k
- Represent the tree, identifying all states and
transition probabilities - Starting at period T, work back to period 0
identify the expected cash flows at each step - (Alternatively, calculate the NPV of each
possible scenario separately)
8Decision Trees
- Using decision trees to evaluate network design
decisions - Should the firm sign a long-term contract for
warehousing space or get space from the spot
market as needed - What should the firms mix of long-term and spot
market be in the portfolio of transportation
capacity - How much capacity should various facilities have?
What fraction of this capacity should be flexible?
9Example Decision Tree Analysis
- Three options for Trips Logistics
- Get all warehousing space from the spot market as
needed - Sign a three-year lease for a fixed amount of
warehouse space and get additional requirements
from the spot market - Sign a flexible lease with a minimum change that
allows variable usage of warehouse space up to a
limit with additional requirement from the spot
market
10Example Decision Tree Analysis
- Trips Logistics input data
- Evaluate each option over a 3 year time horizon
(1 period is 1 year) - Demand D may go up or down each year by 20 with
probability 0.5 - Warehouse spot price p may go up or down by 10
with probability 0.5 - Discount rate k 0.1
11Example
- Represent the tree, identifying all states
0.25
0.25
0.25
0.25
0.25
Period 0
0.25
D100
0.25
p1.20
0.25
12Example Option 1 (Spot)
Period 2
- Starting at period T, work back to period 0
identify the expected cash flows at each step - C(D 144,000, p 1.45, 2) 144,000 x 1.45
208,800 - R(D 144,000, p 1.45, 2) 144,000 x 1.22
175,680 - P(D 144,000, p 1.45, 2) R C
175,680 208,800 33,120
D144
p1.45
D144
p1.19
D96
Cost
p1.45
D144
p0.97
Revenue
D96
p1.19
D96
Profit
p0.97
D64
p1.45
D64
p1.19
D64
p0.97
13Example Option 1 (Spot)
Period 2
- Starting at period T, work back to period 0
identify the expected cash flows at each step
D144
p1.45
D144
p1.19
D96
p1.45
D144
p0.97
D96
p1.19
D96
p0.97
D64
p1.45
D64
p1.19
D64
p0.97
14Example Option 1 (Spot)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - EP(D 120, p 1.22, 1) 0.25xP(D 144, p
1.45, 2) 0.25xP(D 144, p 1.19, 2)
0.25xP(D 96 p 1.45, 2) 0.25xP(D 96, p
1.19, 2) 12,000 - PVEP(D 120, p 1.22, 1) EP(D 120, p
1.22, 1)/(1k) 12,000/1.1
10,909
15Example Option 1 (Spot)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D 120, p 1.32, 1) R(D 120, p 1.22,
1) C(D 120, p 1.32, 1) PVEP(D 120, p
1.22, 1) 146,400 - 158,400
(10,909) 22,909
16Example Option 1 (Spot)
- Starting at period T, work back to period 0
identify the expected cash flows at each step
17Example Option 1 (Spot)
- Starting at period T, work back to period 0
identify the expected cash flows at each step
NPV(Spot) 5,471
18Example Decision Tree Analysis
- Three options for Target.com
- Get all warehousing space from the spot market as
needed - Sign a three-year lease for a fixed amount of
warehouse space and get additional requirements
from the spot market - Get 100,000 sq ft. of warehouse space at 1 per
square foot - Additional space purchased from spot market
- Sign a flexible lease with a minimum change that
allows variable usage of warehouse space up to a
limit with additional requirement from the spot
market
19Example Option 2 (Fixed lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step
Period 2
D144
p1.45
0.25
Period 1
D144
0.25
p1.19
D120
0.25
D96
p1.32
0.25
p1.45
0.25
D144
Period 0
D120
0.25
p0.97
p1. 08
D96
D100
0.25
p1.19
p1.20
D96
D80
p0.97
p1.32
D64
0.25
p1.45
D80
D64
p1.32
p1.19
D64
p0.97
20Example Option 2 (Fixed lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D , p , 2) R(D , p , 2) C(D , p , 2)
- P(D , p , 2) Dx1.22 (100,000x1.00 Sxp)
8
21Example Option 2 (Fixed lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D , p , 1) R(D , p , 1) C(D , p , 1)
PVEP(D , p , 1) - P(D , p , 1) Dx1.22 (100,000x1.00 Sxp)
EP(D , p , 1)/(1k)
22Example Option 2 (Fixed lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D , p , 0) R(D , p , 0) C(D , p , 0)
PVEP(D , p , 0) - P(D , p , 0) 100,000x1.22 100,000x1.00
16,364/1.1
NPV(Fixed lease) 38,364
23Example Decision Tree Analysis
- Three options for Target.com
- Get all warehousing space from the spot market as
needed - Sign a three-year lease for a fixed amount of
warehouse space and get additional requirements
from the spot market - Sign a flexible lease with a minimum change that
allows variable usage of warehouse space up to a
limit with additional requirement from the spot
market - 10,000 upfront payment
- Use anywhere between 60,000 and 100,000 sq ft. at
1 per sq ft. - Additional space purchased from spot market
24Example Option 3 (Flexible lease)
- Flexible lease rules
- Up-front payment of 10,000
- Flexibility of using between 60,000 and 100,000
sq.ft. at 1.00 per sq.ft. per year - Additional space requirements from spot market
25Example Option 3 (Flexible lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step
Period 2
D144
p1.45
0.25
Period 1
D144
0.25
p1.19
D120
0.25
D96
p1.32
0.25
p1.45
0.25
D144
Period 0
D120
0.25
p0.97
p1. 08
D96
D100
0.25
p1.19
p1.20
D96
D80
p0.97
p1.32
D64
0.25
p1.45
D80
D64
p1.32
p1.19
D64
p0.97
26Example Option 3 (Flexible lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D , p , 2) R(D , p , 2) C(D , p , 2)
- P(D , p , 2) Dx1.22 (Wx1.00 Sxp)
27Example Option 3 (Flexible lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D , p , 1) R(D , p , 1) C(D , p , 1)
PVEP(D , p , 1) - P(D , p , 1) Dx1.22 (Wx1.00 Sxp) EP(D
, p , 1)/(1k)
20,000
20,000
28Example Option 3 (Flexible lease)
- Starting at period T, work back to period 0
identify the expected cash flows at each step - P(D , p , 0) R(D , p , 0) C(D , p , 0)
PVEP(D , p , 0) - P(D , p , 0) 100,000x1.22 100,000x1.00
38,198/1.1
NPV(Flexible lease) 56,725 10,000 46,725
29From Design to Planning
- Network design
- C4 ? Designing Distribution Networks
- C5 ? Network Design in the Supply Chain
- C6 ? Network Design in an Uncertain Environment
- Planning in a supply chain
- C7 ? Demand Forecasting in a Supply Chain
- C8 ? Aggregate Planning in a Supply Chain
- C9 ? Planning Supply and Demand
30Demand Forecasting
- How does BMW know how many Mini Coopers it will
sell in North America? - How many Prius cars should Toyota build to meet
demand in the U.S. this year? Worldwide? - When is it time to tweak production, upward or
downward, to reflect a change in the market?
What factors influence customer demand?
31Factors that Affect Forecasts
- Past demand
- Time of year/month/week
- Planned advertising or marketing efforts
- Planned price discounts
- State of the economy
- Market conditions
- Actions competitors have taken
32Example Demand Forecast for Milk
- A supermarket has experienced the following
weekly demand (in gallons) over the last ten
weeks - 109, 116, 108, 103, 97, 118, 120, 127, 114, and
122
What is a reasonable demand forecast for milk for
the upcoming week?
When could using average demand as a forecast
lead to an inaccurate forecast?
If demand turned out to be 125 what can you say
about the demand forecast?
331) Characteristics of Forecasts
- Forecasts are always wrong!
- Forecasts should include an expected value and a
measure of error (or demand uncertainty) - Forecast 1 sales are expected to range between
100 and 1,900 units - Forecast 2 sales are expected to range between
900 and 1,100 units
342) Characteristics of Forecasts
- Long-term forecasts are less accurate than
short-term forecasts - Less easy to consider other variables
- Hard to include the effects of weather in a
forecast - Forecast horizon is important, long-term forecast
have larger standard deviation of error relative
to the mean
353) Characteristics of Forecasts
- Aggregate forecasts are more accurate than
disaggregate forecasts
363) Characteristics of Forecasts
- Aggregate forecasts are more accurate than
disaggregate forecasts - They tend to have a smaller standard deviation of
error relative to the mean
Monthly sales SKU
Monthly sales product line
374) Characteristics of Forecasts
- Information gets distorted when moving away from
the customer - Bullwhip effect
38Characteristics of Forecasts
- Forecasts are always wrong!
- Long-term forecasts are less accurate than
short-term forecasts - Aggregate forecasts are more accurate than
disaggregate forecasts - Information gets distorted when moving away from
the customer
39Role of Forecasting
Manufacturer
Distributor
Retailer
Customer
Supplier
Push
Push
Push
Pull
Push
Push
Pull
Push
Pull
Is demand forecasting more important for a push
or pull system?
40Types of Forecasts
- Qualitative
- Primarily subjective, rely on judgment and
opinion - Time series
- Use historical demand only
- Causal
- Use the relationship between demand and some
other factor to develop forecast - Simulation
- Imitate consumer choices that give rise to demand
41Components of an Observation
- Quarterly demand at Tahoe Salt
Actual demand (D)
42Components of an Observation
- Quarterly demand at Tahoe Salt
Level (L) and Trend (T)
43Components of an Observation
- Quarterly demand at Tahoe Salt
Seasonality (S)
44Components of an Observation
Observed demand Systematic component Random
component
L Level (current deseasonalized demand)
T Trend (growth or decline in demand)
S Seasonality (predictable seasonal fluctuation)
45Time Series Forecasting
Forecast demand for the next four quarters.