Information Distortion in a Supply Chain:

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Information Distortion in a Supply Chain:

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Hau L. Lee V. Padmanabhan Seungjin Whang. Presented by Isil Tugrul. Content. claims that the demand information in the form of orders tends to be distorted ... – PowerPoint PPT presentation

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Title: Information Distortion in a Supply Chain:


1
Information Distortion in a Supply Chain The
Bullwhip Effect
Hau L. Lee ? V. Padmanabhan ?
Seungjin Whang
Presented by Isil Tugrul
2
Content
  • claims that the demand information in the form of
    orders tends to be distorted misguiding
  • identifies and analyzes four causes of the
    bullwhip effect
  • develops simple mathematical models to
    demonstrate that the amplified order variation is
    an outcome of rational and optimizing behavior of
    supply chain members
  • discusses the methods to reduce the impact
    of the bullwhip effect

3
What is Bullwhip Effect?
  • The increase in demand variability as we move up
    in the supply chain is referred to as the
    bullwhip effect.
  • Orders placed by a retailer tend to be much more
    variable than the customer demand seen by the
    retailer.

4
Distortion in Demand Information
5
Previous Work
  • Sterman attributed the amplified order
    variability to players irrational behavior or
    misconceptions about inventory and demand
    information. His findings suggest that progress
    can be made in reducing the effect through
    modifications in individual education.
  • In contrast, Lee et al. claim that the
    bullwhip effect is a consequence of the players'
    rational behavior within the supply chain's
    infrastructure.

6
Causes of the Bullwhip Effect
  • 1. Demand signal processing
  • 2. Rationing game
  • 3. Order batching
  • 4. Price variations

7
An Idealized Situation
Consider a multi-period inventory system operated
under a periodic review policy where
(i) demand is stationary (ii) resupply is
infinite with a fixed lead time (iii) there is no
fixed order cost, and (iv) price of the product
is stationary over time.
8
Demand Signal Processing
  • Demand is non-stationary
  • Order-up-to point is also non-stationary
  • Project the demand pattern based on observed
    demand.
  • Distributors rely on retailers orders to
    forecast demand
  • Manufacturers rely on distributors orders
  • Multiple forecasting
  • As they make their forecasts based on a
    forecasted data the variation increases. The
    supplier loses track of the true demand pattern
    at the retail level.
  • Long lead times lead to greater fluctuations in
    the order quantities

9
Demand Signal Processing
  • Consider a single-item multi-period inventory
    model
  • The order sent to the supplier reflects the
    amount needed to replenish the stocks to meet the
    requirements of future demands, plus the
    necessary safety stocks.
  • The retailer faces serially correlated demands
    which follow the process

Dt the demand in period t, d a nonnegative
constant ? the correlation parameter, -1 lt ?
lt 1 ut error term i.i.d with mean 0 and var. ?2
10
Demand Signal Processing
The cost minimization problem in an arbitrary
period is formulated as follows
Parameters zt order quantity at the
beginning of period t h holding cost ? unit
shortage penalty c ordering cost ? cost
discount factor per period v replenishment
lead time (order lead time transit time)
where
11
Demand Signal Processing
The optimal order amount is given by
For v 0, the variance of orders reduces to Var(
z1) Var(D0) 2?, which shows that the demand
variability amplification exists, even when the
lead time is zero.
12
Demand Signal Processing
THEOREM 1. In the above setting, we
have (a) If 0 lt ? lt 1, the variance of retail
orders is strictly larger than that of
retail sales that is, Var(z1) gt Var(D0)
(b) If 0 lt ? lt 1, the larger the replenishment
lead time, the larger the variance of
orders i.e. Var(z1) is strictly
increasing in v.
13
Rationing Game
  • If Demand gt Production Capacity, manufacturers
    often ration supply of the product to satisfy the
    ratailers orders.
  • For example, if the total supply is only 50
    percent of the total demand, all customers
    receive 50 percent of what they order.
  • If retailers suspect that a product will be
    short in supply, each retailer will issue an
    exaggerated order more than their actual needs,
    in order to secure more units of the product.
  • If retailers are allowed to cancel orders when
    their actual demand is satisfied, then the demand
    information will be distorted further .

14
Rationing Game
  • A simple one-period model (an extended
    newsvendor model) with multiple retailers is
    developed
  • Each of the retailers takes others decisions
    as given and chooses the order quantity that will
    minimize the expected cost.
  • The resulting order quantities (z1,
    z2,.,zN) chosen by retailers define a Nash
    equilibrium. That is, no retailer can benefit by
    changing his ordering strategy while other
    players keep their strategies unchanged.
  • Since all retailers are identical, we have a
    symmetric Nash equilibrium where zi z ?i, i
    ? 1,N.

15
Rationing Game
The first order condition is given by
The second order condition is given by
16
Rationing Game
-p (p h)?(zi0) gt 0. Only then
zi0 satisfies dCi/ dzi 0 and it is the optimal
order quantity zi.
The traditional newsvendor solution z satisfies
-p (p h)?(z) 0.
THEOREM 2. Optimal order quantity for the
retailer in the rationing game (z) gt the order
quantity in the traditional newsvendor problem
(z). Further if F(.) and?(.) are strictly
increasing, the inequality strictly holds.
17
Order Batching
  • Retailers tend to accumulate demands before
    issuing an order.
  • transportation costs
  • order processing costs
  • Distributor will observe a large order followed
    by several periods of no-order, followed by
    another large order.
  • Periodic ordering amplifies variability and
    contributes to the bullwhip effect.

18
Order Batching
  • N retailers using a periodic review inventory
    system with review cycle equal to R periods.
  • Consider 3 cases for retailers order cycles
  • (a) Random Ordering
  • (b) Positively Correlated Ordering
  • (c) Balanced Ordering

19
Order Batching
  • (a) Random Ordering
  • Demands from retailers are independent.
  • If R1, then the variance of orders placed by
    retailers would be the same as the retailers
    demand.
  • (b) Positively Correlated Ordering
  • All the retailers order in the same period

20
Order Batching
  • (c) Balanced Ordering
  • Orders from different retailers are evenly
    distributed in time.
  • All N retailers are divided into R groups k
    groups of size (M1) and (R-k) groups of size M.
    Each group orders in a different period.
  • When NmR, then perfectly balanced retailer
    ordering can be achieved and bullwhip effect
    disappears

21
Order Batching
THEOREM 3. (a) (b)
22
Price Variations
  • When a manufacturer offers an attractive
    price, retailers engage in "forward buy"
    arrangements in which items are bought in advance
    of requirements
  • Retailers buy in larger quantities that
    exceeds their actual needs. When the product's
    price returns to normal, they stop buying until
    the inventory is depleted.
  • The customer's buying pattern does not reflect
    its consumption pattern.

23
Price Variations
  • A retailer faces i.i.d demand with density
    function ?(.)
  • Manufacturer may offer two price alternatives
  • cL with probability q
  • cH with probability 1 - q

The retailers inventory problem is formulated as
Vi (iH,L) denotes the minimal expected
discounted cost incurred throughout an infinite
horizon when current price is ci.
L(.) is the sum of one-period inventory and
shortage costs at a given level of inventory
24
Price Variations
THEOREM 4. The following inventory policy is
optimal to the problem At price cL, get as close
as possible to the stock level SL, and at price
cH bring the stock level SH, where SH lt SL.
25
Price Variations
THEOREM 5. In the above setting, Varzt gt Var?
26
Strategies to Reduce the Impact of the Bullwhip
Effect
27
Demand Signal Processing
  • Information sharing among members of the chain
  • use electronic data interchange (EDI) to share
    data
  • update their forecasts with the same demand data
  • Avoiding multiple demand forecast updates
  • single member of the chain performs the
    forecasting and ordering
  • centralized multi echelon inventory control
    system
  • Vendor Managed Inventory
  • manufacturer has access to the information at
    retailing sites
  • updates forecasts and resupplies the retail
    sites.
  • continuous replenishment program (CRP).
  • Reduction in lead times
  • just-in-time replenishment

28
Rationing Game
  • Allocate scarce products in proportion to past
    sales records rather than based on order.
  • no incentive to exaggerate their orders.
  • Share capacity and inventory information to
    reduce customers' anxiety and lessen their need
    to engage in gaming.
  • Enforce more strict cancellation and return
    policies.
  • without a penalty, retailers will continue to
    exaggerate their needs and cancel orders.

29
Order Batching
  • Lower the transaction costs
  • reduce the cost of the paperwork in generating
    an order through EDI-based order transmission
    systems
  • Order assortments of different products
    instead of ordering a full load of the same
    product.
  • Consolidate loads from multiple suppliers
    located near each other by using third-party
    logistics companies

30
Price Variations
  • Reduce the frequency and the level of
    wholesale price discounting.
  • Move to an everyday low price (EDLP)
  • offer a product with a single consistent price
  • Keep high and low pricing practice but
    synchronize purchase and delivery schedules
  • deliver goods in multiple future time points
  • both parties save inventory carrying costs

31
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